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Density and temperature of fermions and bosons from quantum fluctuations

Special Section on International Workshop on Nuclear Dynamics in Heavy-Ion Reactions (IWND 2012)

Density and temperature of fermions and bosons from quantum fluctuations

ZHENG Hua
GIULIANI Gianluca
BONASERA Aldo
Nuclear Science and TechniquesVol.24, No.5Article number 050512Published in print 01 Oct 2013
54700

A novel method to determine the density and temperature of a system constituted by fermions and/or bosons is proposed based on quantum fluctuations. For fermions system, the results in the limit where the reached temperature T is small and where there is no constraint for the reached temperature T compared to the Fermi energy εf at a given density ρ are given, respectively. Quadrupole and multiplicity fluctuation relations are derived in terms of T/εf. We compared the two set results in the limit when T is much smaller compared to Fermi energy εf and they are consistent, as expected. The classical limit is also obtained for high temperatures and low densities. For bosons system, quadrupole and multiplicity fluctuations using Landau's theory of fluctuations near the critical point for a Bose-Einstein condensate (BEC) at a given density ρ are derived. As an example, we apply our approach to heavy ion collisions using the Constrained Molecular Dynamics model (CoMD) which includes the fermionic statistics. The multiplicity fluctuation quenching for fermions is found in the model and confirmed by experimental data. To reproduce the available experimental data better, we propose a modification of the collision term in the approach to include the possibility of ααcollisions. The relevant Bose-Einstein factor in the collision term is properly taken into account. This approach increases the yields of bosons relative to fermions closer to data. Boson fluctuations become larger than one as expected.

DensityTemperatureFermionsBosonsQuantum fluctuationsBose-Einstein condensate

1 Introduction

In recent years, the availability of heavy-ion accelerators which provide colliding nuclei from a few MeV/nucleon to GeV/nucleon and new performing 4π detectors, has fueled a field of research loosely referred to as Nuclear Fragmentation. The characteristics of the fragments produced depend on the beam energy and the target-projectile combinations can be externally controlled[1,2,3]. Fragmentation experiments could provide informations about the nuclear matter properties to constrain the equation of state (EOS)[4]. To date a method does not exist to determine the densities and temperatures reached during collisions that takes into account the genuine quantum nature, which has been well known in some other fields[5,6,7], of the system. Long ago, Bauer stressed the crucial influence of Pauli blocking in the momentum distributions of nucleons emitted in heavy ion collisions near the Fermi energy[8]. We have recently proposed a method based on fluctuations estimated from an event-by-event determination of fragments arising after the energetic collision[9,10,11]. A similar approach has also been applied to observe experimentally the quenching of multiplicity fluctuations in a trapped Fermi gas[12,13,14] and the enhancement of multiplicity fluctuations in a trapped Boson gas[15]. We go beyond the method in Refs.[12-15] by including quadrupole fluctuations as well to have a direct measurement of densities and temperatures for subatomic systems where it is difficult to obtain such informations in a direct way. We apply the proposed method to microscopic CoMD approach[16,17,18,19,20,21,22] which includes fermionic statistics. The resulting energy densities and temperatures calculated using protons and neutrons display a rapid increase around 3 MeV temperature which is an indication of a first-order phase transition. This result is confirmed by the rapid increase of the entropy per unit volume in the same temperature region.

Recent experimental data on low density clustering in nuclear collisions and a comparison to microscopic quantum statistical models suggested the possibility that in order to reproduce the data, a Bose condensate is needed[23,24]. We know that light nuclei display an α-cluster structure which could be exemplified by the so-called 'Hoyle’ state in 12C i.e. the first excited state of such a nucleus which decays into 3α’s[25]. The fact that the ground state of nuclei could be made of α clusters could justify their copious production in heavy ion collisions near the Fermi energy. Preliminary experimental results on 40Ca+40Ca performed at the Cyclotron Institute at Texas A&M University show that events with large multiplicity of α-like (i.e. 12C, 16O, etc.) or d-like (i.e. 6Li, 10B, etc.) fragments are found[26]. At the same time these effects raise the natural question whether αclustering and production could be a signature of a BEC[27,28,29]. In fragmentation reactions, CoMD predicts large yields of α clusters, but the experimental yield is largely underestimated[16,17,18,19,20,21,22]. We think the role of bosons in the model has been missed. Therefore, we add the boson correlations in the collision term and the boson yields are largely increased and closer to data. These features should be kept in mind when we discussing a possible BEC in the model.

