Abstract
Smalls scale challenges suggest some missing pieces in our current understanding of dark matter. A cascade theory for dark matter is proposed to provide extra insights, similar to the cascade phenomenon in hydrodynamic turbulence. The kinetic energy is cascaded in dark matter from small to large scales involves a constant rate \(\varepsilon _u\) (\(\approx -\,4.6\times 10^{-7}{\text { m}}^2/{\text { s}}^3\)). Confirmed by N-body simulations, the energy cascade leads to a two-thirds law for kinetic energy \(v_r^2\) on scale r such that \(v_r^2 \propto (\varepsilon _u r)^{2/3}\). Equivalently, a four-thirds law can be established for mean halo density \(\rho _s\) enclosed in the scale radius \(r_s\) such that \(\rho _s \propto \varepsilon _u^{2/3}G^{-1}r_s^{-4/3}\), which was confirmed by galaxy rotation curves. Critical properties of dark matter might be obtained by identifying key constants on relevant scales. First, the largest halo scale \(r_l\) can be determined by \(-u_0^3/\varepsilon _u\), where \(u_0\) is the velocity dispersion. Second, the smallest scale \(r_{\eta }\) is dependent on the nature of dark matter. For collisionless dark matter, \(r_{\eta } \propto (-{G\hbar /\varepsilon _{u}}) ^{1/3}\approx 10^{-13}\,{\text {m}}\), where \(\hbar\) is the Planck constant. An uncertainty principle for momentum and acceleration fluctuations is also postulated. For self-interacting dark matter, \(r_{\eta } \propto \varepsilon _{u}^2 G^{-3}(\sigma /{{m}})^3\), where \(\sigma /m\) is the cross-section of interaction. On halo scale, the energy cascade leads to an asymptotic density slope \(\gamma =-\,4/3\) for fully virialized haloes with a vanishing radial flow, which might explain the nearly universal halo density. Based on the continuity equation, halo density is analytically shown to be closely dependent on the radial flow and mass accretion, such that simulated haloes can have different limiting slopes. A modified Einasto density profile is proposed accordingly.
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Introduction
Standard CDM (cold dark matter) paradigm of cosmology has many successes in the formation and evolution of large scale structures and the contents and states of our universe1,2,3,4. Despite great successes, serious theoretical and observational difficulties still exist5,6. Especially, CDM model predictions of structures on small scales (< 1 Mpc) are inconsistent with some observations. Examples are the core-cusp problem7,8, the missing satellite problem9,10, the too-big-to-fail problem11,12. In addition, the origin of Baryonic Tully–Fishser relation (BTFR) and MOND (modified Newtonian dynamics)13,14,15 is still not clear.
These smalls scale challenges might be related to each other6,16,17 and suggest missing pieces in our current understandings. First, the cusp-core problem describes the discrepancy between the cuspy halo density predicted by cosmological CDM only N-body simulations and the cored density inferred from observational data for dwarf galaxies. The predicted halo density exhibits a cuspy profile with inner density \(\rho (r) \propto r^{\gamma }\), where slope \(\gamma\) persistently exceeds different observations18,19,20,21. Even for the cuspy profile predicted by cosmological simulations, there seems no consensus on the exact value of asymptotic slope \(\gamma\), but with a wide range between − 1.0 and − 1.5. Since the first prediction of \(\gamma = -\,1.0\) in NFW profile22, the inner density slope of simulated haloes seems to have different values from \(\gamma >-\,1.0\)23 to \(\gamma =-\,1.2\)24, and \(\gamma =-\,1.3\)25,26. To summarize, some key questions are: is there an asymptotic slope for dark matter haloes? why there exists a nearly universal density profile? and why different inner slopes \(\gamma\) exist in simulations?
