Abstract
Designing an aquaponic system is based on guidelines found in literature. However, it is uncertain whether these guidelines are optimal in the case of a multi-loop decoupled aquaponic system (DAPS) with an anaerobic digester. The objective of this study was to build and analyze a model of a multi-loop DAPS with digester, and use it to review system performance in terms of sustainability criteria. In particular, the computer-aided case study of a multi-loop DAPS in Nairobi (Kenya) was performed to evaluate the design, in terms of water and nutrient use efficiencies and energy consumption. Furthermore, the model was used to perform a sensitivity analysis, and to perform further optimization of the design. The findings of a model-based design clearly indicate that aquaponic system design guidelines, as found in literature, do not necessarily lead to an optimal system design of a multi-loop DAPS with digester. The main reason for this deviation is the presence of a digester in the multi-loop DAPS. Moreover, the results showed that nutrient concentration ranges have a large impact on the performance of any aquaponic system, in terms of sustainability, since these ranges determine when dilution or supplementing of the nutrient solution is needed. Optimization of the system design resulted in a nutrient use efficiency (NUE) of nitrogen of 77.74%, a NUE of phosphorus of 95.09%, a water use efficiency of 99.74%, and a feeding rate ratio of 5.19 g m−2 day−1.
Similar content being viewed by others
Explore related subjects
Discover the latest articles, news and stories from top researchers in related subjects.Avoid common mistakes on your manuscript.
Introduction
Increasing worldwide population is a leading cause of challenges, such as maintaining food security, increasing pollution, and decreasing resources (Qadir et al. 2007; Cordell et al. 2009; UN 2012). Water, nutrients, and energy are becoming more and more scarce, leading to insufficient food production. Hence, there is a need for sustainable food production methods. Aquaponics can play a vital role in addressing the issue of sustainable food production.
Aquaponics is a combination of recirculating aquaculture system (RAS) and a hydroponic system (HPS) (Timmons and Ebeling 2010), in which plants are grown without soil. An unwanted trait of a RAS is the accumulation of waste, consisting of organic matter and nutrients, to levels that are toxic to fish (Rakocy et al. 2006). The accumulation of organic materials and nutrients has to be counteracted by mechanical filters and biofilters. Mechanical filters are used to partly capture the solid waste in the fish water, such as feces or uneaten feed. Biofilters are used to partly remove soluble nitrogenous compound waste from the fish water, such as ammonia and nitrite which can be toxic to fish (Timmons and Ebeling 2010). In hydroponics, nutrients are dissolved in water, as opposed to conventional plant production where nutrients are added to the soil. Substrates, such as rock wool, if necessary combined with a wire, provide the stability that is normally provided by soil.
By combining aquaculture with hydroponics, the waste of the RAS can be used as a nutrient source for the hydroponic system (HPS), thus reducing the need for adding nutrients from an external source. In a RAS, fish water is bled off and fresh water is added to ensure proper water quality for the fish. In a conventional or coupled aquaponic system, water circulates between the fish and the plant compartment (Palm et al. 2014, 2018). Plants assimilate nutrients from the water, lowering nutrient concentrations, and therefore ensuring proper water quality for the fish. A disadvantage of a conventional aquaponic system is that water characteristics in the fish and plant compartment are identical. Therefore, optimal conditions can only be achieved if optimal conditions for fish and plants are identical, which is rarely the case (Timmons and Ebeling 2010) as typically optimal pH, nitrogen concentrations, etc. differ. Another disadvantage of a conventional aquaponic system is that nutrients cannot accumulate in the RAS as they are consistently removed by filters, unless nutrients in solid waste are mineralized (Rakocy et al. 2007). Therefore, the nutrient concentrations in the water flow from the RAS to the HPS are relatively low compared with nutrient concentrations in conventional hydroponic nutrient solutions (Kloas et al. 2015; Goddek and Keesman 2018).
A different approach is a decoupled aquaponic system (DAPS), in which water is not circulating between the RAS and HPS, but only flows from the RAS to the HPS. The RAS is subsequently topped off with fresh water. The aforementioned disadvantages of a conventional aquaponic system are not present in a DAPS (Kloas et al. 2015, Goddek & Vermeulen 2018). However, water usage is higher than in a coupled aquaponic system. Plant assimilation is no longer used as a means of lowering nutrient concentrations to achieve fish water requirements. Consequently, more fresh water is necessary to meet the requirements of the fish water.
Sustainability of a DAPS can be improved by introducing an anaerobic digester to the system, making it a multi-loop system. The captured solids (fish sludge), from the mechanical filter, consisting of organic, chemically oxidizable matter, can be used as feedstock for an anaerobic digester. Produced biogas can be converted into electricity, which can be used to power the multi-loop DAPS. The solid waste sludge of the anaerobic digester can be used as fertilizer. The liquid residual waste stream from the anaerobic digester can be sent to the plants. This effluent has a positive impact on plant growth since the digestion process remobilizes nutrients which are present in the effluent (Goddek et al. 2016).
Several scholars (Karimanzira et al. 2016; Reyes Lastiri et al. 2016, 2018) defined a model of a DAPS without a digester, with the intent to analyze system behavior under variable system designs. Consequently, the models could be used in designing the system or in finding optimal management and operational strategies. Yogev et al. (2016), Goddek and Keesman (2018), and Goddek and Körner (2019) defined a model of a multi-loop DAPS with digester, where the objective was to demonstrate the potential of a multi-loop DAPS with digester.
Typically, the design of aquaponic systems is based on guidelines such as suggested by Rakocy et al. (2006). There is still uncertainty, however, whether these guidelines are optimal in the case of a multi-loop DAPS. This question, to the best of our knowledge, has not been answered in literature yet. The objective of this study was to build and analyze a model of a multi-loop DAPS with digester in Kenya, and use it for the evaluation of the system’s performance in terms of efficient use of nutrients, water, and energy. A computer-aided case study of a multi-loop DAPS in Nairobi (Kenya) was performed, in which the mathematical model was used to review the aforementioned multi-loop DAPS design, in terms of water and nutrient use efficiencies and energy consumption, and to perform further optimization of the design.
Materials and methods
System and process description
Kikaboni Farm is located south-west of Nairobi, Kenya, and consists of a RAS, an anaerobic digester, and an HPS. Design parameters of this system that were considered in this research study are the planting area in the HPS and the maximum stocking density in the RAS. An overview of the system is shown in Fig. 1.
Recirculating aquaculture system
The RAS is indoors and has a total volume of 50 m3, equally divided over four fish tanks. Fish production is staggered, meaning that fish age is different for every tank. Maximum stocking density in the RAS is designed at 40 kg m−3, which indicates the point at which all fish in the tank are harvested. Nile tilapia (Oreochromis niloticus) enter the RAS as 1-in. fingerlings and grow for 200 days, meaning that every 50 days, one tank is harvested and restocked with fingerlings. Two 1.1 kW electric water pumps and gravity are driving forces for transport of water between system elements.
