Neuromorphic on-chip reservoir computing with spiking neural network architectures

July 30, 2024 ยท Declared Dead ยท ๐Ÿ› arXiv.org

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Authors Samip Karki, Diego Chavez Arana, Andrew Sornborger, Francesco Caravelli arXiv ID 2407.20547 Category cs.NE: Neural & Evolutionary Cross-listed cs.ET, cs.LG Citations 2 Venue arXiv.org Last Checked 4 months ago
Abstract
Reservoir computing is a promising approach for harnessing the computational power of recurrent neural networks while dramatically simplifying training. This paper investigates the application of integrate-and-fire neurons within reservoir computing frameworks for two distinct tasks: capturing chaotic dynamics of the Hรฉnon map and forecasting the Mackey-Glass time series. Integrate-and-fire neurons can be implemented in low-power neuromorphic architectures such as Intel Loihi. We explore the impact of network topologies created through random interactions on the reservoir's performance. Our study reveals task-specific variations in network effectiveness, highlighting the importance of tailored architectures for distinct computational tasks. To identify optimal network configurations, we employ a meta-learning approach combined with simulated annealing. This method efficiently explores the space of possible network structures, identifying architectures that excel in different scenarios. The resulting networks demonstrate a range of behaviors, showcasing how inherent architectural features influence task-specific capabilities. We study the reservoir computing performance using a custom integrate-and-fire code, Intel's Lava neuromorphic computing software framework, and via an on-chip implementation in Loihi. We conclude with an analysis of the energy performance of the Loihi architecture.
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