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Evolving Gaits of a Hexapod Robot by Recurrent Neural Networks With Symbiotic Species-Based Particle Swarm Optimization

机译:基于共生物种粒子群算法的递归神经网络在六足机器人的进化步态

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This paper proposes a new learning approach for evolving dynamic gaits of a hexapod robot. The controller that coordinates the leg movements consists of fully connected recurrent neural networks (FCRNNs). To automate the FCRNN parameter design, a symbiotic species-based particle swarm optimization (SSPSO) algorithm is proposed. There are multiple swarms in the SSPSO, where a swarm only optimizes the relevant parameters to a single node. The number of swarms is equal to the number of nodes in an FCRNN. The symbiotic behavior of particles from different swarms corresponds to the symbiotic structure of different nodes in an FCRNN. For a particle update, particles in different swarms update independently using a local version of particle swarm optimization (PSO) based on speciation. In each swarm, species are formed adaptively in each iteration according to both particle distance and performance. The design of FCRNNs using the SSPSO for temporal sequence generation and hexapod robot dynamic gait evolution for forward movement is conducted. For the latter, a multiple-FCRNN controller is first designed using a simulated hexapod robot. The designed controller is then successfully applied to a real hexapod robot gait control. The SSPSO is compared with the genetic algorithm and different PSO algorithms to verify its efficiency and effectiveness.
机译:本文提出了一种发展六足机器人动态步态的新学习方法。协调腿部运动的控制器由完全连接的递归神经网络(FCRNN)组成。为了使FCRNN参数设计自动化,提出了一种基于共生物种的粒子群优化(SSPSO)算法。 SSPSO中有多个群集,其中群集仅将相关参数优化到单个节点。群的数量等于FCRNN中的节点数量。来自不同群的粒子的共生行为对应于FCRNN中不同节点的共生结构。对于粒子更新,不同粒子群中的粒子使用基于物种的局部版本的粒子群优化(PSO)独立更新。在每个群中,根据粒子距离和性能,在每次迭代中自适应地形成物种。使用SSPSO进行FCRNN的设计,以进行时间序列生成,并利用六脚机器人动态步态进行向前运动。对于后者,首先使用模拟六足机器人设计多FCRNN控制器。然后,将设计好的控制器成功应用于实际的六足机器人步态控制。将SSPSO与遗传算法和不同的PSO算法进行比较,以验证其效率和有效性。

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