Determination of the fish growth is required to calculate feed input, which is an essential control variable to compute nutrient quantities going into the system. Feed contents and other parameters that were used in the model and related to fish feed can be found in Table 1. Knowing that the N content of protein is 16% (Yogev et al. 2016), the N content of fish feed can be computed.
To quantify fish growth, the model of Timmons and Ebeling (2010) was used. Fish length growth and subsequently weight gain was calculated using species-specific constants and water temperature. Required feed input was calculated using a species-specific feed conversion ratio (FCR). Timmons and Ebeling (2010) state that the FCR is variable depending on fish weight (WT). The following sigmoid function for the FCR was defined:
Thus, the FCR can be calculated using fish weight (in grams) as input.
Feed eaten by fish is metabolized, meaning that nutrients in the eaten feed are excreted or converted into body mass. Nutrients are excreted in solid form when they are present in fish feces, or in soluble form when they are present in fish urine or excreted through the gills. All parameters corresponding with the fish metabolism are shown in Table 2.
Successful tilapia aquaculture requires water characteristics that meet certain ranges as presented in Table 3.
A moving bed biofilm reactor (MBBR) and a trickling filter are present in the RAS, acting as a biofilter and a means for gas exchange. One 0.75 kW roots blower is responsible for pumping air into the MBBR. It is assumed that the biofilter is large enough to remove 98% of TAN, and all steps of the nitrification process are taking place. In the case that maximum allowed concentrations are surpassed, RAS water is diluted by moving RAS water from the sump to the HPS, and topping the RAS off with fresh water.
RAS water temperature is higher than the average ambient temperature in Nairobi (WorldWeatherOnline 2017), meaning that heat will be lost to the surroundings. Furthermore, 18 °C groundwater flowing into the RAS needs to be heated to meet the required temperature. Computing heat loss requires data on the RAS buildings’ climate, and fish tank material characteristics, which are not available. Unreported estimations of these heat losses indicated that these are negligible compared with the heating requirement of inflowing groundwater. Heating water using solar energy increases the systems’ self-sufficiency. In this case, solar collectors were installed. During this research study, it was assumed that the solar collectors have a thermal efficiency of 50% (Jamar et al. 2016).
Hydroponic system
The total planting area of the hydroponic system is covering 1500 m2. Crops are grown in troughs with a water depth of 0.5 m, in a plastic tunnel greenhouse. Total water volume of the HPS was determined based on total planting area and water depth in the troughs. Lettuce, Lactuca sativa, is grown in staggered production with a cycle duration of 75 days. Tomato, Solanum lycopersicum, is grown in staggered production with a cycle duration of 145 days. Lettuce and tomato each covers 750 m2 of the 1500 m2 total planting area.
Evapotranspiration was assumed to be proportional with the amount of nutrients taken up by the plant for growth. Previous studies have used the FAO Penman-Monteith equation (Allen et al. 1998) to calculate the reference evapotranspiration rate ET0 (Zolnier and Gates 2004; Qiu et al. 2013; Goddek and Keesman 2018). ETo is dependent on geographical location (Nairobi, 1° 28′ S; 36,42′ E), air temperature, relative humidity, solar radiation, and greenhouse properties. Solar radiation values were obtained from Onyango and Ongoma (2015), who estimated solar radiation for Nairobi using data from a local weather station. Temperature and relative humidity were monthly average values for the period 2009–2016, which were retrieved from the web (WorldWeatherOnline 2017). The FAO Penman-Monteith equation demands a minimum and maximum average relative humidity, whereas the previously mentioned website only provides the average relative humidity. Minimum and maximum average humidity were approximated by respectively subtracting and adding 10% to the average relative humidity. Data from 2009 to 2016 was used to compute average weather data for 1 year, and can be found in the Appendix A. Greenhouse properties are specific for the Kikaboni greenhouse, and are also shown in Appendix A. To calculate the crop-specific evapotranspiration rate (ETc), ETo is multiplied by the single crop coefficient (Kc):
Kc is dependent on crop stage, as can be seen in Fig. 5 in Appendix A. ET0 was calculated for every month. Subsequently, the crop-specific evapotranspiration for an entire crop cycle was calculated using Eq. 2, with corresponding ET0 value. In the case of lettuce, the crop-specific evapotranspiration (ETc) during 75 days was calculated. From this, the average daily crop-specific evapotranspiration rate was determined, which is justified due to the fact that crop production is staggered. Because both ET0 and Kc are varying within 1 year, the crop-specific evapotranspiration will also fluctuate throughout the year, as seen in Fig. 2. Data was smoothed to improve the resemblance with reality.
It was assumed that crop production for both tomato and lettuce is constant when nutrient concentrations are within optimal ranges. From previous research, it can be concluded that there is significant variation in advices for the optimal concentrations of nutrients in the nutrient solutions of hydroponic systems. In our system, the nutrient solution is based on RAS water complemented with nutrients or diluted with fresh water to promote optimal growth (Table 4). Furthermore, optimal nutrient concentrations are crop dependent. In the HPS of the Kikaboni farm, both lettuce and tomato are grown using the same nutrient solution. The nutrient solution pre-specified bounds were set in a way that satisfies both the nutrient concentration requirements of lettuce and tomato and is in line with advices found in literature (Letey et al. 1982; Jones 2004; Santos et al. 2004; Sonneveld and Voogt 2009; Resh 2015; Schmautz et al. 2016; Suhl et al. 2016).
For every day, the volume of dilution requirement is calculated. During dilution, the calculated volume of nutrient solution is removed from the system and replaced with groundwater. Obviously, replacing with groundwater instead of replacing with RAS water means that water is more efficiently used since nutrient concentrations in RAS water are higher than nutrient concentrations in groundwater. The volume of nutrient solution that is removed and replaced with groundwater in case of dilution is referred to as the replacement volume.
Anaerobic digester
The residual fish sludge stream from the settling tank was assumed to have a small total solids content of 2.25 wt% (Mirzoyan et al. 2010). Mesophilic microorganisms break down the biodegradable material in this stream under the absence of oxygen. Since mesophilic microorganisms are used, a moderate temperature of 20 to 40 °C (Chernicharo 2007) is required in the digester, meaning that no additional heating is required. During anaerobic digestion, biogas is formed, of which the main compound is methane, which can be used as fuel for a power generator. Several authors have used mesophilic anaerobic digestion of fish sludge to produce methane (Lanari and Franci 1998; Gebauer 2004; Gebauer and Eikebrokk 2006). From these studies, it can be concluded that a methane production of 0.15 m3 per kilogram COD can be expected. The efficiency of the generator was assumed to be 35% (de Mes et al. 2003). The amount of net energy produced by the generator was found by multiplying the generators’ efficiency by the heat of combustion of methane. Based on the enthalpy reaction of the combustion of methane, the molar mass of methane, and the density of methane, it can be computed that the heat of combustion of methane is 35.0 MJ m−3. The electric energy that is produced is used to power the pumps and blower. If the amount of electric energy generated from biogas combustion is not sufficient, photovoltaic (PV) panels were assumed to be used for the generation of the remaining amount. The efficiency of these PV panels was assumed to be 15% since this is the average efficiency of commercially sold PV panels. The required amount of PV panels and solar collectors was computed using the aforementioned solar radiation values.