2 Determining the density and the temperature from fluctuations

A method for measuring the temperature based on momentum quadruple fluctuations of detected particles was proposed in Ref.[30]. A quadruple moment Qxy=px2py2is defined in a direction transverse to the beam axis (z-axis) to minimize non-equilibrium effects[9,10,11]. The average Qxy is zero for a given particle type in the center of mass of the equilibrated emitting source. Its variance is given by the simple formula:

σxy2=d3p(px2py2)2f(p) (1)

where f(p) is the momentum distribution of particles. In Ref.[30] a classical Maxwell-Boltzmann distribution of particles with temperature Tcl was assumed, which gives: σxy2=N¯(2mTcl)2, m is the mass of the fragment, N¯is the average number of particles. In heavy ion collisions, the produced particles do not follow classical statistics because of the quantum nature, the correct distribution function must be used in Eq.(1). Protons (p), neutrons (n), tritium (t), etc., follow the Fermi-Dirac statistics[9,10], while deuterons (d), alphas (α), etc., should follow the Bose-Einstein statistics[11].

For fermions, using a Fermi-Dirac distribution f(p) in Eq.(1), we obtain

σxy2=N¯(2mTcl)2FQC, (2)

where FQC is the quantum correction factor. When T/εf<1 where εf=εf0(ρ/ρ0)2/3=36(ρ/ρ0)2/3MeV is the Fermi energy of the nuclear matter and ρ0=0.16fm3, one can do the low temperature approximation and expand FQC to O(T/εf)4. A detailed derivation can be found in Ref.[9]. At the beginning, we expected that this was sufficient when T/εf<1 is fulfilled. It turns out that higher order terms are needed when T/εf>0.5. Therefore, we parameterized the numerical result of FQC as a function of T/εf, which is indistinguishable from the numerical result. Details can be found in Ref.[10]. We outline the results as:

FQC={435(Tεf)2[1+76π2(Tεf)2+O(Tεf)4],(lowT)0.2(Tεf)1.71+1.(highorder) (3)

In the extreme case T/εf<<1, the quantum correction factor FQC has the similar behavior in low temperature approximation and in the case including the higher order corrections. At high temperature T, FQC for higher order corrections in Eq.(3) converges to unity, where the classical limit is recovered as expected. The momentum quadruple fluctuations in Eq.(2) depend on temperature and density through εf, thus we need more informations in order to be able to determine both quantities.

Within the same framework we can calculate the multiplicity fluctuations of fermions[7,31,32]. Similar to the momentum quadruple fluctuations, the low temperature approximation and including higher order corrections results are derived in Refs.[7,31-32], respectively. Since Eq.(3) is the function of T/εf and in experiments or models one recovers the normalized multiplicity fluctuation (ΔN)2/N¯, we express T/εf as a function of (ΔN)2/N¯ for convenient to use. In the following paper, we will use x to replace (ΔN)2/N¯ to simplify equations. Thus we have

Tεf={23x,(lowT)0.422+0.422(1-x)0.656+0.345x0.12x2.(higher order) (4)

When x<<1, T/εf for higher order corrections becomes 0.635x which recovers to the low temperature approximation result as expected. Once the normalized multiplicity fluctuation of fermions is measured from experimental data or model, one can easily derive the value of T/εf from Eq.(4). Then one can substitute T/εf into Eq.(3) to obtain FQC and solve Eq.(2) for T where momentum quadruple fluctuation can also be measured in experimental data or model. Knowing the T we obtain the Fermi energy from Eq.(4). Then one can derive the density of fermions from εf=36(ρ/ρ0)2/3 MeV. Till now, the scenario for fermions is completed. The multiplicity fluctuation is the first quantity we should investigate when we study the properties of fermions.

