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A discrete-event neural network simulator for general neuron models

机译:通用神经元模型的离散事件神经网络模拟器

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Efficient simulation techniques for a discrete-event pulsed neural network simulator are developed. In a discrete-event simulation framework, simulation of complex neural behaviours, such as phase precession and phase arbitration, demands the prediction of delayed firing times. The new technique, the incremental partitioning method, uses linear envelopes of the state variable of a neuron to partition the simulated time so that the delayed-firing time is reliably calculated by applying the bisection-combined Newton-Raphson method to every partition. The quick filtering technique is also proposed for reducing calculation cost of linear envelopes. The simulator developed, PUNNETS, has achieved efficiency and precision, but is still capable of simulating a complex behaviour of large-scale neural network models.
机译:开发了用于离散事件脉冲神经网络模拟器的高效仿真技术。在离散事件仿真框架中,复杂的神经行为(如相位进动和相位仲裁)的仿真要求预测延迟的触发时间。新技术是增量分区方法,它使用神经元状态变量的线性包络线对模拟时间进行分区,从而通过将二等分组合牛顿-拉夫森方法应用于每个分区来可靠地计算延迟点火时间。还提出了快速滤波技术以减少线性包络的计算成本。开发的模拟器PUNNETS已实现了效率和精度,但仍能够模拟大规模神经网络模型的复杂行为。

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