The halo density inferred from observational data exacerbates the problem. Even the smallest predicted inner density slope from simulations is still greater than that from observations. Many solutions have been suggested to solve the cusp-core problem27. Within the CDM framework of collisionless dark matter, the baryonic solutions focus on different mechanisms for energy exchange between baryons and dark matter to enable a flatter inner density28,29,30. Beyond the CDM framework, the self-interacting dark matter is proposed as a potential solution31,32,33. The elastic scattering with a given cross-section facilitates the exchange of momentum and energy between dark matter particles and the formation of a flat core. Although the existence of dark matter is supported by numerous astronomical observations34,35, the nature and fundamental properties of dark matter are still a big mystery. No matter collisionless or self-interacting, some key questions remain open: what are the limiting length or density scales for dark matter if exist? what is the effect of self-interaction on these scales? what are the fundamental properties (particle mass, cross-section etc.) of dark matter? Answers to these questions would be critical for identifying and detecting dark matter.
In this paper, a cascade theory for dark matter flow is proposed to provide some useful insights, similar to the cascade in hydrodynamic turbulence. Both dark matter flow and turbulence are typical non-equilibrium systems involving energy cascade as a key mechanism to continuously release energy and maximize system entropy. To grasp the key idea, we first present the cascade in turbulence that has been well-studied for many decades36,37,38,39. As shown in Fig. 1, turbulence consists of a collection of eddies (building blocks) on different length scale l that are interacting with each other. The classical picture of turbulence is an eddy-mediated energy cascade process, where kinetic energy of large eddies feeds smaller eddies, which feeds even smaller eddies, and so on to the smallest scale \(\eta\) where viscous dissipation is dominant. The direct energy cascade in turbulence can be best described by a poem40:
“Big whirls have little whirls, That feed on their velocity;
And little whirls have lesser whirls, And so on to viscosity.”
Despite the similarities, dark matter flow exhibits many different behaviors due to its collisionless and long-range interaction nature. First, unlike the turbulence that is incompressible on all scales, dark matter flow exhibits scale-dependent flow behaviors, i.e. a constant divergence flow on small scales and irrotational flow on large scales. Second, the long-range gravity requires a broad spectrum of haloes to be formed to maximize the system entropy. In principle, haloes of different mass can be grouped into groups of haloes with the same mass \(m_h\). Mass accretion facilitates a continuous mass and energy exchange between haloes groups on different mass scale \(m_h\), i.e. an inverse mass and energy cascade (Fig. 1).
The highly localized and over-dense haloes are a major manifestation of nonlinear gravitational collapse44,45 and the building blocks of dark matter flow, a counterpart to “eddies” in turbulence. The halo-mediated inverse mass cascade is not present in turbulence, but exists as a local, two-way, and asymmetric process in dark matter flow42. The net mass transfer proceeds in a “bottom-up” fashion from small to large mass scales (inverse cascade) to allow for hierarchical structure formation. Haloes pass their mass onto larger and larger haloes, until halo mass growth becomes dominant over the mass propagation. From this description, mass cascade can be described by a similar poem with “eddies” (or “whirls”) simply replaced by “haloes”:
“Little haloes have big haloes, That feed on their mass;
And big haloes have greater haloes, And so on to growth.”
Energy cascade across halo groups is facilitated by the mass cascade and also a fundamental feature. Even on the halo scale, since haloes are non-equilibrium objects, energy cascade should also play a role in the abundance and internal structure of haloes. In this paper, we focus on the energy cascade, its evidence from galaxy rotation curves, and its critical role for halo internal structure and dark matter properties.