For bosons, we need to use Bose-Einstein distribution in Eq.(1). There is difference from fermions. We need to consider the temperature below or above the critical temperature

Tc=3.31(2s+1)2/32mρ2/3 (5)

for a particle of spin s at a given density ρ. We obtain

σxy2=N¯(2mTcl)2BQC(1),(T<Tc) (6) σxy2=N¯(2mTcl)2BQC(z),(T>Tc) (7)

where BQC(z)=g7/2(z)/g3/2(z) is the quantum correction factor for bosons, the gn(z) functions are well studied in the literature and z=eμ/T is the fugacity which depends on the temperature T and the chemical potential μ connecting with Tc. Below the critical temperature BQC(1)=0.4313 and BQC(z) is always less than 1 above the critical temperature, thus the same quadrupole fluctuation implies a higher temperature in a Bose gas than in a classical gas. These features are in contrast to the behavior of fermion systems, for which the temperature is always smaller than the classical limit. The momentum quadrupole fluctuations depend on temperature and density through Tc, Eq.(5), thus we need more information in order to be able to determine both quantities when T>Tc. We stress that Eqs.(6,7) are derived under the assumption of a non-interacting Bose gas. Interactions will change somehow the results. However, from superfluid 4He we know that the experimental critical temperature is not much different from the ideal gas result.

Within the same framework we can calculate the multiplicity fluctuations of boson numerically when T>Tc. When T<Tcthe multiplicity fluctuations are always infinite since the isothermal compressibility diverges for ideal bosons[7,31,32]. This phenomenon is of course not observed in experiments. Therefore, we need to include interactions between bosons (and fermions if present) near the critical point. We use Landau’s phase transition theory near the critical point.

More details of Landau’s phase transition theory can be found in Ref.[11]. We obtain the normalized multiplicity fluctuations for bosons are

x=0.155|t˜|10.155,(T<Tc) (8) x=0.62|t˜|1+1,(T>Tc) (9)

where t˜=(TTc)/Tc is the reduced temperature. For practical purposes, we parameterized BQC(z) functions in Eq.(7) in terms of normalized multiplicity fluctuations x through ν[11]

BQC(z)=0.5764e1.5963|ν|0.6452+1.0077, (10)

where

ν=μT=3.018e2.8018(x1)0.45(x1)0.1142. (11)

Therefore, similar to fermions case, the multiplicity fluctuation of bosons is the first quantity to investigate. When T>Tc, one can use Eqs.(7,10,11) to calculate the temperature T and then use Eq.(9) to calculate the critical temperature Tc. It is straight forward to calculate the density of bosons using Eq.(5). When T<Tc, one can use Eqs.(5,6,8) to calculate the temperature and density of bosons.

3 Results and discussion

To illustrate the strength of our approach we simulated 40Ca+40Ca heavy ion collisions at fixed impact parameter b=1 fm and beam energies Elab/A ranging from 4 MeV/A up to 100 MeV/A. Collisions were followed up to a maximum time 1000 fm/c in order to accumulate enough statistics. The choice of central collisions was dictated by the desire to obtain full equilibration. This however, did not occur especially at the highest beam energies due to a partial transparency for some events. For this reason the quadrupole in the transverse direction, Eq.(1), was chosen. Furthermore, in order to correct for collective effects as much as possible, we defined a 'thermal’ energy, eg. for proton, as:

EthA=EcmA[EpN¯p32EpxyN¯p]Qvalue, (12)

where Ep/N¯p and Epxy/N¯p are the average total and transverse kinetic energies (per particle) of protons. Qvalue=8N¯p/Z, 8 MeV is the average binding energy of a nucleon and Z the total charge of the system and N¯p the average number of protons emitted at each beam energy. For the other particles, we use the same definition to calculate the thermal energies. For a completely equilibrated system, the transverse kinetic energy (times 3/2) is equal to the total kinetic energy and the term in the square brackets cancels. All the center of mass energy, Ecm/A, is converted into thermal energy (plus the Qvalue). In the opposite case, say an almost complete transparency of the collision, the transverse energy would be negligible and the resulting thermal energy would be small. Our approximation will account for some corrections, and this will become more and more exact when many fragment types are included in Eq.(12). However, this approximation might be important in experiments where only some fragment types are detected or if, because of the time evolution of the system, different particles are sensitive to different excitation energies, for instance if some particles are produced early or late in the collision.

