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Multi-objective optimization of remotely operated vehicle control system using surrogate modeling

机译:基于替代模型的远程车辆控制系统多目标优化

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This paper discussed the idea of using surrogate modeling to optimize a multi-objective problem. The proposed method is adopted on PD controllers of a remotely-operated vehicle RRC ROV II designed by the Robotic Research Centre in the Nanyang Technological University (NTU). The main emphasis of this study is to approximate a set of controller parameters from a few sample and search for Pareto front. Through the simulation, Radial Basis Function Neural Network (RBFNN) was able to give a good approximation to the Pareto-front of controller parameters and perform about three times faster compare by using brute-force search approach.
机译:本文讨论了使用代理建模来优化多目标问题的想法。该方法在由南洋理工大学(NTU)机器人研究中心设计的遥控车辆RRC ROV II的PD控制器上采用。这项研究的主要重点是从一些样本中估计一组控制器参数,并搜索Pareto前沿。通过仿真,径向基函数神经网络(RBFNN)能够很好地逼近控制器参数的Pareto前沿,并且通过使用蛮力搜索方法可以将执行速度提高大约三倍。

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