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Application of a micro-genetic algorithm for gait development on a bio-inspired robotic pectoral fin

机译:微遗传算法在生物启发式机器人胸鳍步态发展中的应用

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Biologically-inspired robotic (biorobotic) platforms have been successfully adapted for engineering use, but it is difficult to extend these platforms' locomotive gaits to meet optimization goals. The gait spaces of biorobotic platforms can be very large, with multiple local optima and intractable numerical models. Further, the time cost of empirical exploration is often prohibitive. Micro-genetic algorithms have been successful in developing inverse kinematics in simulation, optimizing in spaces with numerous local optima, and working quickly to optimize with low numbers of trials, but have not yet been evaluated for online robotic gait development. To address the problem of engineering gait development in a biorobotic space, a micro-genetic algorithm (μGA) is evaluated on a biorobotic pectoral fin platform. The μGA effectively optimizes in the gait space with low time costs, discovering new gaits that optimize thrust force production on the swimming fin. The μGA also reveals parameter tuning strategies for changing propulsive forces. Overall, the μGA framework is shown to be effective at online optimization in a large, complex biorobotic gait space.
机译:受生物启发的机器人(生物机器人)平台已成功地适合工程应用,但是很难扩展这些平台的机车步态以达到优化目标。生物机器人平台的步态空间可能非常大,具有多个局部最优值和棘手的数值模型。此外,经验探索的时间成本通常令人望而却步。微型遗传算法已成功开发了模拟逆运动学,在具有多个局部最优值的空间中进行了优化,并通过少量试验迅速进行了优化,但尚未进行在线机器人步态开发的评估。为了解决生物机器人空间中工程步态发展的问题,在生物机器人胸鳍平台上评估了微遗传算法(μGA)。 μGA有效地优化了步态空间,降低了时间成本,发现了可优化游泳鳍上推力产生的新步态。 μGA还揭示了用于更改推进力的参数调整策略。总体而言,μGA框架在大型复杂的生物机器人步态空间中显示出在线优化的有效效果。

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