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Dynamic modelling and parameter estimation of a hydraulic robot manipulator using a multi-objective genetic algorithm

机译:一种使用多目标遗传算法液压机器人机械手的动态建模与参数估计

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摘要

This article concerns the problem of dynamic modeling and parameter estimation for a seven degree of freedom hydraulic manipulator. The laboratory example is a dual-manipulator mobile robotic platform used for research into nuclear decommissioning. In contrast to earlier control model orientated research using the same machine, the article develops a nonlinear, mechanistic simulation model that can subsequently be used to investigate physically meaningful disturbances. The second contribution is to optimize the parameters of the new model, i.e. to determine reliable estimates of the physical parameters of a complex robotic arm which are not known in advance. To address the nonlinear and non-convex nature of the problem, the research relies on the multi-objectivization of an output error single performance index. The developed algorithm utilises a multi-objective Genetic Algorithm (GA) in order to find a proper solution. The performance of the model and the GA is evaluated using both simulated (i.e. with a known set of ‘true’ parameters) and experimental data. Both simulation and experimental results show that multi-objectivization has improved convergence of the estimated parameters compared to the single objective output error problem formulation. This is achieved by integrating the validation phase inside the algorithm implicitly and exploiting the inherent structure of the multi-objective GA for this specific system identification problem.
机译:本文涉及七次自由式液压机械手的动态建模和参数估计问题。实验室示例是用于研究核退役的双控移动机器人平台。与使用同一台机器的早期控制模型进行对比,制品开发出非线性,机械仿真模型,随后可以用于调查物理有意义的扰动。第二贡献是优化新模型的参数,即确定预先知道的复杂机器人臂的物理参数的可靠估计。为了解决问题的非线性和非凸性质,研究依赖于输出误差单位性能索引的多象化。开发的算法利用多目标遗传算法(GA)以找到适当的解决方案。使用模拟(即,具有已知的“真实”参数)和实验数据来评估模型和GA的性能。仿真和实验结果均表明,与单个物镜输出误差问题配方相比,多象化与估计参数的收敛性改善。这通过将验证阶段集成在算法内隐式和利用该特定系统识别问题的多目标GA的固有结构来实现。

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