Apart from biogas, waste sludge and effluent are additional outgoing streams from the digester. Anaerobic digestion effluent is a water stream in which the remainder of the nutrients that are not used in the digestion process is present. These nutrients are mobilized due to remineralization taking place in the digester, meaning that they are readily available for the plants (Delaide et al. 2018; Goddek et al. 2016). Up to 90% of P going into the digester can be present in the effluent (Jung and Lovitt 2011). Based on Goddek et al. (2018), it was assumed that 25% of ingoing nitrogen is present in the effluent. Solids present in the sludge will settle to the bottom of the digester, and effluent is captured from the top of the digester (Chernicharo 2007). Based on this fact, the assumption was made that 95% of the water present in the inflowing fish sludge is still present in the effluent outflow.
Model description
Model assumptions
Mass, water, and energy balances in the form of ordinary differential equations were used to define a model (see Appendix B and C for details) for dynamic evaluation of water and nutrient use efficiencies and energy consumption. Water balances were set up for the RAS, the HPS, and the system as a whole (Eqs. 5–14). Nutrients that are taken into account are N and P. Both of these nutrients are macronutrients, where nitrogenous compounds may limit fish growth, and P is an exhaustible and scarce resource (Ragnarsdottir et al. 2011). Mass balances were set up for NO3–N (Eq. 15), TAN (Eq. 17), and P (Eq. 18) in the RAS, and N (Eq. 19) and P (Eq. 22) in the HPS. Furthermore, a mass balance of COD in the RAS was formulated in order to determine the biogas yield, as a result of anaerobic digestion of organic material (Eq. 23). An energy balance was formulated for the system as a whole (Eq.25). The water, all of the mass (N, P and COD), and energy balances are presented in Appendix B, accompanied by their corresponding explanations and justifications.
The differential equations were solved numerically in Microsoft Excel™ by using the Euler forward method, with a step size Δt of 1 day. Solving differential equations numerically using the Euler forward method is a practical and simple way to approximate the solution of differential equations, at the cost of small deviations (errors) from the actual solution. The order of calculation steps taken to solve all differential equations can be found in Appendix C.
In this study, the following assumptions were made in order to make certain processes and issues negligible:
-
1.
Whereas the settling tank will not trap all solids in the water, the remaining solids will settle in the sump of the RAS, which will be cleaned daily. The waste of this operation together with the solids from the settling tank will be put into the digester; thus, all solids will eventually end up in the digester, justifying the assumption of 100% solid removal.
-
2.
Water temperatures in the RAS and HPS are constant.
-
3.
Since fish and plant production are staggered, they are fluctuating around a constant as long as fish water requirements and nutrient solution requirements are met.
-
4.
The volume of evapotranspiration water is multiplied by the concentration of a nutrient in the nutrient solution to approximate the amount of a nutrient taken up by the plants.
-
5.
Nutrient concentration thresholds and limits for plants are constant throughout the entire plant cycle.
-
6.
Water retention by fish and plants is neglected. Water leaving the RAS due to fish retention is no more than the maximum stocking density per 200 days, which in this case is 40 kg m−3 per 200 days. Water leaving the HPS due to plant retention of tomato plants is no more than 17 kg m−2 per 145 days (Schmautz et al. 2016), and due to plant retention of lettuce is no more than 7 kg m−2 per 75 days (Touliatos et al. 2016). Both these numbers are small compared with the loss of water due to evapotranspiration and bleed off, justifying the assumption.
-
7.
Water entering the system due to its presence in the feed is neglected. DM content in the feed is high, and daily feed input is small compared with daily groundwater input.
-
8.
NO3–N, TAN, P, and COD concentrations in groundwater are zero.
Key performance indicators
Since the model creates a large amount of data, key performance indicators (KPI) were identified to distinguish relevant model outputs. Model outputs were taken from day 150 to day 1149, that is a period of 1000 days, starting on the first day when all fish tanks are stocked.
On the Kikaboni farm, nutrients are put into the system in the form of feed or supplements. Nutrients are lost in the waste sludge of the digester or in wastewater when dilution of the nutrient solution takes place. Given the sum of input streams and the sum of waste streams, the nutrient use efficiency of N and P, but also of water, can be calculated from
In case of nutrients, Eq. 3 defines NUE (nutrient use efficiency). Equation 3 also applies to WUE (water use efficiency), in which input is all groundwater used and waste is the sum of disposed water during dilution of the nutrient solution and water present in the waste sludge of the digester. The NUE of N, the NUE of P, and the WUE were identified as KPIs.
The feeding rate ratio is used in aquaponics literature as a term to indicate the amount of fish feed required per day per planting area. Since it is widely used in aquaponics literature (Rakocy et al. 2004; Endut et al. 2010; Lennard 2012), this characteristic was also identified as a KPI.
Model-based system design optimization
Microsoft Excel™ enables the use of the Solver tool, in which the user defines the objective, variable cells, and constraints. In this case, the planting area and maximum fish stocking density were selected as variable cells, respectively constrained between 500 and 5000 m2, and 30 and 60 kg m−3. Maximizing the sum of NUE P and WUE was used as the objective for the Solver tool. NUE N is not regarded, as N can be considered a non-exhaustive renewable resource. Also, the use of P supplements in the HPS was constrained to zero. If no feasible solution could be found, the solution with the lowest amount of P supplement was selected.
Sensitivity analysis
By performing a sensitivity analysis, the variation of model outputs due to variation in model inputs and parameters values was investigated. Parameters involved in the sensitivity analysis are fish metabolism parameters regarding N and P, N and P mineralization rates in the anaerobic digester, protein content of fish feed, P content of fish feed, air relative humidity (RH), and air temperature. A local sensitivity analysis was performed to quantify the impact of these parameters on the KPIs. The following equation was used to compute the so-called normalized sensitivity (Tomovic 1963):
in which y is a specific model output and x is a specific model input parameter. The overbar indicates nominal values; thus, multiplication by \( \frac{\overline{x}}{\overline{y}} \) normalizes the sensitivity value.
Results
A 50-day pattern and 365-day pattern are present in the concentrations of N and P in the RAS, and can respectively be seen in Fig. 3 (emphasized by ellipses) and Fig. 4 (see dashed lines). In Figs. 3 and 4, there is a clear trend of decreasing concentrations of N and P in the RAS at the time evapotranspiration increases, e.g., around day 250, as a result of increased uptake by the plants. In Figs. 3 and 4, it is apparent that the concentration of N and P in the nutrient solution (solid lines) is at their respective threshold for the first 150–200 days. Notice from Fig. 3 that the concentration of N in the nutrient solution starts increasing at a steady rate starting around day 175, but stops increasing and starts decreasing at a steady rate around day 350. An interesting aspect of Figs. 3 and 4 is that the concentration of N in the RAS is higher than the concentration of N in the nutrient solution, but the concentration of P in the RAS is lower than the concentration of P in the nutrient solution.
