C. elegans chemotaxis inspired neuromorphic circuit for contour tracking and obstacle avoidance

Shibani Santurkar, B. Rajendran
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引用次数: 9

Abstract

We demonstrate a spiking neural network for navigation motivated by the chemotaxis circuit of Caenorhabditis elegans. Our network uses information regarding temporal gradients in intensity of local variables such as chemical concentration, temperature, radiation, etc., to make navigational decisions for contour tracking and obstacle avoidance. The gradient information is determined by mimicking the underlying mechanisms of the ASE neurons of C. elegans. Simulations show that our software-worm is able to identify the set-point with 92% efficiency, 68.5% higher than an optimal memoryless Lévy foraging strategy and 33% higher than an equivalent non-spiking neural network configuration. The software-worm is able to track the set-point with an average deviation of 1% from the set-point, and this performance degrades merely by 1.8% in the presence of intense salt and pepper noise in the local tracking variable. We also develop a VLSI implementation for the main gradient detector neurons, which could be integrated with standard comparator circuitry to develop robust circuits for navigation and contour tracking. We demonstrate noise-resilience of our network to environmental, architectural and circuit noise.
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秀丽隐杆线虫的趋化性启发了轮廓跟踪和避障的神经形态回路
我们展示了一个由秀丽隐杆线虫趋化性回路驱动的导航尖峰神经网络。我们的网络利用局部变量(如化学浓度、温度、辐射等)强度的时间梯度信息,为轮廓跟踪和避障做出导航决策。梯度信息是通过模拟秀丽隐杆线虫ASE神经元的潜在机制来确定的。仿真结果表明,该软件蠕虫能够以92%的效率识别设定点,比最优无内存lsamry觅食策略高68.5%,比等效的无峰值神经网络配置高33%。软件蠕虫能够以与设定点1%的平均偏差跟踪设定点,并且在局部跟踪变量中存在强烈的盐和胡椒噪声时,该性能仅下降1.8%。我们还开发了一个用于主要梯度检测器神经元的VLSI实现,它可以与标准比较器电路集成,以开发用于导航和轮廓跟踪的鲁棒电路。我们展示了我们的网络对环境、建筑和电路噪声的抗噪声能力。
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