The constant rate of energy cascade
Particle-based N-body simulations are widely used to study the nonlinear gravitational collapse of dark matter46. The simulation data for this work was generated from N-body simulations by Virgo consortium47,48. One way to determine the constant rate of energy cascade \(\varepsilon _u\) is from a cosmic energy equation for energy evolution of dark matter flow in expanding background49,50,51,
which is a manifestation of energy conservation in expanding background. Here \(K_{p}\) is the specific (peculiar) kinetic energy, \(P_{y}\) is the specific potential energy in physical coordinate, \(E_{y} =K_{p}+P_{y}\) is the total energy, \(H={\dot{a}/a}\) is the Hubble parameter (\(Ht=2/3\) for matter dominant universe), and a is the scale factor. In statistically steady state, Eq. (1) admits a linear solution of \(K_{p} =-\varepsilon _u t\) and \(P_{y} =7/5\varepsilon _u t\) (see Fig. 2) such that \(\varepsilon _{\varvec{\textrm{u}}}\) can be found as,
where \(u_{0} \equiv u\left( t=t_{0} \right) \approx 354.6{{\text { km/s}}}\) is the one-dimensional velocity dispersion of all dark matter particles and \(t_{0}\) is the present time. The constant \(\varepsilon _{\varvec{\textrm{u}}}\) represents the rate of energy cascade across different scales. The negative value \(\varepsilon _{\varvec{\textrm{u}}}<0\) reflects the direction (inverse) from small to large mass scales.
The 2/3 and − 4/3 laws for energy and density
To develop statistical theory of dark matter flow on all scales, different statistical measures can be introduced including the correlation, structure, dispersion functions, and power spectrum for density, velocity and potential fields. Among different measures, structure functions are of particular interest that describes how energy is distributed and transferred across different length scales. For a pair of particles at two different locations \(\varvec{\textrm{x}}\) and \(\varvec{\textrm{x}}^{'}\) with velocity \(\varvec{\textrm{u}}\) and \(\varvec{\textrm{u}}^{'}\), the second order longitudinal structure function \(S_{2}^{lp}\) (pairwise velocity dispersion in cosmology terms) is defined as
where \(u_{L} =\varvec{\textrm{u}}\cdot \hat{\varvec{\textrm{r}}}\) and \(u_{L}^{'} =\varvec{\textrm{u}}^{'} \cdot \hat{\varvec{\textrm{r}}}\) are two longitudinal velocities. The distance \(r\equiv |\varvec{\textrm{r}}|=|\varvec{\textrm{x}}^{'} -\varvec{\textrm{x}}|\) and the unit vector \(\hat{\varvec{\textrm{r}}}={\varvec{\textrm{r}}/r}\) (see Fig. 3). For a given scale r, all particle pairs with the same separation r can be identified in N-body simulation. The particle position and velocity data were recorded to compute the structure function in Eq. (3) by averaging over all pairs with the same r (i.e. a pairwise average).
In incompressible flow, the structure function has a small scale limit \({\mathop {\lim }\limits _{r\rightarrow 0}} S_{2}^{lp}=0\) because of \(u_{L} \approx u_{L}^{'}\) due to the viscous force. However, in dark matter flow, \({\mathop {\lim }\limits _{r\rightarrow 0}} S_{2}^{lp} =2u^{2} \ne 0\) due to the collisionless nature52,53, where \(u^2\) is velocity dispersion in Eq. (2). The pair of particles with a sufficiently small r is more likely from the same halo, while different pairs can be from different haloes. Kinetic energy of particle pairs on scale r includes contributions from both the relative motion of two particles and the motion of haloes that particle pair resides in. The kinetic energy from the motion of haloes is relatively same for different pairs. Kinetic energy involved in the energy cascade should be the part due to the relative motion. Since original pairwise dispersion \(S_{2}^{lp}(r)\) includes the total kinetic energy on scale r, a reduced structure function \(S_{2r}^{lp}(r)=S_{2}^{lp}-2u^2\) can be introduced to take the common part out and include only the part from relative motion with the right limit \({\mathop {\lim }\limits _{r\rightarrow 0}} S_{2r}^{lp}=0\). This description indicates that \(S_{2r}^{lp}(r)\) should be determined by and only by \(\varepsilon _{u}\) ( \({{\text{m}}^{2} /{\text{s}}^{3}}\)), gravitational constant G (\({\text{m}}^3/{\text{kg}}\cdot {\text{s}}^2)\), and scale r. By a simple dimensional analysis, this reduced structure function must follow a two-thirds law, i.e. \(S_{2r}^{lp}(r) \propto \left( -\varepsilon _{u} \right) ^{{2/3} } r^{{2/3}}\).