For additional model output and accompanying interpretation, the reader is referred to Appendix E.
Notice from Table 5 that efficient use of both nutrients and water is not achieved in the nominal situation. It is apparent that the biogas yield is not sufficient to power the system, and the collection of solar radiation energy is a necessity to achieve self-sufficiency.
The system design optimization resulted in a system that differs from the nominal system design. For the optimal system design, the planting area has been increased to 2627 m2, with the design parameters of the RAS remaining the same as in the nominal situation. It is apparent from Table 5 that the optimized design results in a system with a significantly higher nutrient and water use efficiency.
Results of the sensitivity analysis show that the P feed content and the P mobilization rate are the only parameters that have a significant impact on model outputs. The reader is referred to Appendix D for the detailed results of the sensitivity analysis.
Discussion
The current study found that a 50-day pattern and 365-day pattern are present in the concentrations of N and P in the RAS (Figs. 3 and 4). Due to the method of staggered fish production, the amount of fish biomass reaches a peak every 50 days. Feed input, and thus nutrient input, is dependent on fish biomass in the system, meaning that nutrient input follows the same pattern. This pattern is a determining factor in the dynamics of our system and is the cause of the 50-day pattern that can be seen in the concentrations of nutrients in the RAS and the nutrient solution. Since evapotranspiration is computed using climate data, a 365-day pattern was found, as can be seen in Fig. 2. When the evapotranspiration rate is at its maximum, most water will flow from the RAS to the HPS to keep the total volume of the nutrient solution constant. Therefore, nutrient concentrations in RAS water will decrease. Both for N and P, it is visible that supplementing of nutrients is necessary during the starting phase of the system. Supplementing of nutrients during the starting phase can be avoided if the coupling between RAS and HPS takes place after N and P concentrations reach the required level. However, this last option may not be considered as economically feasible. Thus, after N and P concentrations in the RAS reach a certain level, the inflow of nutrients into the nutrient solution of the HPS is sufficient, and no supplements are required. N concentration in the nutrient solution starts to decrease around day 350 because P reaches its concentration limit on day 350, meaning that dilution of the nutrient solution is needed. P concentration in the nutrient solution is higher than in RAS water due to the fact that almost all P present in solid excretion will flow into the nutrient solution via the anaerobic digester. Because the mobilization rate of N is significantly lower than the mobilization rate of P, and because significantly more N is excreted in soluble form than P is excreted in soluble form, the concentration of N in the RAS is higher than the concentration of N in the nutrient solution.
The NUE of P is higher than the NUE of N due to the significantly higher mobilization rate of P in the anaerobic digester. Efficient use of nutrients and water is not achieved in the nominal situation because not enough nutrients are taken up by the plants, allowing the P concentration to reach its limit. During the dilution that consequently is required, nutrients and water are wasted.
Because the planting area is almost twice as large in the optimal situation as for the nominal situation, P concentration in the nutrient solution does not reach its limit. Therefore, no dilution of the nutrient solution is required, meaning there is no loss of nutrients and water. However, the concentration of N in the nutrient solution is only sufficient during the months that the evapotranspiration rate is high and nutrient transfer from the RAS to the HPS is high. During the months with a low evapotranspiration rate, supplementing of N is required, explaining the increased amount of N supplement compared with the nominal situation.
P feed content and P mobilization rate were the only parameters which have a significant impact on the pre-specified model outputs (see Table 14 and Table 15). This effect can be explained by the fact that the P concentration range is small, easily leading to a dilution requirement of the nutrient solution. At a low P mobilization rate, WUE is high, but the NUE of P is low. In this case, the dilution requirement is low because the inflow of P into the nutrient solution from the anaerobic digester is low. However, relatively large amounts of P are lost in the waste sludge of the digester. Furthermore, constant supplementation of P into the nutrient solution is necessary to meet the P concentration requirement. The variation in the model outputs caused by a variation in P mobilization rate is small compared with the variation in model outputs caused by variation in feed contents. WUE is most sensitive to P mobilization rate, which can be explained by the fact that high P mobilization rates lead to dilution of the nutrient solution.
In the nominal situation, the feeding rate ratio of our multi-loop DAPS is 9.08 g day−1 m−2. Rakocy et al. (2004) showed that for the production of basil and tilapia in a conventional coupled aquaponic system, a feeding rate ratio of 99.6 g day−1 m2 is required. This system was a single-loop system without a digester. Lennard (2012) suggests a much lower feeding rate ratio of 16 g day−1 m2 for an aquaponic system where tilapia and lettuce are combined, and adds that a higher crop density is possible, leading to an even lower feeding rate ratio. Endut et al. (2010) suggest an optimal feeding rate ratio of 15–42 g day−1 m−2 in an aquaponic system with African catfish (Clarias gariepinus) and spinach. The feeding rate ratio in our system is much lower, which can be explained by the difference in climate and system design (Goddek and Körner 2019). Goddek and Körner (2019) also showed that under controlled environmental conditions and the implementation of a distillation unit (Goddek and Keesman 2018), both dilution of hydroponics water and/or bleed-off of aquaculture water might not even be necessary.
The multi-loop DAPS has a digester, resulting in nutrient mobilization which makes fish feed more efficient as a nutrient supplier for the plants. Notice that only N and P were regarded in this model; other nutrients required by plants might be in shortage in the current situation.
Nutrient concentration ranges of the nutrient solution have a significant impact on the behavior and optimal design of an AP system because these ranges determine when dilution of the nutrient solution or supplementing of the nutrient solution occurs. Dilution of the nutrient solution is undesirable since water and nutrients are wasted. Supplementing is less undesirable, but undermines the self-sufficiency of the AP system. For the case considered in this study, P concentration in the nutrient solution is in many cases a determining factor. Since the concentration range is smaller than the concentration range of N, there is a higher chance for a dilution or supplementation requirement when the ranges are not met. Different pieces of advice for nutrient concentration requirements for a hydroponic nutrient solution are found in literature. These different advices suggest that nutrient concentration requirements are not as strict as they are presented to be in this research study. Furthermore, when nutrient concentrations do not meet their requirements, it does not mean that there is no yield. When setting the nutrient concentration ranges, one should know whether the aim is to achieve optimal or acceptable nutrient concentrations. With optimal nutrient concentrations, plant growth is optimal. With acceptable nutrient concentrations, plant growth will not be optimal, but no nutrient deficiencies will occur either.
A planting area size increase of 75% in the existing Kikaboni farm leads to an optimal system design. Dilution of the nutrient solution does not occur in this situation, meaning that nutrients and water are only lost in the waste sludge of the digester. In reality, increasing the total planting area might not be an option, especially when the system is in an urban area. Also, some flexibility in system size may be needed to account for uncertainty in the inputs and parameters used.
Conclusion
The findings of this model-based design study clearly indicate that the guidelines for designing an aquaponic system, as found in literature, do not necessarily lead to an optimal system design of a multi-loop DAPS. The main reason for this deviation is the presence of a digester in a multi-loop DAPS. Furthermore, nutrient concentration ranges have a large impact on the performance of any aquaponic system, in terms of sustainability, since these ranges determine when dilution or supplementing of the nutrient solution is needed. The model-based design, as presented in this paper, proved to be helpful in finding sustainable system designs of a multi-loop DAPS.
