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An Analytical Comparison of Locally-Connected Reconfigurable Neural Network Architectures Using a C. elegans Locomotive Model

机译:使用秀丽隐杆线虫机车模型的本地连接可重构神经网络体系结构的分析比较

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摘要

The scale of modern neural networks is growing rapidly, with direct hardware implementations providing significant speed and energy improvements over their software counterparts. However, these hardware implementations frequently assume global connectivity between neurons and thus suffer from communication bottlenecks. Such issues are not found in biological neural networks. It should therefore be possible to develop new architectures to reduce the dependence on global communications by considering the connectivity of biological networks. This paper introduces two reconfigurable locally-connected architectures for implementing biologically inspired neural networks in real time. Both proposed architectures are validated using the segmented locomotive model of the C. elegans , performing a demonstration of forwards, backwards serpentine motion and coiling behaviours. Local connectivity is discovered to offer up to a 17.5× speed improvement over hybrid systems that use combinations of local and global infrastructure. Furthermore, the concept of locality of connections is considered in more detail, highlighting the importance of dimensionality when designing neuromorphic architectures. Convolutional Neural Networks are shown to map poorly to locally connected architectures despite their apparent local structure, and both the locality and dimensionality of new neural processing systems is demonstrated as a critical component for matching the function and efficiency seen in biological networks.
机译:现代神经网络的规模正在迅速增长,直接的硬件实现比其软件同类提供了显着的速度和能源改进。但是,这些硬件实现经常假设神经元之间具有全局连接性,因此存在通信瓶颈。在生物神经网络中未发现此类问题。因此,应该有可能通过考虑生物网络的连通性来开发新的体系结构,以减少对全球通信的依赖。本文介绍了两种可重新配置的本地连接体系结构,用于实时实现受生物启发的神经网络。两种拟议的体系结构均使用线虫的分段机车模型进行了验证,演示了向前,向后的蛇形运动和盘绕行为。与使用本地和全球基础结构的组合的混合系统相比,发现本地连接可将速度提高17.5倍。此外,更详细地考虑了连接局部性的概念,突出了在设计神经形态结构时维数的重要性。尽管显示了卷积神经网络明显的局部结构,但它们仍无法很好地映射到本地连接的体系结构,新神经处理系统的局部性和维数都被证明是与生物网络中的功能和效率相匹配的关键组件。

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