Fig.1
Normalized multiplicity fluctuation versus excitation energy per particle. (Top panel) CoMD results for d and α particles. (Bottom panel) CoMD results for p, n, t and 3He. Notice the change of scales in the two panels.
pic

In Fig.1, we show the normalized multiplicity fluctuations of particles from CoMD. The multiplicity fluctuations quenching for fermions are observed, analogous to Refs.[12-14]. Recently, Stein et al. looked at his experimental data, the similar multiplicity fluctuations quenching for fermions are found. More details can be found in Ref.[33]. These results are also confirmed in Mabiala's experimental data Ref.[34]. Since the multiplicity fluctuations are obtained, we can use Eqs.(2-4) to extract the temperature and density of the system. Meanwhile, in the same frame, it is straightforward to derive other thermodynamical quantities. One such quantity is the entropy S. Details can be found in Ref.[11].

To better summarize the results, we plot in Fig.2 the excitation energy per particle Eth/A, energy density ε=Eth/Aρ and the entropy density Σ=S/Aρversus temperature. The so called caloric curve is well studied in the literature and it shows a

well-defined mass dependence. In Fig.2 we report the experimental data (open symbols) from Ref.[35], obtained in the mass region A=60–100, which is the closest to our system. Recall that the experimental values of the temperature were obtained using classical approximations, thus it is no surprise that they agree well with our classical results (open star). The classical calculation clearly shows a region of constant temperature (less than 6 MeV) which would indicate a phase transition. However, notice that the density is changing with changing temperature. For this reason one might wonder on the physical meaning of the caloric curve and it could be better to investigate the energy density (middle panel). A rapid variation of the energy density is observed around 2 MeV for neutrons and 3 MeV for protons which indicates a first-order phase transition. As we can see from the figure, the higher order correction results give small corrections while keeping intact the relevant features obtained in the lowest approximation. This again suggests that in the simulations the system is fully quantal. We also notice that Coulomb effects become negligible at T>>3MeV where the phase transition occurs. The smaller role of the Coulomb field in the phase transition has recently been discussed experimentally in the framework of Landau's description of phase transitions[37,38,39]. The rapid increase of the entropy per unit volume (bottom panel) is due to the sudden increase of the number of degrees of freedom (fragments) with increasing T.

Comparing the charge particle distribution with the experimental data shows that we cannot reproduce the experimental data completely. This is not surprising since we only have one fixed impact parameter in the model while the experimental data includes all the possible impact parameters. The experimental filter should be taken into account as well, but these features are not relevant to our goals. The important point is that the α yield is underestimated, a feature which cannot be corrected by including other impact parameters or the experimental filter. The important ingredient which is missing in the model is the possibility of boson-boson collisions (α–α, d–d, etc.) and correlations. Therefore, we propose a modification of the collision term in CoMD to include the possibility of α–α collisions. We refer to the modified version as CoMDα. We use Minimum Spanning Tree method (MST) to identify α particle at each time step, same as the cluster identification in CoMD. First one particle is chosen, then the three closest particles with the correct values of spin and isospin (i.e. two protons and two neutrons with opposite spin, respectively) are selected within the radius of 2.4σr (the value used in the cluster identification) in coordinate space. If all the conditions are fulfilled, we identify the four particles as α. We run over all the particles and determine all the possible α particles. Each particle can belong only to one α. At each time step, we search for α–α pair whose distance is smaller than 2.5 fm. We follow the mean free path method[1,40,41] and define a collision probability for the αα pair:

Ξij=1e1VcEkσΠρ(ri)vijdt, (13)

where σ is the cross section, Π=(1+f¯1)(1+f¯2) is the Bose-Einstein factor and f¯i is the average occupation probability for α, i=1, 2, ρ(ri) is the local density, vij is the relative velocity of the two α particles, dt is the time step and 1Vc/Ek is the Coulomb barrier correction factor where Vc is the Coulomb energy between the two αs and Ek is their relative kinetic energy. For simplicity, we take σ as the α–α geometric cross section in this study. Notice that in such an approximation, the strong resonances which lead to the formation of 8Be are not included. We expect that such resonances will increase the α yields from 8Be decay. However we have not be able to implement this effect in the present model. If an α–α collision occurs, we calculate the Bose-Einstein factor Π before the collision and Π' after the collision. If Π'>Π, the collision will be accepted, otherwise, rejected. Thus, the Bose factors (1+f¯i)increase the probability of collision in contrast to the Pauli blocking factors[1,2]. This will produce fluctuations larger than Poissonian, which is a signature of a BEC. Meanwhile, if the α particle does not suffer any collision in that time step, one of its nucleons can collide with another nucleon subject to Pauli blocking. This might break the α into nucleons. We repeat the same simulations as before using CoMDα.