Abbreviations
- COD:
-
Chemical oxygen demand
- DAPS:
-
Decoupled aquaponic system
- DM:
-
Dry matter
- HPS:
-
Hydroponic system
- KPI:
-
Key performance indicator
- MBBR:
-
Moving bed biofilm reactor
- NUE:
-
Nutrient use efficiency
- RAS:
-
Recirculating aquaculture system
- TAN:
-
Total ammonia nitrogen
- TSS:
-
Total suspended solids
References
Allen RG, Pereira LS, Raes D et al (1998) Crop evapotranspiration - guidelines for computing crop water requirements - FAO irrigation and drainage. Irrig Drain 56:1–15. https://doi.org/10.1016/j.eja.2010.12.001
Chernicharo C (2007) Anaerobic Reactors. IWA, London
Cordell D, Drangert JO, White S (2009) The story of phosphorus: global food security and food for thought. Glob Environ Chang 19:292–305. https://doi.org/10.1016/j.gloenvcha.2008.10.009
Craig S, Helfrich L (2002) Understanding fish nutrition, feeds, and feeding. Virginia Coop Ext 1–18. https://pubs.ext.vt.edu/420/420-256/420-256.html
de Mes TZD, Stams AJM, Reith JH, Zeeman G (2003) Methane production by anaerobic digestion of wastewater and solid wastes. Bio-methane bio-hydrogen. Status Perspect Biol methane Hydrog Prod 102:58–102. https://doi.org/10.1016/j.biortech.2010.08.032
Delaide et al. (2018) A methodology to quantify the aerobic and anaerobic sludge digestion performance for nutrient recycling in aquaponics. Biotechnol Agron Soc Environ 22(2):106–112
DeLong DP, Losordo T, Rakocy J (2009) Tank culture of tilapia. https://appliedecology.cals.ncsu.edu/wp-content/uploads/282.pdf. Accessed 24 Sep 2018
Eck, M, Körner O, Jijakli MH (2019) Nutrient cycling in aquaponics systems. In: S Goddek, A Joyce, B Kotzen, and G Burnell. Aquaponics food production systems - combined aquaculture and hydroponic production technologies for the future. Springer International Publishing
El-Sayed A-FM (2006) Tilapia culture. CABI, Wallingford
Endut A, Jusoh A, Ali N, Wan Nik WB, Hassan A (2010) A study on the optimal hydraulic loading rate and plant ratios in recirculation aquaponic system. Bioresour Technol 101:1511–1517. https://doi.org/10.1016/j.biortech.2009.09.040
FAO (2018) FAO global aquaculture production statistics database updated to 2016: aquaculture feed and fertilizer resources information system. Food Agric Organ United Nations 2016
Gebauer R (2004) Mesophilic anaerobic treatment of sludge from saline fish farm effluents with biogas production. Bioresour Technol 93:155–167. https://doi.org/10.1016/j.biortech.2003.10.024
Gebauer R, Eikebrokk B (2006) Mesophilic anaerobic treatment of sludge from salmon smolt hatching. Bioresour Technol 97:2389–2401. https://doi.org/10.1016/j.biortech.2005.10.008
Goddek S, Keesman KJ (2018) The necessity of desalination technology for designing and sizing multi-loop aquaponics systems. Desalination 428:76–85. https://doi.org/10.1016/j.desal.2017.11.024
Goddek & Vermeulen (2018) Comparison of Lactuca sativa growth performance in conventional and RAS-based hydroponic systems. Aquac Int 26(6):1377–1386
Goddek S, Körner O (May 1, 2019) A fully integrated simulation model of multi-loop aquaponics: a case study for system sizing in different environments. Agric Syst 171:143–154. https://doi.org/10.1016/j.agsy.2019.01.010
Goddek S, Schmautz Z, Scott B, Delaide B, Keesman K, Wuertz S, Junge R (2016) The effect of anaerobic and aerobic fish sludge supernatant on hydroponic lettuce. Agronomy 6:37. https://doi.org/10.3390/agronomy6020037
Goddek et al. (2018) Nutrient mineralization and organic matter reduction performance of RAS-based sludge in sequential UASB-EGSB reactors. Aquac Eng 83:10–19
Jamar A, Majid ZAA, Azmi WH, Norhafana M, Razak AA (2016) A review of water heating system for solar energy applications. Int Commun Heat Mass Transf 76:178–187. https://doi.org/10.1016/j.icheatmasstransfer.2016.05.028
Jones J (2004) A practical guide for the soilless grower. Hydroponics. https://doi.org/10.1201/9781420037708
Jung IS, Lovitt RW (2011) Leaching techniques to remove metals and potentially hazardous nutrients from trout farm sludge. Water Res 45:5977–5986. https://doi.org/10.1016/j.watres.2011.08.062
Karimanzira D, Keesman KJ, Kloas W, Baganz D, Rauschenbach T (2016) Dynamic modeling of the INAPRO aquaponic system. Aquac Eng 75:29–45. https://doi.org/10.1016/j.aquaeng.2016.10.004
Kloas W, Groß R, Baganz D, Graupner J, Monsees H, Schmidt U, Staaks G, Suhl J, Tschirner M, Wittstock B, Wuertz S, Zikova A, Rennert B (2015) A new concept for aquaponic systems to improve sustainability, increase productivity, and reduce environmental impacts. Aquac Environ Interact 7:179–192. https://doi.org/10.3354/aei00146
Lanari D, Franci C (1998) Biogas production from solid wastes removed from fish farm effluents. Aquat Living Resour 11:289–295. https://doi.org/10.1016/S0990-7440(98)80014-4
Lennard W (2012) Aquaponic system design parameters : fish to plant ratios (feeding rate ratios). Aquaponic Solut 1:1–11
Letey J, Jarrell WM, Valoras N (1982) Nitrogen and water uptake patterns and growth of plants at various minimum solution nitrate concentrations. J Plant Nutr 5:73–89. https://doi.org/10.1080/01904168209362939
Meriac A (2014) Dietary carbohydrates and denitrification in recirculating aquaculture systems. Wageningen University, Wageningen
Mirzoyan N, Tal Y, Gross A (2010) Anaerobic digestion of sludge from intensive recirculating aquaculture systems: review. Aquaculture 306:1–6
Neto R, Ostrensky A (2015) Nutrient load estimation in the waste of Nile tilapia Oreochromis niloticus (L.) reared in cages in tropical climate conditions. Aquac Res 46:1309–1322. https://doi.org/10.1111/are.12280
Onyango AO, Ongoma V (2015) Estimation of mean monthly global solar radiation using sunshine hours for Nairobi City, Kenya. J Renew Sustain Energy 7. https://doi.org/10.1063/1.4930530
Palm HW, Seidemann R, Wehofsky S, Knaus U (2014) Significant factors affecting the economic sustainability of closed aquaponic systems. Part I: system design, chemo-physical parameters and general aspects. AACL Bioflux 7(1):20–32
Palm HW, Knaus U, Appelbaum S, Goddek S, Strauch SM, Vermeulen T, Haїssam Jijakli M, Kotzen B (2018) Towards commercial aquaponics: a review of systems, designs, scales and nomenclature. Aquac Int 26(3):813–842