Figure 4 plots the variation of \(S_{2r}^{lp}\) with scale r at z=0 from N-body simulations. The range \(S_{2r}^{lp} \propto (-\varepsilon _ur)^{{2/3}}\) can be clearly identified below a critical length scale \(r_l=-u_0^3/\varepsilon _u\). This range is formed due to the formation of haloes and inverse energy cascade. On small scale, \(S_{2r}^{lp}\) (kinetic energy) should finally read
where the proportional constant \(\beta _{2}^{*} \approx 9.5\) can be found from Fig. 4. Since \(S_{2r}^{lp}\) represents the kinetic energy of relative motion on scale r, a different form of the two-thirds law (Eq. 4) can be obtained. By introducing a typical velocity \(v_r\) on a given scale r,
the two-thirds law in Eq. (4) can be equivalently written as,
where \(a_r\) is the scale of acceleration. Equation (6) also describes the cascade of kinetic energy in the inner halo region (\(r<r_s\), where \(r_s\) is the scale radius). The kinetic energy \(v_{r}^2\) on scale r is cascaded to large scale during a turnaround time of \(t_r=r/v_r\). Combining Eq. (6) with the virial theorem \(Gm_r/r \propto v_r^2\) on scale r, we can easily obtain the typical mass \(m_r\) (enclosed within r), density \(\rho _r\), velocity \(v_r\), and time \(t_r\) on scale r, all determined by \(\varepsilon _u\), G, and r:
where \(\alpha _r\) and \(\beta _r\) are two numerical constants. The predicted five-thirds law for mass \(m_r\) enclosed in scale r can be directly tested by N-body simulations. In this work, the large scale cosmological simulation Illustris (Illustris-1-Dark) was selected for comparison54. Figure 5 presents the variation of enclosed mass \(m_r\) with scale r at different redshift z for all haloes with a given mass \(m_h\). Results from Ref.55 are also presented for comparison. Both results confirm the predicted five-thirds law in Eq. (7).
Next, the predicted four-thirds law \(\rho _r(r) \propto r^{-4/3}\) for mean density enclosed in scale r can be directly tested by data from galaxy rotation curves (see Fig. 6).
Halo density slope and mean radial flow
On small scale, inner halo region is assumed to be fully virialized for Eq. (7) to be valid. A vanishing radial flow \(u_{r}\) is expected from the stable clustering hypothesis, i.e. no net stream motion in physical coordinate along radial direction56. With \(u_{r}\equiv 0\), there is no mass, momentum, and energy exchanges between different shells. However, haloes are non-equilibrium dynamic objects, whose internal structure should be dependent on the radial flow. This relation we’ll develop might be useful for core/cusp controversy.
