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Evolutionary synthesis of dynamic motion and reconfiguration process for a modular robot M-TRAN

机译:模块化机器人M-TRAN的动态运动和重构过程的进化综合

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In this paper we present a couple of evolutionary motion generation methods using genetic algorithms (GA) for self-reconfigurable modular robot M-TRAN and demonstrate their effectiveness through hardware experiments. Using these methods, feasible solutions with sufficient performance can be derived for a motion generation problem with high complexity coming from huge configuration and motion possibilities of the robot. The first method called ERSS (Evolutionary Reconfiguration Sequence Synthesis) applies GA (Genetic Algorithm) to evolution of motion sequence including configuration changes though natural genetic representation. The effectiveness of the generated full-body dynamic motions are verified through hardware experiments. The second method called ALPG (Automatic Locomotion Pattern Generation) Method seeks locomotion pattern using a neural oscillator as a CPG (Central Pattern Generator) model and GA to optimize the parameters for locomotion. A number of efficient locomotion patterns has been derived, which are also experimentally verified.
机译:在本文中,我们介绍了使用遗传算法(GA)进行自重构的模块化机器人M-TRAN的几种进化运动生成方法,并通过硬件实验证明了它们的有效性。使用这些方法,可以针对由于机器人的巨大配置和运动可能性而导致的高复杂度运动产生问题,得出具有足够性能的可行解决方案。第一种称为ERSS(进化重新配置序列综合)的方法将GA(遗传算法)应用于运动序列的进化,包括通过自然遗传表示进行的配置变化。通过硬件实验验证了生成的全身动态运动的有效性。第二种方法称为ALPG(自动运动模式生成)方法,它使用神经振荡器作为CPG(中央模式生成器)模型和GA来寻找运动模式,以优化运动参数。已经推导出了许多有效的运动模式,这些也已通过实验验证。

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