Fig.2
(Top panel) Excitation energy versus temperature. The full triangles refer to quantum temperatures; the open stars refer to classical temperatures from fluctuations; the open crosses refer to experimental data using double ratio thermometer from Ref.[35] obtained for mass number A=60–100. (Middle panel) Energy density versus temperature. Full symbols refer to the higher order correction results and the open symbols refer to the low temperature approximation results. (Bottom panel) Entropy density versus temperature. The full symbols refer to the results from Ref.[10] and the open symbols refer to the results from particle ratio of the number of d to p(n)[4,36] .
pic
Fig.3
Normalized multiplicity fluctuation versus excitation energy per particle. (Top panel) CoMDα results for d and α particles. (Bottom panel) CoMDα results for p, n, t and 3He. Notice the change of scales in the two panels. The d fluctuations keep increasing at high energies because they are produced from the decay of α excited clusters. Similarly for the large fluctuations observed for p and n.
pic

Similar to Fig.1, we plot the normalized multiplicity fluctuations of particles versus excitation energy per particle in Fig.3. As we can see in the figure, d- and α-normalized fluctuations are generally larger than one (top panel). The multiplicity fluctuations of fermions (bottom panel) are less than one for most of the thermal energies. These results are what we expect. Since we consider the Pauli blocking for fermions and Bose-Einstein factor for bosons, the quantum effects for fermions and bosons should show up through the multiplicity fluctuations even if the system is a mixture of fermions and bosons. When the thermal energy is very high, the normalized fluctuations of fermions are larger than one as well, this suggests that the α particles are so excited to emit nucleons or d which carry the original large fluctuations of the parent. We also notice that the thermal energy of CoMDα in Fig.3 is larger than that of CoMD in Fig.1 with the same beam energy. This simply tells us that we have more thermalization in CoMDα than CoMD because of the large number of collisions in CoMDα, including the αα collisions.

Fig.4
(Top panel) Reduced density versus reduced temperature for bosons assuming T<Tc; (Bottom panel) reduced density versus reduced temperature for bosons assuming T>Tc.
pic

In Fig.4, we plot the reduced densities for d and α versus reduced temperatures assuming the temperature is below the critical temperature (top panel) and the temperature is above the critical temperature (bottom panel). From Fig.4, one can see that below the critical temperature, the α’s densities are too high and unphysical. But the densities of bosons are reasonable assuming the temperature is above critical temperature.

4 Conclusion

In conclusion, we have addressed a general approach for deriving densities and temperatures of fermions or bosons from quantum fluctuations (momentum quadrupole fluctuations and multiplicity fluctuations). For fermions, the higher order corrections results are consistent with the low temperature approximation results at very low temperature. We have shown that for high temperatures and low densities the classical result is recovered as expected. For bosons system, quadrupole and multiplicity fluctuations using Landau's theory of fluctuations near the critical point for a Bose-Einstein condensate (BEC) at a given density ρ are derived. We apply our approach to the simulation data of CoMD which includes the fermionic statistics. The multiplicity fluctuations quenching for fermion particles, due to the quantum nature, are found. These results also are confirmed by recent experimental data investigations. We derived the energy densities and entropy densities at different excitation energies for p and n. Both quantities show a rapid variation in the same temperature region, indicating a possible first-order phase transition. Considering the possibility of boson-boson collisions and correlations is missing in CoMD, the alpha production is underestimated compared to the experimental data. We proposed a modified version of the model, CoMDα, to include the possibility of αα collisions. The relevent Bose-Einstein factor in the collision term is properly taken into account. This approach increases the yields of bosons relative to fermions closer to data. In the framework of CoMDα, we discussed the multiplicity fluctuations for particles and obtained the temperatures and densities for d and α. We suggest that multiplicity fluctuations larger than one for bosons, in contrast to fermions multiplicity fluctuations which are smaller than one, is a signature of a BEC in nuclei.

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