NENCOct 29, 2014

A neural circuit for navigation inspired by C. elegans Chemotaxis

arXiv:1410.7881v13 citations
Originality Incremental advance
AI Analysis

This work addresses navigation challenges for robotics or autonomous systems, but it is incremental as it adapts existing biological models to spiking neural networks.

The paper tackles the problem of contour tracking and navigation by developing an artificial neural circuit inspired by C. elegans chemotaxis, showing that the spiking neural network detects set-points with approximately four times higher probability than an optimal memoryless Levy foraging model and is more efficient and noise-resilient than non-spiking networks.

We develop an artificial neural circuit for contour tracking and navigation inspired by the chemotaxis of the nematode Caenorhabditis elegans. In order to harness the computational advantages spiking neural networks promise over their non-spiking counterparts, we develop a network comprising 7-spiking neurons with non-plastic synapses which we show is extremely robust in tracking a range of concentrations. Our worm uses information regarding local temporal gradients in sodium chloride concentration to decide the instantaneous path for foraging, exploration and tracking. A key neuron pair in the C. elegans chemotaxis network is the ASEL & ASER neuron pair, which capture the gradient of concentration sensed by the worm in their graded membrane potentials. The primary sensory neurons for our network are a pair of artificial spiking neurons that function as gradient detectors whose design is adapted from a computational model of the ASE neuron pair in C. elegans. Simulations show that our worm is able to detect the set-point with approximately four times higher probability than the optimal memoryless Levy foraging model. We also show that our spiking neural network is much more efficient and noise-resilient while navigating and tracking a contour, as compared to an equivalent non-spiking network. We demonstrate that our model is extremely robust to noise and with slight modifications can be used for other practical applications such as obstacle avoidance. Our network model could also be extended for use in three-dimensional contour tracking or obstacle avoidance.

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