Indexes to Volume 64 SUBJECT INDEX

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Indexes to Volume 64 SUBJECT INDEX Indexes to Volume 64 SUBJECT INDEX Mathematical Physics Exact periodic wave solutions to the generalized Nizhnik–Novikov– Veselov equation Yan-ze Peng 159–169 Quantum Mechanics Failure of Kak quantum key distribution protocol Ching-Nung Yang, Su-Hsuan Chu and Bing-Ling Lu 1–4 The Pondicherry interpretation of quantum mechanics: An overview U Mohrhoff 171–185 General Relativity and Cosmology A relativistic core–envelope model on pseudospheroidal space-time Ramesh Tikekar and V O Thomas 5–15 Mean square number fluctuation for a fermion source and its dependence on neutrino mass for the universal cosmic neutrino background Swapnil S Jawkar and Sudhanshu S Jha 17–29 Bianchi Type-IX viscous fluid cosmological model in general relativity Raj Bali and Mahesh Kumar Yadav 187–196 Solar Physics Unusually low-amplitude anisotropic wave-train events of cosmic ray in- tensity during 1981–1994 Rajesh K Mishra and Rekha Agarwal Mishra 197–206 Space Physics Full-wave solution of short impulses in inhomogeneous plasma Orsolya E Ferencz 249–268 Statistical Physics Boltzmann and Einstein: Statistics and dynamics – An unsolved problem E G D Cohen 635–643 Correlated randomness: Some examples of exotic statistical physics H Eugene Stanley 645–660 Sheared solid materials Akira Onuki, Akira Furukawa and Akihiko Minami 661–677 Theoretical approaches to the glass transition in simple liquids Chandan Dasgupta 679–694 Fluctuations and large deviations in non-equilibrium systems B Derrida 695–707 1191 1192 Subject Index Phase transitions, interfacial fluctuations and hidden symmetries for flu- ids near structured walls A O Parry and J M Romero-Enrique 709–725 Phenomenological dynamics: From Navier–Stokes to chiral granular gases T C Lubensky 727–742 Critical Casimir forces and anomalous wetting S Balibar and R Ishiguro 743–755 Some mathematical aspects of the scaling limit of critical two- dimensional systems Wendelin Werner 757–773 New results for virial coefficients of hard spheres in D dimensions Nathan Clisby and Barry M McCoy 775–783 Classical charged fluids at equilibrium near an interface: Exact analytical density profiles and surface tension Fran¸coiseCornu 785–801 Bulk and boundary critical behaviour at Lifshitz points H W Diehl 803–816 Why one needs a functional renormalization group to survive in a disor- dered world Kay J¨org Wiese 817–827 The analytic structure of lattice models – Why can’t we solve most mod- els? Anthony J Guttmann 829–846 Kardar–Parisi–Zhang equation in one dimension and line ensembles Herbert Spohn 847–857 Factorised steady states and condensation transitions in nonequilibrium systems M R Evans 859–869 Nonequilibrium relaxation method – An alternative simulation strategy Nobuyasu Ito 871–880 Wetting and phase separation at surfaces Sanjay Puri and Kurt Binder 881–892 Structure and cluster formation in granular media S Luding 893–902 Control and characterization of spatio-temporal disorder in parametri- cally excited surface waves T Epstein and J Fineberg 903–913 Non-stationary probabilities for the asymmetric exclusion process on a ring V B Priezzhev 915–925 Pattern formations in chaotic spatio-temporal systems Ying Zhang, Shihong Wang, Jinhua Xiao, Hilda A Cerdeira, S Chen and Gang Hu 927–937 Does the flatness of the velocity derivative blow up at a finite Reynolds number? K R Sreenivasan and A Bershadskii 939–945 Intermittency at critical transitions and aging dynamics at the onset of chaos A Robledo 947–956 Where do ions solvate? Yan Levin 957–961 Jamming patterns in a two-dimensional hopper Kiwing To 963–969 The depletion potential in one, two and three dimensions R Roth and P-M K¨onig 971–980 Subject Index 1193 Polymer mixtures in confined geometries: Model systems to explore phase transitions K Binder, M M¨uller, A Cavallo and E V Albano 981–989 Colloidal interactions in two-dimensional nematic emulsions N M Silvestre, P Patr´ıcio and M M Telo Da Gama 991–1000 Local simulation algorithms for Coulombic interactions L Levrel, F Alet, J Rottler and A C Maggs 1001–1010 Knots in polymers Yacov Kantor 1011–1017 Droplet dynamics on patterned substrates A Dupuis and J M Yeomans 1019–1027 Fluctuation-induced forces in and out of equilibrium Ramin Golestanian 1029–1038 Keldysh proximity action for disordered superconductors M V Feigel’man, A I Larkin and M A Skvortsov 1039–1049 Effect of interactions, disorder and magnetic field in the Hubbard model in two dimensions N Trivedi, P J H Denteneer, D Heidarian and R T Scalettar 1051–1061 A new theory of doped manganites exhibiting colossal magnetoresis- tance H R Krishnamurthy 1063–1074 A sigma-model approach to glassy dynamics Claudio Chamon and Leticia F Cugliandolo 1075–1085 Some recent developments in spin glasses A P Young 1087–1096 Models