2020
DOI: 10.48550/arxiv.2005.10904
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Solving a steady-state PDE using spiking networks and neuromorphic hardware

Abstract: e widely parallel, spiking neural networks of neuromorphic processors can enable computationally powerful formulations. While recent interest has focused on primarily machine learning tasks, the space of appropriate applications is wide and continually expanding. Here, we leverage the parallel and event-driven structure to solve a steady state heat equation using a random walk method.e random walk can be executed fully within a spiking neural network using stochastic neuron behavior, and we provide results fro… Show more

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