Brette R. (2006). Exact simulation of integrate-and-fire models with synaptic conductances. Neural computation. 18 [PubMed]
Brunel N. (2000). Dynamics of sparsely connected networks of excitatory and inhibitory spiking neurons. Journal of computational neuroscience. 8 [PubMed]
Diesmann M, Gewaltig MO. (2002). NEST: An environment for neural systemssimulations Forschung und wisschenschaftliches Rechnen.
Diesmann M, Gewaltig MO, Rotter S, Aertsen AD. (2001). State space analysis of synchronous spiking in cortical neural networks Neurocomputing. 38
Diesmann M, Plesser HE, Morrison A, Hake J, Straube S. (2005). Precise spike timing with exact subthreshold integration in discrete time network simulations Proceedings of the 30th Gottingen Neurobiology Conference. 1
Ferscha A. (1996). Parallel and distributed simulation of discrete event systems Parallel and distributed computing handbook.
Fujimoto RM. (2000). Parallel and distributed simulation systems.
Galassi M, Gough B, Jungman G. (2001). Gnu scientific library: Reference manual.
Golub GH, van_Loan CF. (1996). Matrix computations.
Goodman P et al. (2003). A novel parallel hardware and software solution for a large-scale biologically realistic cortical simulation Tech Rep University of Nevada.
Hammarlund P, Ekeberg O. (1998). Large neural network simulations on multiple hardware platforms. Journal of computational neuroscience. 5 [PubMed]
Hansel D, Mato G, Meunier C, Neltner L. (1998). On numerical simulations of integrate-and-fire neural networks. Neural computation. 10 [PubMed]
Heck A. (2003). Introduction to Maple (3rd ed).
Kim T, Praehofer H, Zeigler B. (2000). Theory of Modeling and Simulation Integrating Discrete Event and Continuous Complex Dynamic Systems (2nd ed).
Lytton WW, Hines ML. (2005). Independent variable time-step integration of individual neurons for network simulations. Neural computation. 17 [PubMed]
Makino T. (2003). A discrete-event neural network simulator for general neuron models Neural Comput App. 11
Marian I, Reilly R, Mackey D. (2002). Efficient event-driven simulation of spiking neural networks Proceedings of the 3rd WSEAS International Conference on Neural Networks and Applications.
Mattia M, Del Giudice P. (2000). Efficient event-driven simulation of large networks of spiking neurons and dynamical synapses. Neural computation. 12 [PubMed]
Morrison A, Mehring C, Geisel T, Aertsen AD, Diesmann M. (2005). Advancing the boundaries of high-connectivity network simulation with distributed computing. Neural computation. 17 [PubMed]
Press WH, Teukolsky SA, Flannery BP, Vellerling WT. (1992). Numerical Recipes In C: The Art Of Scientific Computing.
Reutimann J, Giugliano M, Fusi S. (2003). Event-driven simulation of spiking neurons with stochastic dynamics. Neural computation. 15 [PubMed]
Rochel O, Martinez D. (2003). An event-driven framework for the simulation of networks of spiking neurons Proc. 11th European Symposium on Artificial Neural Networks .
Rotter S, Diesmann M. (1999). Exact digital simulation of time-invariant linear systems with applications to neuronal modeling. Biological cybernetics. 81 [PubMed]
Shelley MJ, Tao L. (2001). Efficient and accurate time-stepping schemes for integrate-and-fire neuronal networks. Journal of computational neuroscience. 11 [PubMed]
Sloot A, Kaandorp JA, Hoekstra G, Overeinder BJ. (1999). Distributed simulation with cellular automata: Architecture and applications SOFSEM 99 LNCS.
Strogatz SH, Mirollo RE. (1990). Synchronization of pulse-coupled biological oscillators. Siam J Appl Math. 6
Tuckwell HC. (1988). Introduction To Theoretical Neurobiology: Vol 1, Linear Cable Theory And Dendritic Structure. 1
Weisstein EW. (1999). CRC concise encyclopedia of mathematics.
Wolfram S. (2003). The mathematica book (5th ed).
Brette R, Goodman DF. (2011). Vectorized algorithms for spiking neural network simulation. Neural computation. 23 [PubMed]
Lytton WW, Omurtag A, Neymotin SA, Hines ML. (2008). Just-in-time connectivity for large spiking networks. Neural computation. 20 [PubMed]
Morrison A, Aertsen A, Diesmann M. (2007). Spike-timing-dependent plasticity in balanced random networks. Neural computation. 19 [PubMed]
Stewart RD, Bair W. (2009). Spiking neural network simulation: numerical integration with the Parker-Sochacki method. Journal of computational neuroscience. 27 [PubMed]
Susi G et al. (2021). FNS allows efficient event-driven spiking neural network simulations based on a neuron model supporting spike latency Scientific reports. 11 [PubMed]
van Elburg RA, van Ooyen A. (2009). Generalization of the event-based Carnevale-Hines integration scheme for integrate-and-fire models. Neural computation. 21 [PubMed]