Qadir M, Sharma BR, Bruggeman A, Choukr-Allah R, Karajeh F (2007) Non-conventional water resources and opportunities for water augmentation to achieve food security in water scarce countries. Agric Water Manag 87:2–22
Qiu R, Kang S, Du T et al (2013) Effect of convection on the Penman-Monteith model estimates of transpiration of hot pepper grown in solar greenhouse. Sci Hortic (Amsterdam) 160:163–171. https://doi.org/10.1016/j.scienta.2013.05.043
Ragnarsdottir KV, Sverdrup HU, Koca D (2011) Challenging the planetary boundaries I: basic principles of an integrated model for phosphorous supply dynamics and global population size. Appl Geochem 26:S303–S306. https://doi.org/10.1016/j.apgeochem.2011.03.088
Rakocy JE, Shultz RC, Bailey DS, Thoman ES (2004) Aquaponic production of tilapia and basil: comparing a batch and staggered cropping system. Acta Hortic:63–69
Rakocy JE, Masser MP, Losordo TM (2006) Recirculating aquaculture tank production systems: aquaponics- integrating fish and plant culture. SRAC Publ - South Reg Aquac Cent 16:454
Rakocy JE, Bailey DS, Shultz RC, Danaher JJ (2007) Preliminary evaluation of organic waste from two aquaculture systems as a source of inorganic nutrients for hydroponics. In: Acta Horticulturae, pp 201–207
Resh HM (2015) Hydroponics for the home grower. CRC Press
Reyes Lastiri D, Slinkert T, Cappon HJ, Keesman KJ (2016) Model of an aquaponic system for minimised water, energy and nitrogen requirements. Water Sci Technol 74:30–37. https://doi.org/10.2166/wst.2016.127
Reyes Lastiri D, Geelen C, Cappon H, Rijnaarts HHM, Baganz D, Kloas W, Karimanzira D, Keesman KJ (2018) Model-based management strategy for resource efficient design and operation of an aquaponic system. Aquac Eng 83:27–39. ISSN 0144-8609
Ross LG (2000) Environmental physiology and energetics. Tilapias Biol Exploit:89–128. https://doi.org/10.1007/978-94-011-4008-9_4
Santos BM, Dusky JA, Stall WM, Bewick TA, Shilling DG, Gilreath JP (2004) Phosphorus absorption in lettuce, smooth pigweed (Amaranthus hybridus), and common purslane (Portulaca oleracea) mixtures. Weed Sci 52:389–394
Schmautz Z, Loeu F, Liebisch F, Graber A, Mathis A, Griessler Bulc T, Junge R (2016) Tomato productivity and quality in aquaponics: comparison of three hydroponic methods. Water (Switzerland) 8. https://doi.org/10.3390/w8110533
Sonneveld C, Voogt W (2009) Plant nutrition of greenhouse crops. Springer Netherlands, Dordrecht
Suhl J, Dannehl D, Kloas W, Baganz D, Jobs S, Scheibe G, Schmidt U (2016) Advanced aquaponics: evaluation of intensive tomato production in aquaponics vs. conventional hydroponics. Agric Water Manag 178:335–344. https://doi.org/10.1016/j.agwat.2016.10.013
Timmons MB, Ebeling JM (2010) Aquaculture Production Systems, 3rd edn. Ithaca Publishing Company, Ithaca
Tomovic R (1963) Sensitivity analysis of dynamic systems. McGraw-Hill, New York
Touliatos D, Dodd IC, Mcainsh M (2016) Vertical farming increases lettuce yield per unit area compared to conventional horizontal hydroponics. Food Energy Secur 5:184–191. https://doi.org/10.1002/fes3.83
UN (2012) The future we want: outcome document of the United Nations Conference on Sustainable Development
WorldWeatherOnline (2017) Nairobi Monthly Climate Averages. https://www.worldweatheronline.com/nairobi-weather-averages/nairobi-area/ke.aspx. Accessed 7 Mar 2018
Yogev U, Barnes A, Gross A (2016) Nutrients and energy balance analysis for a conceptual model of a three loops off-grid, aquaponics. Water (Switzerland) 8. https://doi.org/10.3390/w8120589
Zolnier GBL, Gates RS (2004) Evapotranspiration estimates for greenhouse lettuce using an intermittent nutrient film technique. Trans ASAE 47:271–282. https://doi.org/10.13031/2013.15868
Author information
Authors and Affiliations
Corresponding author
Ethics declarations
Conflict of interest
The authors declare that they have no conflict of interest..
Additional information
Publisher’s note
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Appendices
Appendices
Appendix A. Parametrization FAO Penman-Monteith equation
Appendix B. Water, mass, and energy balances
In what follows, the basic principles of conservation of mass and energy are applied to our AP system, and which in words can be summarized as storage = inflow − outflow + production. Consequently, the dynamic behavior of our AP system, thus where the storage term is not neglected, is described in terms of differential equations. The structure of the Appendix is such that first a balance is introduced, followed by detailed expressions for each of the terms, and then the next balance, and so on.
Water balance
A volume balance for water of the entire system is relevant since it determines the flow of nutrients and provides insight on water use:
in which Vwater is the total volume of water in the system, Qgw is the volumetric flow rate of inflowing groundwater in the AP system, QET the volumetric flow rate of evapotranspiration water, QSW the volumetric flow rate of fish sludge, and \( {Q}_{dl}^{HPS} \) the volumetric flow rate of water removed during dilution of the nutrient solution. Parameter α represents the fraction of fish sludge that ends up in the waste sludge (Fig. 1), thus leaving the system.
From the fact that the water level in the AP system is constant can be derived that
QET is computed using the FAO-Penmann Monteith equation (Allen et al. 1998).
The volumetric flow rate of fish sludge at time t is defined as
in which \( {\dot{m}}_{\mathrm{feed}}(t) \) is the mass flow rate of feed at time t, \( {c}_{\mathrm{feed}}^{DM} \) is the mass fraction of dry matter in feed, β is the mass fraction of feed (dry matter) that ends up in the RAS water as solids, of which the value can be found in Table 1, \( {w}_{\mathrm{sludge}}^{TS} \) is the mass fraction of solids in fish sludge, and ρwater is the density of the fish water. The term \( {\dot{m}}_{\mathrm{feed}}(t)\cdotp {c}_{\mathrm{feed}}^{DM}\cdotp \beta \) equals the mass of the solids that are in the sludge stream, which is multiplied by the term \( \frac{1-{w}_{\mathrm{sludge}}^{TS}}{w_{\mathrm{sludge}}^{TS}} \) to find the mass of the liquid part of the sludge stream.