Since halo density models often involve a scale radius \(r_s\) (the length scale of a halo), we may introduce a reduced spatial–temporal variable \(x={r}/{r_s(t)}={c(t)r}/{r_h(t)}\), where \(c\equiv c(t)\) is halo concentration and \(r_h(t)\) is the virial size for halo of mass \(m_h(t)\). Derivatives with respect to t and r can be derived using the chain rule,
A general function \(F\left( x\right)\) can be introduced such that the mass \(m_{r}(r,t)\) enclosed in radius r and halo density \(\rho _{h}(r,t)\) and can all be expressed in terms of function \(F\left( x\right)\),
The time derivative of \(\rho _{h} \left( r,t\right)\) can be obtained from Eq. (9),
The mass continuity equation for a spherical halo simply reads,
where \(u_{r} \left( r,t\right)\) is the mean radial flow velocity. From Eqs. (10) and (11), the enclosed mass \(m_{r}\) is related to the radial flow as
With \(m_{r}\) and \(\rho _{h}\) from Eq. (9), the radial flow \(u_r\) simply reads
While from Eq. (9) for \(m_{r}\), we have
Substituting into Eq. (13), the normalized radial flow \(u_h\) reads
For fast growing haloes in their early stage with a constant \(c=3.5\) and \(r_s(t) \propto m_h(t) \propto t\), the cored density (pISO, Einasto, etc.) leads to \(u_h = 2x/3\), while NFW profile leads to \(u_h = x/2\) (see Eqs. (15), (20)). Taking the derivative in Eq. (15) and combinong with Eq. (9), the density slope \(\gamma\) can be obtained exactly as,
Clearly, the spatial variation of slope \(\gamma\) comes from the radial flow \(u_h\), while the time variation of \(\gamma\) comes from \(r_s(t)\) and \(m_r(r_s,t)\) due to mass accretion. For fully virialized haloes or the virialized inner core, we should have \(u_h \equiv 0\) such that the asymptotic slope \(\gamma\) reads
On halo scale, energy cascade with a constant rate \(\varepsilon _u\) is valid for all scales \(r\le r_s\). Taking the enclosed mass \(m_r(r_s)\) as the mass scale in Eq. (7), we found \(m_r(r_s) \propto r_s^{5/3}\). For fully virialized haloes with \(u_h\equiv 0\), slope \(\gamma =-4/3\) or a cuspy density \(\rho _h(r) \propto r^{-4/3}\) can be obtained from Eq. (16). Therefore, fully virialized haloes should have universal cuspy density profiles due to energy cascade. In other words, simulated haloes might have different slope \(\gamma\) due to nonzero radial flow and different mass accretion rate (Eq. 16). The baryonic feedback provides potential mechanisms to enhance the gradient of \(u_h\) (deformation rate) in Eq. (16) and flatten the inner density. To better illustrate, we can approximate Eq. (16) in the core region as:
Here dimensionless number \(\mu\) represents the competition between radial flow and halo mass accretion, i.e. the deformation rate normalized by the rate of change in halo core size. The exponent \(m={\partial ln r_s}/{\partial ln t}\) decreases with time and increases with halo size to \(m \approx 1\) for large haloes. From scaling laws for \(m_r\) in Eq.(7), \(m_r(r_s) \propto r_s^{5/3}\). From Eq. (18), strong supernova-driven outflows in interstellar medium may lead to a non-zero radial outflow \(u_h\) of dark matter or a greater \(\mu\) such that core density becomes flatter. This effect should be greater in smaller haloes due to smaller exponent m. Haloes should also be large enough for sufficient fraction of baryons converted into stars to allow feedback. Density cores are only developed in a certain range mass of haloes (\(10^{10}\) to \(10^{11} M_{\odot }\)), as confirmed by cosmological simulations57 (Fig. S1).
Finally, since \(u_h(x=0)\equiv 0\), there exists an asymptotic slope \(\gamma\) at \(x=0\) that is dependent on the local gradient of \(u_h\) around \(x=0\). Therefore, a better density profile can be proposed58
Here \(\rho _0\) and \(\alpha\) are density and shape parameters and slope \(\gamma <0\).
Testing − 4/3 law against rotation curves
Next, the predicted four-thirds law in Eq. (7) \(\bigg (\rho _r(r_s) \propto r_s^{-4/3}\bigg )\) is tested against galaxy rotation curves that contain important information for dark matter haloes. In practice, rotational curves can be first decomposed into contributions from different mass components. Model parameters for halo density (scale radius \(r_s\) and density scale \(\rho _0\)) are obtained by fitting to the decomposed rotation curve. In this work, we use three sources of galaxy rotation curves,
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1.
SPARC (Spitzer Photometry & Accurate Rotation Curves) including 175 late-type galaxies59,60.
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2.
DMS (DiskMass Survey) including 30 spiral galaxies61.
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3.
SOFUE (compiled by Sofue) with 43 galaxies62.
