Optimal control-based quantum genetic algorithm for a six jointed articulated robotic arm

Q3 Mathematics
Mohamed Salah Dahassa, Nadjet Zioui
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引用次数: 0

Abstract

This paper explores the use of a quantum genetic algorithm (QGA) for finding the best control considering a calculated path for a six-jointed robotic arm. Classical genetic algorithms (GAs) are typically used to solve optimization problems in robot manipulators, however, QGAs bring a consistent advantage in terms of solution quality. In fact, this study uses a QGA simulated on classical hardware to create optimal control law based on a fifth-order polynomial path, aiming to minimize the tracking error of the position. Eventually, it compares positional error and energy consumption used by actuators through its cost function with to the classical methods. The simulation demonstrates that the QGA tends to be better than real-coded and binary-coded genetic algorithms (respectively RCGA and BCGA), especially when it comes to tracking accuracy, energy, and maintaining stability in noisy conditions. This indicates its potential use in real-time robotics applications by exploring quantum algorithms' practical benefits over traditional optimization methods for complex tasks with multiple dimensions in robot systems control.
基于最优控制的六关节机械臂量子遗传算法
本文探讨了使用量子遗传算法(QGA)来寻找考虑计算路径的六关节机械臂的最佳控制。经典遗传算法通常用于求解机器人机械臂的优化问题,但遗传算法在求解质量方面具有一致的优势。实际上,本研究使用在经典硬件上模拟的QGA来创建基于五阶多项式路径的最优控制律,以最小化位置跟踪误差。最后,通过代价函数与经典方法比较了执行器的位置误差和能量消耗。仿真结果表明,QGA比实数编码遗传算法和二进制编码遗传算法(分别为RCGA和BCGA)更好,特别是在跟踪精度、能量和噪声条件下保持稳定性方面。这表明它在实时机器人应用中的潜在用途,通过探索量子算法在机器人系统控制中具有多维复杂任务的传统优化方法的实际优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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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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