The computation of dilution of the nutrient solution is defined as
in which \( {V}_{dl}^{\mathrm{HPS}}(t) \) is the replacement volume at time t, \( {m}_{\mathrm{HPS}}^x(t) \) the mass of nutrient x in the nutrient solution at time t, \( {c}_{\mathrm{HPSmax}}^x \) the maximum mass concentration of nutrient x in the nutrient solution, VHPS the total volume of the nutrient solution, cx(t) the mass concentration of nutrient x in the nutrient solution at time t, and \( {c}_{gw}^x \) the mass concentration of compound x in groundwater.
The volume balance of water for the RAS is defined as
in which \( {V}_{\mathrm{RAS}}^{\mathrm{water}} \)is the total volume of water in the RAS, \( {Q}_{gw}^{\mathrm{RAS}} \) is the volumetric flow rate of groundwater flowing into the RAS, \( {Q}_{dl}^{\mathrm{RAS}} \) the volumetric flow rate of water flowing out of the RAS to the HPS when RAS water is diluted, and \( {Q}_{\mathrm{refill}}^{\mathrm{HPS}} \) the volumetric flow rate of water flowing from the RAS to the HPS to keep the water level in the HPS constant.
From the fact that the water level in the RAS is constant can be derived that
The required water replacement volume in the RAS at time t is defined as
in which \( {V}_{dl}^{\mathrm{RAS}}(t) \) is the replacement volume at time t, \( {m}_{\mathrm{RAS}}^x(t) \) the mass of compound x in the RAS water at time t, \( {c}_{\mathrm{RASmax}}^x \) the maximum allowed mass concentration of compound x in the RAS water, \( {c}_{\mathrm{RAS}}^x(t) \) the mass concentration of compound x in the RAS water at time t.
The water volume balance of the HPS is defined as
in which \( {V}_{\mathrm{HPS}}^{\mathrm{water}} \) is the total volume of the nutrient solution, \( {Q}_{gw}^{\mathrm{HPS}} \) is the volumetric flow rate of groundwater into the nutrient solution, being equal to the volumetric flow rate \( {Q}_{dl}^{\mathrm{HPS}} \) out of the nutrient solution during dilution, and QANA the volumetric flow rate of effluent from the anaerobic digester into the nutrient solution. From the fact that the water level in the HPS is constant can be derived that
QANA is defined as
in which γ is the fraction of fish sludge that is present in the effluent.
Nitrogen, phosphorus, and COD mass balances
In the RAS, N flows into the system as feed but is divided into NO3–N and TAN due to fish metabolism.
The mass balance for NO3–N in the RAS is defined as
in which \( {m}_{\mathrm{RAS}}^{\mathrm{N}{\mathrm{O}}_3-\mathrm{N}} \) is the mass of NO3–N in the RAS water, pTAN the production of TAN by fish, \( {c}_{gw}^{\mathrm{N}{\mathrm{O}}_3-\mathrm{N}} \) the mass concentration of NO3–N in groundwater, and \( {\mathrm{c}}_{\mathrm{RAS}}^{\mathrm{N}{\mathrm{O}}_3-\mathrm{N}} \) the mass concentration of NO3–N in the RAS water. Parameter ηbf represents the efficiency of the biofilter, thus the percentage of TAN that is nitrified.
Fish production of TAN is defined as:
in which \( {w}_{\mathrm{feed}}^{\mathrm{N}} \) is the mass fraction of N in fish feed, δ is the fraction of feed ingested by fish, and ϵ the fraction of N eaten by the fish that is excreted as TAN.
The mass balance for TAN in the RAS is defined as
in which \( {m}_{\mathrm{RAS}}^{\mathrm{TAN}} \) is the mass of TAN in the RAS water, \( {c}_{gw}^{\mathrm{TAN}} \) the mass concentration of TAN in groundwater, and \( {c}_{\mathrm{RAS}}^{\mathrm{TAN}} \) the mass concentration of TAN in the RAS water.
The mass balance for P in the RAS is as follows:
in which \( {m}_{\mathrm{RAS}}^{\mathrm{P}} \) is the mass of P in the RAS water, \( {w}_{\mathrm{feed}}^{\mathrm{P}} \) is the mass fraction of P in feed, ζ is the mass fraction of ingested P retained by fish, \( {c}_{gw}^{\mathrm{P}} \) is the mass concentration of P in groundwater, and \( {c}_{\mathrm{RAS}}^{\mathrm{P}} \) is the mass concentration of P in RAS water.
In the HPS, total N is regarded instead of nitrate-nitrogen and TAN. The mass balance of N in the HPS is defined as
in which \( {m}_{\mathrm{HPS}}^{\mathrm{N}} \) is the mass of N in the nutrient solution, \( {c}_{\mathrm{ANA}}^{\mathrm{N}} \) is the mass concentration of N in the effluent of the anaerobic digester, \( {\dot{m}}_{\mathrm{supp}}^{\mathrm{N}} \) is the mass flow rate of N supplement into the nutrient solution, and \( {c}_{\mathrm{HPS}}^{\mathrm{N}} \) is the mass concentration of N in the nutrient solution.
The mass flow rate of nutrient x supplement at time t is defined as
in which \( {\dot{m}}_{\mathrm{supp}}^x(t) \) is the mass flow rate of nutrient x supplement flowing into the nutrient solution at time t, \( {c}_{\mathrm{HPSmin}}^x \) the minimum required mass concentration of nutrient x in the nutrient solution, \( {m}_{\mathrm{HPS}}^x(t) \) the mass of nutrient x in the nutrient solution at time t, and T the time period during which the supplement is added to the nutrient solution.
\( {c}_{\mathrm{ANA}}^{\mathrm{N}}(t) \) can be computed using
in which ξ is the fraction of ingested N that is excreted as feces, and ι is the fraction of N flowing into the digester that is present in the effluent.
The mass balance of P in the HPS is as follows:
in which \( {m}_{\mathrm{HPS}}^{\mathrm{P}} \) is the mass of P in the nutrient solution, \( {c}_{\mathrm{ANA}}^{\mathrm{P}} \) is the concentration of P in the effluent of the anaerobic digester, \( {\dot{m}}_{\mathrm{supp}}^{\mathrm{P}} \) the mass flow rate of P fertilizer into the nutrient solution, and \( {c}_{\mathrm{HPS}}^{\mathrm{P}} \) the concentration of P in the nutrient solution.
A mass balance for COD present in the RAS is relevant since it is required to determine the amount of COD flowing to the anaerobic digester:
in which \( {m}_{\mathrm{RAS}}^{\mathrm{COD}} \) is the mass of COD in the RAS water, \( {c}_{gw}^{\mathrm{COD}} \) the concentration of COD in groundwater, \( {w}_{\mathrm{feed}}^{\mathrm{COD}} \) the mass fraction of COD in feed, κ the fraction of ingested COD retained by the fish, and \( {c}_{\mathrm{RAS}}^{\mathrm{COD}} \) the concentration of COD in the RAS water. From this equation, the flow of COD to the digester \( {\dot{m}}_{dig}^{\mathrm{COD}} \) can be derived:
in which λ is the fraction of ingested COD that is excreted as feces.