The mass modeling of galaxies is always challenging because of the uncertainties in the stellar mass-to-light ratio \(\upgamma\). Both the DiskMass Survey (DMS) and Stellar population synthesis models (SPS) suggest an almost constant \(\upgamma\) in the near-infrared band for galaxies of different masses and morphologies59. Wang and Chen removed the SPARC galaxies that have a bulge component to improve the fitting quality because of different mass-to-light ratio between the bulge and the disk63. For SPARC sample used in this work, 32 galaxies with significant bulges adopt \(\upgamma _{bul}\) = 1.4 \(\upgamma _{disk}\) as suggested by SPS models.
For pseudo-isothermal (pISO) and NFW density, we have
where \(\rho _0\) is a density parameter. From Eq. (9), halo density at \(r_s\) is
where \(\bar{\rho }_h\) is the mean halo density. In this work, \(\Delta _c=200\) and critical density \(\rho _{crit}=3H_0^2/8\pi G=10^{-26}\,{\text {kg/m}}^3\). Using Eqs. (20) and (21), concentration c can be obtained from fitted model parameter \(\rho _0\). The mean density within \(r_s\) (density scale \(\rho _s\)) now reads
Figure 6 presents the variation of typical density \(\rho _s\) with scale \(r_s\) obtained from three different sources of galaxy rotation curves. Strong correlation exists between core density and scale radius with a Pearson correlation coefficient of − 0.91. The four-thirds law (Eq. 7) is also plotted for comparison with coefficients \(\beta _r = 1.26\) and \(\alpha _r = 5.28\) obtained from these data. The black dash line shows the least-square fit to data from all 248 galaxies with the best slope of − 1.36 \(\pm \,0.05\) that is very close to − 4/3. The R-square value (the percentage of data variation that can be explained by model) of the fit is 0.82 with root-mean-square scatter of all data around 0.3dex. Previous studies for the scaling between halo central density and core radius have different slopes for different model fits. A constant surface density (\(\rho _s r_s\) = const or \(\rho _s \propto r_s^{-1.04}\)) was first noticed from 55 rotation curves of spiral galaxies64 for isothermal (ISO) fits. While slope becomes − 1.20 for pseudo-isothermal (pISO) fits in the same study. Spano et al. also found a slope of − 0.93 for ISO fits and − 1.0 for NFW fits based on the data from 36 spiral galaxies with central density across three orders65. Some studies also suggest a non-constant surface density (\(\rho _s r_s\ne\)const). Examples are the slope of − 266 based on 40 spiral galaxies with core density across three orders. A slope of − 1.46 was also found in galaxy cluster67 that is close to this work.
In this work, we proposed a possible theory for the existence of such scaling laws. Dark matter haloes obtained from rotation curves follow the predicted four-thirds law across 6 orders in both size and density. Equivalently, the inner limiting density \(\rho _h \propto r^{-4/3}\) for virialized haloes with a vanishing radial flow is also confirmed by this plot using Eq. (17). This plot also confirms the existence of a constant rate of cascade \(\varepsilon _u\) below the largest scale \(r_l\). Other relevant quantities (density, pressure, energy etc.) on scale \(r_l\) are similarly determined by constants \(\varepsilon _u\), G, and \(u_0\)68.
Finally, we can choose the circular velocity at \(r_s\) as the typical velocity \(v_s=\sqrt{Gm_r(r_s)/r_s}\) such that \(-\varepsilon _u=v_s^3/(\gamma _s r_s)\) (from Eq. 7). Figure 7 presents the rate of energy cascade \(\varepsilon _u\) obtained from three sources of galaxy rotation curves with \(\gamma _s = 6.83\). The dispersion in data might come from the spatial intermittence of energy cascade such that haloes in different local environment may have slightly different \(\varepsilon _u\).
