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Evolving neural networks for hexapod leg controllers

机译:六足腿控制器的不断发展的神经网络

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The incremental evolution of neural networks to control hexapod robot locomotion can be separated into two main parts: the evolution of leg controllers the cycle action of single legs (leg cycles) and the evolution of the coordination of these individual leg controllers to produce a gait. In this paper, we use a genetic algorithm to do the first of these steps, to evolve the structure of an artificial neural network that produces leg cycles for a hexapod robot. The robot has 12 servo effectors; two per leg to produce horizontal and vertical movement. The servos are controlled by pulses that are provided by the leg's controller. A cycle of these pulses produces a leg cycle. With minimal restrictions on the structure of the neural network, a genetic algorithm was used to evolve in simulation the parameters of neurons and their connections. Neural networks were implemented on a BASIC Stamp II SX microcomputer and found to generate smooth leg cycles on the hexapod robot.
机译:用于控制六足机器人运动的神经网络的增量演化可分为两个主要部分:腿部控制器的演化,单腿的循环动作(腿部循环)以及这些单独的腿部控制器协调产生步态的演化。在本文中,我们使用遗传算法执行这些步骤中的第一步,以发展为六足机器人产生腿部循环的人工神经网络的结构。该机器人具有12个伺服执行器;每条腿两个,以产生水平和垂直运动。伺服器由腿部控制器提供的脉冲控制。这些脉冲的一个周期产生一个支路周期。在对神经网络结构的限制最小的情况下,使用遗传算法在仿真中进化神经元及其连接的参数。在BASIC Stamp II SX微型计算机上实现了神经网络,发现该神经网络可在六足机器人上产生平滑的腿部循环。

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