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Nuclear Multifragmentation and Zipf’s Law Wolfgang Bauer Michigan State University Work in collaboration with: Scott Pratt (MSU), Marko Kleine Berkenbusch (Chicago) Brandon Alleman (Hope College) Nuclear Matter Phase Diagram Two (at least) thermodynamic phase transitions in nuclear matter: – “Liquid Gas” – Hadron gasQGP / chiral restoration Problems / Opportunities: – Finite size effects – Is there equilibrium? – Measurement of state variables (r, T, S, p, …) – Migration of nuclear system through phase diagram (expansion, collective flow) Structural Phase Transitions (deformation, spin, pairing, …) Source: NUCLEAR SCIENCE, A Teacher’s Guide to the Nuclear Science Wall Chart, Figure 9-2 – have similar problems & questions – lack macroscopic equivalent 2 History 3 Influence of Sequential Decays Critical fluctuations Blurring due to sequential decays 4 Width of Isotope Distribution, Sequential Decays Predictions for width of isotope distribution are sensitive to isospin term in nuclear EoS Complication: Sequential decay almost totally dominates experimentally observable fragment yields Pratt, WB, Morling, Underhill, PRC 63, 034608 (2001). 5 Isospin: RIA Reaction Physics Exploration of the drip lines below charge Z~40 via projectile fragmentation reactions Determination of the isospin degree of freedom in the nuclear equation of state Astrophysical relevance Review: r-process rp-process B.A. Li, C.M. Ko, WB, Int. J. Mod. Phys. E 7(2), 147 (1998) 6 Cross-Disciplinary Comparison Left: Nuclear Fragmentation Right: Buckyball Fragmentation Histograms: Percolation Models Similarities: – U - shape (b-integration) – Power-law for imf’s (1.3 vs. 2.6) – Binding energy effects provide fine structure Data: Bujak et al., PRC 32, 620 (1985) LeBrun et al., PRL 72, 3965 (1994) Calc.: W.B., PRC 38, 1297 (1988) Cheng et al., PRA 54, 3182 (1996) 7 Buckyball Fragmentation Cheng et al., PRA 54, 3182 (1996) Binding energy of C60: 420 eV 625 MeV Xe35+ 8 ISiS BNL Experiment 10.8 GeV p or p + Au Indiana Silicon Strip Array Experiment performed at AGS accelerator of Brookhaven National Laboratory Vic Viola et al. 9 ISIS Data Analysis •Marko Kleine Berkenbusch •Collaboration w. Viola group Reaction: p, p+Au @AGS Very good statistics (~106 complete events) Philosophy: Don’t deal with energy deposition models, but take this information from experiment! Detector acceptance effects crucial Residue Sizes Residue Excitation Energies – filtered calculations, instead of corrected data Parameter-free calculations 10 Comparison: Data & Theory 2nd Moments Charge Yield Spectrum Very good agreement between theory and data – Filter very important – Sequential decay corrections huge 11 Scaling Analysis Idea (Elliott et al.): If data follow scaling function T Tc N(Z,T ) Z f Z Tc with f(0) = 1 (think “exponential”), then we can use scaling plot to see if data cross the point [0,1] -> critical events Idea works for theory Note: – Critical events present, p>pc – Critical value of pc was corrected for finite size of system M. Kleine Berkenbusch et al., PRL 88, 0022701 (2002) 12 Effects of Detector Acceptance Filter Unfiltered Filtered 13 Scaling of ISIS Data Most important: critical region and explosive events probed in experiment Possibility to narrow window of critical parameters : vertical dispersion : horizontal dispersion – Tc: horizontal shift c2 Analysis to find critical exponents and temperature Result: 0.5 0.1 2.35 0.05 Tc (8.3 0.2) MeV 14 Essential for Scaling of Data: Correction for Sequential Decays 15 The Competition … Work based on Fisher liquid drop model nA q0 A e 1 (A c0 A ) T Same conclusion: Critical point is reached Result: 0.54 0.01 2.18 0.14 Tc (6.7 0.2) MeV J.B. Elliott et al., PRL 88, 042701 (2002) 16 IMF Probability Distributions Moby Dick: IMF: word with ≥ 10 characters Nuclear Physics: IMF: fragment with 20 ≥ Z ≥ 3 System Size is the determining factor in the P(n) distributions 17 Zipf’s Law Back to Linguistics Count number of words in a book (in English) and order the words by their frequency of appearance Find that the most frequent word appears twice as often as next most popular word, three times as often as 3rd most popular, and so on. Astonishing observation! G. K. Zipf, Human