Scales for self-interacting dark matter
To solve the core-cusp problem, the first option is the self-interacting dark matter (SIDM) model, where the cascade theory can be used to determine relevant scales. The cross-section \(\sigma /m\) of self-interaction should introduce additional scales \(r_{\eta }\), \(\rho _{\eta }\), and \(m_\eta\) (see Fig. 6), beyond which no structure can be formed due to self-interaction. These scales can be obtained by requiring at least one scatter per particle during the typical time \(t_r\), i.e. \(\rho _r (\sigma /{\text {m}}) v_r t_r=1\) in Eq. (7). Combine this with the virial theorem and constant energy cascade in Eq. (6), the limiting length \(r_{\eta }\), density \(\rho _{\eta }\), and mass \(m_{\eta }\) scales are determined by \(\varepsilon _u\), G, and \(\sigma /m\) and shown in Fig. 6 and Eq. (23),
From Eq. (23), the upper limit of cross section can be estimated as,
From galaxy rotation curves with a maximum core density around \(\rho _{\eta } \approx 10^{10} \,M_{sun}/({\text {kpc}})^3\) and \(r_{\eta } \approx 0.04\) kpc (Fig. 6), we can safely estimate the upper limit of \(\sigma /m\le 12\, {\text {cm}}^2/{\text {g}}\) from Eq. (24). High resolution rotation curves for dwarf galaxies should provide more stringent constraints on the cross-section by determining the smallest length scale \(r_{\eta }\). For comparison, the first constraint using colliding galaxy clusters found that \(\sigma /{ {m}}<5\, {\text {cm}}^2/{\text {g}}\)69. Analysis performed on the Bullet Cluster leads to an upper limit of \(\sigma /m<4\,{\text {cm}}^2/{\text {g}}\) from MACS J0025.4-122270 and \(\sigma /{\text {m}}<7\,{\text {cm}}^2/{\text {g}}\) from DLSCL J0916.2+295171. More stringent constraint was also obtained from Bullet Clusters 1E 0657-56 with \(\sigma /{\text {m}}<2\,{\text {cm}}^2/{\text {g}}\)72.
In addition, due to self-interaction, dark matter halo should have an isothermal core with a maximum core size \(r_{cmax}\) by requiring at least one scatter during the age of haloes (\(t_{age}\approx 1/H_0\)), i.e. \(\rho _r (\sigma /{{m}}) v_r t_{age}=1\) such that (using Eq. 7)
For cross-section \(\sigma /{ {m}}=0.01\,{\text {m}}^2/{\text {kg}}=0.1\,{\text {cm}}^2/{\text {g}}\) used in SIDM cosmological simulations32, halo core size is between \(r_{\eta }\) and the maximum core size \(r_{cmax} \approx 1\,{\text {kpc}}\). In other words, maximum core size \(r_{cmax}\) formed from self-interaction (not any other mechanisms) can be used to identify the cross-section of postulated self-interaction.
In hydrodynamic turbulence, the smallest length scale \(\eta =(\nu ^3/\varepsilon )^{1/4}\)73 is determined by the fluid viscosity \(\nu\) and rate of energy cascade \(\varepsilon\). The kinetic energy is injected at large scale and cascaded down to small scales. Below scale \(\eta\), structures (eddies) are destroyed by viscous force and kinetic energy is dissipated into heat to increase system entropy (Fig. 1). Here \(\varepsilon\) can be a variable manually controlled or adjusted by the rate of energy injection on large scale. For faster mixing, thinking about stirring the coffee–milk fluid harder (the larger \(\varepsilon\)), the scale \(\eta\) would be smaller and mixing would be faster due to greater velocity on that scale. However, for dark matter flow in our universe, inverse (NOT direct) energy cascade is required for structure formation on large scales. The rate of energy cascade \(\varepsilon _u\) is a constant on small scales \(r<r_l\), which should be a fundamental constant for collisionless dark matter. Therefore, for self-interacting dark matter, it should be interesting to identify the smallest and greatest halo core size (\(r_{\eta }\) and \(r_{cmax}\)) to constrain the cross-section using Eqs. (24) and (25).
