优化反馈线性化控制的高增益观测器

Nadia Bounouara, Mouna Ghanai, Kheireddine Chafaa
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引用次数: 0

摘要

本文针对输出为时间采样的机器人操纵器,提出了一种使用优化高增益的连续-离散时间观测器。这种方法的主要贡献在于通过使用一些元启发式算法,提高了与成本函数最小值相对应的高增益值。该观测器的特点是通过基于生物地理学的优化(BBO)算法、粒子群优化(PSO)方法和遗传算法(GA)优化最佳高增益。通过这项研究,证明了基于 BBO 算法的优化过程能获得最佳优化结果。BBO 是一种相对较新的受自然启发的优化算法,用于寻找优化问题的最佳和最优值。引入的方法分两步实施。第一步,利用 BBO 算法离线优化高增益。第二步,将获得的最优值在线插入反馈控制环路。建议的优化观测器有两个用途:首先,尽管存在干扰和测量噪声,它仍能确保对物理上不可测量的状态变量进行准确估计;其次,它能确保所考虑系统的稳定性和估计误差的收敛性。本文介绍了针对机器人机械手的模拟实验结果,以证明所提出的观测器优化方案的性能和有效性。
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Optimization of a high gain observer for feedback linearization control
In this paper, a continuous–discrete time observer using an optimized high gain is proposed for a robotic manipulator where the output is time sampled. The main contribution of this approach is to improve the value of the high gain that corresponds to the minimum value of the cost function by using some metaheuristic algorithms. The observer is characterized by an optimal high gain that is optimized by biogeography-based optimization (BBO) algorithm, particle swarm optimization (PSO) method and genetic algorithms (GA). Through this investigation, it is proven that the best optimization results are obtained through the process based on the BBO algorithm. BBO is a relatively new nature-inspired optimization algorithm used to find the best and optimal value for an optimization problem. The introduced method is implemented in two steps. In the first step the high gain is optimized in an off-line way by the BBO algorithm. In the second step, the obtained optimal value is inserted on-line in a feedback control loop. The suggested optimized observer is used for two purposes: first it ensures an accurate estimation of state variables that are not physically measurable; despite the presence of disturbances and measurement noises; second it guarantees a stability of the considered system and the convergence of the estimation error. Results of simulated experimentations for robot manipulators are presented in order to demonstrate the performance and effectiveness of the proposed observer optimization.
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来源期刊
Results in Control and Optimization
Results in Control and Optimization Mathematics-Control and Optimization
CiteScore
3.00
自引率
0.00%
发文量
51
审稿时长
91 days
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