of plastic depinning of driven disordered systems M Cristina Marchetti 1097–1107 Aging, rejuvenation and memory phenomena in spin glasses V Dupuis, F Bert, J-P Bouchaud, J Hamman, F Ladieu, D Parker and E Vincent 1109–1119 Measuring information networks K Sneppen, A Trusina and M Rosvall 1121–1125 Fusion of biological membranes K Katsov, M M¨uller and M Schick 1127–1134 Single-molecule experiments in biophysics: Exploring the thermal be- havior of nonequilibrium small systems F Ritort 1135–1147 Scale-free random graphs and Potts model D-S Lee, K-I Goh, B Kahng and D Kim 1149–1159 Statistical physics, optimization and source coding Riccardo Zecchina 1161–1173 Understanding search trees via statistical physics Satya N Majumdar, David S Dean and P L Krapivsky 1175–1189 Nuclear Physics Nuclear matter equation of state and σ-meson parameters A B Santra and U Lombardo 31–37 1194 Subject Index Cluster emission in superdeformed Sr isotopes in the ground state and formed in heavy-ion reaction K P Santhosh and Antony Joseph 39–46 Adiabatic heavy-ion fusion potentials for fusion at deep sub-barrier en- ergies S V S Sastry, S Kailas, A K Mohanty and A Saxena 47–53 Exploring effective interactions through transition charge density study of 70,72,74,76Ge nuclei A Shukla, P K Raina and P K Rath 207–220 Angular momentum transfer in incomplete fusion B S Tomar, K Surendra Babu, K Sudarshan, R Tripathi and A Goswami 221–227 Atomic and Molecular Physics Scaling of triple differential cross-sections for asymmetric (e, 2e) process on helium isoelectronic ions by fast electrons M K Srivastava 55–66 Collisional excitation of neon-like Ni XIX using the Breit–Pauli R-matrix method Narendra Singh and Man Mohan 129–134 Lasers and Optics Singly-resonant optical parametric oscillator based on KTA crystal S Das, S Gangopadhyay, C Ghosh and G C Bhar 67–74 Time-gated optical imaging through turbid media using stimulated Ra- man scattering: Studies on image contrast K Divakar Rao, H S Patel, B Jain and P K Gupta 229–238 A new approach of binary addition and subtraction by non-linear mate- rial based switching technique Archan Kumar Das, Partha Pratima Das and Sourangshu Mukhopadhyay 239–247 Fluid Dynamics Bifurcation and chaos in simple jerk dynamical systems Vinod Patidar and K K Sud 75–93 Nonlinear Dynamics A perspective on nonlinear dynamics Neelima Gupte, Ramakrishna Ramaswamy and Rajarshi Roy 307–313 Logarithmic scaling in the near-dissipation range of turbulence K R Sreenivasan and A Bershadskii 315–321 Instabilities and transition in boundary layers N Vinod and Rama Govindarajan 323–332 Incompressible turbulence as non-local field theory Mahendra K Verma 333–341 On the dynamical mechanism of cross-over from chaotic to turbulent states G Ananthakrishna 343–352 Statistical methods in nonlinear dynamics K P N Murthy, R Harish and S V M Satyanarayana 353–370 Instantaneous frequencies of a chaotic system C Chandr´eand T Uzer 371–379 Subject Index 1195 Local dimension and finite time prediction in coupled map lattices P Muruganandam and G Francisco 381–387 Fractal differential equations and fractal-time dynamical systems Abhay Parvate and A D Gangal 389–409 q-Deformed nonlinear maps Ramaswamy Jaganathan and Sudeshna Sinha 411–421 The quasi-equilibrium phase of nonlinear chains T R Krishna Mohan and Surajit Sen 423–431 Construction of a reconfigurable dynamic logic cell K Murali, Sudeshna Sinha and William L Ditto 433–441 Homoclinic bifurcation in Chua’s circuit S K Dana, S Chakraborty and G Ananthakrishna 443–454 Synchronization of coupled chaotic dynamics on networks R E Amritkar and Sarika Jalan 455–464 Collective dynamics of delay-coupled limit cycle oscillators Abhijit Sen, Ramana Dodla and George L Johnston 465–482 Complex networks: Dynamics and security Ying-Cheng Lai, Adilson Motter, Takashi Nishikawa, Kwangho Park and Liang Zhao 483–502 Intermittent lag synchronization in a driven system of coupled oscillators Alexander N Pisarchik and Rider Jaimes-Re´ategui 503–511 Dynamical hysteresis and spatial synchronization in coupled non- identical chaotic oscillators Awadhesh Prasad, Leon D Iasemidis, Shivkumar Sabesan and Kostas Tsakalis 513–523 Coupled chaotic oscillators and their relation to a central pattern gener- ator for artificial quadrupeds Horacio Castellini, Efta Yudiarsah, Lilia Romanelli and Hilda A Cerdeira 525–534 Aspects of stochastic resonance in Josephson junction, bimodal maps and coupled map lattice G Ambika, Kamala Menon and K P Harikrishnan 535–542 Observations and modeling of deterministic properties of human heart rate variability J J Zebrowski and R Baranowski 543–552 Death, dynamics and disorder: Terminating reentry in excitable media by dynamically-induced inhomogeneities Johannes Breuer and Sitabhra Sinha 553–562 Evolution of classical projected phase space
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