Scales for collisionless dark matter
Now let’s consider the second option: dark matter is still fully collisionless with flat halo core formed by other possible mechanisms. In this scenario, due to the collisionless nature, the four-thirds law should extend from galaxy scale to the smallest scale where the quantum effect becomes important (Fig. 8). This extension is more than 30 orders in size, which hopefully allows us to predict the mass, size and properties of dark matter particles (the X particle) from three basic constants, i.e. \(\varepsilon _u\), G, and Planck constant \(\hbar\)52. Two examples are the critical mass and length scales,
If this is true, the constant \(\varepsilon _u\) might be an intrinsic property of dark matter with a similar origin as Planck constant \(\hbar\) for two reasons:
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1.
For fully collisionless dark matter, there exists a unique “symmetry” between position and velocity in phase space. At any given location, collisionless particles can have multiple values of velocity (multi-stream regime). Similarly, particles with same velocity can be found at different locations. This “symmetry” in phase space is not possible for any non-relativistic baryonic matter.
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2.
Due to the long-rang gravitational interaction, there exist fluctuations (uncertainty) not only in position (\({\textbf {x}}\)) and velocity (\({\textbf {v}}=\dot{{\textbf {x}}}\)), but also in acceleration (\({\textbf {a}}=\dot{{\textbf {v}}}\))68.
With \(\psi (x)\), \(\varphi (p)\), and \(\mu (a)\) as wave functions for position, momentum, and acceleration, we can write
where constant \(\mu _X=-m_X\varepsilon _u=7.44\times 10^{-22}\,{\text {kg}}\cdot {\text {m}}^2/{\text {s}}^3\). An energy scale \(\sqrt{\hbar \mu _X}\approx 10^{-9}\,{\text {eV}}\) can be obtained for the possible dark radiation due to dark matter annihilation or decay. Here we have two pairs of conjugate variables (i) position x and momentum p, and (ii) momentum p and acceleration a. By following the standard wave mechanics (will not repeat here), two uncertainty principles can be established for fluctuations of position, momentum, and acceleration for collisionless dark matter,
More experiment data might be required to test this postulation.
Conclusions
Smalls scale challenges suggest some missing pieces in our current understanding of dark matter. A cascade theory for dark matter flow might provide extra insights. The energy cascade with a constant rate \(\varepsilon _u\) across different scales is a fundamental feature of dark matter flow. N-body simulation suggests a two-thirds law, i.e. the kinetic energy \(v_r^2 \propto (\varepsilon _u r)^{2/3}\) on scale r. This is equivalent to a four-thirds law for density on the same scale, i.e. \(\rho _r \propto \varepsilon _u^{2/3}G^{-1}r^{-4/3}\), which can be directly confirmed by data from galaxy rotation curves. By identifying key constants on relevant scales, limiting scales for collisionless (determined by \(\varepsilon _u\), G, \(\hbar\)) or self-interacting dark matter (by \(\varepsilon _u\), G, \(\sigma /m\)) might be obtained. On halo scale, based on the continuity equation, halo density is shown to be closely dependent on the radial flow and mass accretion. The asymptotic density slope \(\gamma = -\,4/3\) can be obtained and fully virialized haloes with a vanishing radial flow have a universal density profile. Simulated haloes can have different limiting slopes due to finite radial flow and different rate of mass accretion. The baryonic feedback might enhance the radial flow and flatten the core density. A modified Einasto density profile is proposed accordingly.
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Acknowledgements
This research was supported by Laboratory Directed Research and Development at Pacific Northwest National Laboratory (PNNL). PNNL is a multiprogram national laboratory operated for the U.S. Department of Energy (DOE) by Battelle Memorial Institute under Contract no. DE-AC05-76RL01830.
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Xu, Z. Universal scaling laws and density slopes for dark matter haloes. Sci Rep 13, 4165 (2023). https://doi.org/10.1038/s41598-023-31083-z
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DOI: https://doi.org/10.1038/s41598-023-31083-z
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