A genetic based reinforcement neurocontroller for dual arm planar robot

S. Banihani, A. Al-Jarrah, S. Mutawe, M. Hayajneh
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Abstract

Dual arm manipulators are becoming widely used in industrial applications, however, their control is much more complicated than their single arm counterparts. In this paper we present a novel genetic algorithm based reinforced neurocontroller for the dual arm system. The new controller does not require any knowledge about the dynamics of the system and can be trained offline. A genetic algorithm search and optimize for the best controller in a population of potential neurocontrollers for the system. The simulation results showed an outstanding performance of the neurocontroller over other conventional control methods, the neurocontroller was robust and able to reject noises and disturbances in the measured output variable. The controller also offers great range of flexibility to system parameter changes as it does not depend on the system dynamics.
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基于遗传的双臂平面机器人强化神经控制器
双臂机械手在工业上的应用越来越广泛,但其控制比单臂机械手复杂得多。本文提出了一种基于遗传算法的双臂强化神经控制器。新的控制器不需要任何关于系统动力学的知识,可以离线训练。遗传算法在潜在的神经控制器群体中搜索和优化系统的最佳控制器。仿真结果表明,该神经控制器具有较好的鲁棒性,能够抑制被测输出变量中的噪声和干扰。该控制器还提供了很大的灵活性,以系统参数的变化,因为它不依赖于系统动力学。
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