Energy balance
Methane produced in the anaerobic digester will be converted into energy using a generator. Energy is consumed by two identical pumps and a blower in the biofilter. The pumps and the blower are running constantly at a constant consumption level. From this information, the energy balance is given by:
in which \( {p}_{gen}^E \) is the production of electric energy by the generator, \( {p}_{sol}^E \) the production of solar thermal energy, \( {p}_{PV}^E \) the production of solar electric energy, \( {P}_{\mathrm{pump}}^E \) the power of the pump, \( {P}_{\mathrm{blower}}^E \) the amount of energy used by the blower, and \( {Q}_{gw}^E \) the rate of heat flow to the inflowing groundwater in the RAS.
Since the system is supposed to be self-sufficient, it can be stated that
The production of energy by the anaerobic digester is defined as
in which μ is the biogas yield per mass unit of COD, u is the energy density of methane, and ηgen is the energy conversion efficiency of the generator.
The production of solar thermal energy can be computed using
in which \( \overline{R_s} \) is the average solar radiation computed from data in appendix A, Asp the total surface of the solar collectors, and ηsp the thermal efficiency of the solar water heating system.
Electric energy is produced using PV panels, of which the quantity of production is defined as
in which APV is the surface area of the PV-panels, and ηPV is the efficiency of the PV-panels.
The rate of heat flow to the inflowing groundwater in the RAS is as follows:
in which cp is the specific heat of groundwater, and ρ the density of groundwater, \( \overline{T} \) is the water temperature in the RAS, and Tgw is the temperature of the inflowing groundwater.
Appendix C. Order of calculation steps
The model was built in Microsoft Excel, in which every row accounts for a day, and every column accounts for one calculation step, as computation of the water and energy balances is performed in a discretized/step-wise manner. The following tables show the order in which these calculation steps are taken. A specific example of the methodology used in this paper, one sheet in Microsoft Excel, is used to compute the water balance of the model. Column A is used to calculate the volumetric flow rate of fish sludge, for which Eq. 7 is used. Column B is used to calculate the volumetric flow rate of effluent of the anaerobic digester, for which Eq. 12 is used, and so on.
Appendix D. Sensitivity analysis
In Table 16, the effect of varying feed protein content on model output is shown. The uncertain protein content of fish feed does create negligible uncertainty in key performance indicators concerning sustainability, as reflected in the sensitivity values in Table 16. Supplementing of N in the nutrient solution is required when feed protein content is low.
Uncertainty caused by an uncertain nitrogen mobilization rate is shown in Table 17. Uncertainty of the N mobilization rate has a small impact on the NUE of N, as reflected by the sensitivity value. Furthermore, a higher mobilization rate completely removes the need for N supplementing.
Both variations in feed composition and variation in mobilization rates have no impact on the energy balance of the system; hence in Tables 14, 15, 16, and 17, the effect on solar collectors and PV panel surface requirements was not presented.
Relative humidity and temperature directly affect evapotranspiration rate and thereby have an impact on the system. Uncertainty in climate conditions does not have a significant effect on model outputs. High RH and high temperature result in a higher evapotranspiration rate, which leads to a higher WUE and higher NUE for both N and P. In the low-temperature scenario, evapotranspiration rate is lower, meaning less water has to move from the RAS to the HPS. Therefore, less groundwater needs to flow into the RAS, explaining a lower solar collector requirement. Given that less water moves from the RAS to the HPS, more COD is present in RAS water, meaning more COD will flow to the digester. This higher COD concentration results in slightly higher methane yield, reducing the requirement for solar panels by 0.1 m2 compared with the nominal situation.
Uncertainty in fish metabolism parameters has no impact on the energy balance of the system; hence, there is no mention of the solar collector and PV panel surface requirement in Table 19 and Table 20. When soluble excretion of either nutrient is favored, NUE is higher. This observation can be explained by the fact that part of the solid excretion is lost in the waste sludge of the digester. Since the mobilization rate of P in the anaerobic digester is higher, the effect of an uncertain solid:soluble excretion ratio on the NUE of P is lower. When solid excretion of N is favored, supplementing of N is 100 times the amount of when soluble excretion of N is favored. The reason for this is that more solid excretion of N leads to more loss of N in the waste sludge of the anaerobic digester. Less N will flow into the nutrient solution, increasing the requirement for supplementing. When soluble excretion of P is favored, WUE is lower and the amount of N supplement is higher. If soluble excretion of P is favored, the concentration of P in RAS water is higher, and the concentration of P in the effluent is lower, compared with the situation where solid excretion of P is favored. Overall, this leads to slightly more P flowing into the nutrient solution, leading to a higher dilution requirement of the nutrient solution, and thus a higher supplementing requirement of N. Furthermore, the effect of an uncertain solid:soluble excretion ratio of both nitrogen and phosphorus on the model outputs is small compared with the effect of uncertain feed contents, as reflected by the sensitivity values.
Appendix E. Additional model outputs
NUE of both N and P, respectively shown in Fig. 6 and Fig. 7, decreases in the first 200 days, of which the decrease rate is highest in the first 160 days. This observation can be explained by the fact that the amount of nutrients lost in waste sludge increases until it reaches a maximum at day 200, at which point fish are harvested and feed input drops down. Supplementing N to the nutrient solution stops at approx. day 160, as seen in Fig. 3, explaining why NUE of N decreases at a lower rate from this day on. Supplemented nutrients are not wasted, whereas nutrients added through fish feed are partly wasted as waste sludge of the anaerobic digester. The same principle applies to NUE of P, where supplementing P to the nutrient solution stops at ~day 130, as seen in Fig. 4, from which day on NUE P decreases at a lower rate.
At approx. day 350, dilution of the nutrient solution starts to occur, causing the NUE of both N and P to drop. A 50-day pattern can also be seen in both the NUE of N and P. NUE steadily decreases, and after 50 days it instantly increases to a maximum, after which it starts steadily decreasing again. This observation is explained by the fact that after fish harvesting, the nutrient input drops down, reducing the need for dilution of the nutrient solution. Furthermore, a 365-day pattern can be seen in both the NUE curve of N and P. When the evapotranspiration is low, the NUE is also low, due to the fact that nutrients flowing out of the system in evapotranspiration water are not considered as wasted nutrients. If the evapotranspiration rate is low, dilution requirement is high.
Previously explained principles also explain the WUE behavior from approx. day 350 on (Fig. 8). The slight variations seen in the first 350 days are explained by water lost in the waste sludge of the anaerobic digester. Water lost in the waste sludge of the anaerobic digester follows the 50-day pattern caused by the amount of feed input, reaching a maximum when feed input is at its highest point.
Rights and permissions
Open Access This article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made.
About this article
Cite this article
Dijkgraaf, K.H., Goddek, S. & Keesman, K.J. Modeling innovative aquaponics farming in Kenya. Aquacult Int 27, 1395–1422 (2019). https://doi.org/10.1007/s10499-019-00397-z
Received:
Accepted:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s10499-019-00397-z