基于改进多目标粒子群算法的机械臂PID控制器设计

Juliano Pierezan, H. V. Ayala, L. F. D. Cruz, R. Z. Freire, L. Coelho
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引用次数: 6

摘要

例如,为了在性能、能耗和退化方面提高设备效率,业界已经将PID(比例积分导数)控制系统的使用增加到一个新的基线。该结构调整参数少,易于实际实现。然而,在多变量系统中往往存在一些经典方法无法同时求解的要求。为了解决这一问题,本文探讨了多目标差分进化(MODE)、多目标和谐搜索(MOHS)和多目标粒子群优化(MOPSO)在多变量PID控制器整定中的应用。在此基础上,提出了一种改进的MOPSO算法(I-MOPSO),并将其性能与其他算法进行了比较。为了在控制系统下对其进行验证,将该优化技术应用于一个二自由度机械臂上。最后,对I-MOPSO的成果进行了详细的分析。
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Improved multiobjective particle swarm optimization for designing PID controllers applied to robotic manipulator
In order to improve equipment efficiency in terms of performance, energy consumption and degradation for example, the industry has increased the use of control systems as the PID (proportional-integral-derivative) to a new baseline. This structure has few parameters to adjust and it is easy to implement practically. However, there are some requirements often included on multivariable systems that cannot be solved concurrently by classical methods. To solve this problem, the current paper approaches the application of Multiobjective Differential Evolution (MODE), Multiobjective Harmony Search (MOHS) and Multiobjective Particle Swarm Optimization (MOPSO) on multivariable PID controllers tuning. Moreover, an improved version of MOPSO (I-MOPSO) is proposed and its performance is compared with the other algorithms. In order to validate it under control systems, the optimization technique is applied on a two degree of freedom robotic manipulator. Finally, a detailed analysis is made on the I-MOPSO achievements.
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