Behavior and the Principle of Least Effort (Addisson-Wesley, Cambridge, MA, 1949) 18 English Word Frequency 201 181 161 1 fn n 141 f1 1.4 fn 121 101 81 61 41 21 1 1 21 41 61 81 101 121 141 161 181 201 n W ord the of and a in to it is was to i for you he be with on that by at Rank 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 British language compound, >4000 texts 2 1 1 1 1 19 1 DJIA-1st Digit 1st digit of DJIA is not uniformly distributed from 1 through 9! Consequence of exponential rise (~6.9% annual average Also psychological effects visible 20 Zipf’s Law in Percolation Sort clusters according to size at critical point Largest cluster is n times bigger than nth largest cluster M. Watanabe, PRE 53 (‘96) 21 Zipf’s Law in Fragmentation Calculation with Lattice Gas Model Fit largest fragments to An = c n- At critical T: crosses 1 New way to detect criticality (?) Y.G. Ma, PRL 83 (‘99) 22 Zipf’s Law: First Attempt N (A,T ) aA f [A (T Tc )] <A1>/<Ar> at Tc : f (0) 1 N (A,Tc ) aA rank, r 23 Zipf’s Law: Probabilities (1) Probability that cluster of size A is the largest one = probability that at least one cluster of size A is present times probability that there are 0 clusters of size >A P1st (A) p1 (A) p0 ( A) [1 p0 (A)] p0 ( A) N(A) = average yield of size A: N(A) = aA- N(>A) = average yield of size A: (V = event size) N( A) V V i A1 i A1 N(i) aA a ( ,1 A) a ( ,1 V ) Normalization constant a from condition: V A N(A) V A1 V a V / A1 V / HV(1 ) A1 24 Zipf’s Law: Probabilities (2) Use Poisson statistics for individual probabilities: N(i) e N (i ) pn (i) n! p0 (i) e N (i ) ; p1 (i) N(i) p0 (i); p2 (i) n 1 2 N(i) p1 (i)... Put it all together: P1st (A) [1 p0 (A)] p0 ( A) [1 e N (A) ] e[a ( ,1 A)a ( ,1V )] Average size of biggest cluster V A1st A P1st (A) A1 (Exact expression!) 25 Zipf’s Law: Probabilities (3) Probability for given A to be 2nd biggest cluster: P2nd (A) p2 (A) p0 ( A) p1 (A) p1 ( A) [1 p0 (A) p1 (A)] p0 ( A) [1 p0 (A)] p1 ( A) Average size of 2nd biggest cluster: V A2nd A P2nd (A) A1 And so on … (recursion relations!) 26 Zipf’s Law: -dependence 20 A1 / An Verdict: Zipf’s Law does not work for multifragmentation, even at the critical point! (but it’s close) Series1 2.00 Series2 2.18 Series3 2.33 Series4 2.50 Series5 2.70 Series6 3.00 Series7 5.00 18 16 14 12 Expectation if Zipf’s Law was exact 10 8 6 4 2 0 1 2 3 4 5 6 7 n Resulting distributions: Zipf Mandelbrot 8 9 10 W.B., Pratt (2005) 27 Human Genome 1-d partitioning problem of gene length distribution on DNA Human DNA consist of 3G base pairs on 46 chromosomes, grouped into codons of length 3 base pairs – Introns form genes – Interspersed by exons; “junk DNA” QuickT i me™ and a T IFF (Uncompressed) decom pressor are needed to see this picture. 28 Computer Hard Drive Genome like a computer hard drive. Memory is like chromosomes. A files analogous to genes. To delete a file, or gene, delete beginning. 29 Recursive Method Number of ways a length A string can split into m pieces with no piece larger than i. i mj N A, m, i N A j, m 1, i A j Probability the lth longest piece has length i A l 1 A m! N A l k i, m l , i 1N A Asmall ik , k , imax Asmall k 0 l 1 k!l k !m l ! Pl , i N A, m, imax 30 Simulation Random numbers are generated to determine where cuts are made. Here length is 300 and number of pieces is 30. 31 Assumption: Relaxed Total Size The number of pieces falls exponentially. i ni Ce From this assumption the average piece size is obtained. 1 i Also, the average size of the longest piece. 2A P i ln i 1 32 Power Law – Percolation Theory Assumes pieces fall according to a power law. na Ca Average length of piece N is: N 1 1 1 C 1 N P N 1 33 Gene Data Alleman, Pratt, WB 2005 Data from Chromosomes 1, 2, 7, 10, 17, and Y. Plotted against Exponential and Power Law models in Green. 34 Summary Scaling analysis (properly corrected for decays and feeding) is useful to extract critical point parameters. “Zipf’s Law” does not work as advertised, but analysis along these lines can dig up useful information on critical exponent , finite size scaling, self-organized criticality Gene length distribution as a 1d partitioning problem is interesting and not solved Research funded by US National Science Foundation Grant PHY-0245009 35