基于遗传算法的实验室直升机非线性辨识与多输入多输出控制

Hanif Tahersima, A. Fatehi
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引用次数: 7

摘要

提出了一种基于遗传算法的实验直升机非线性模型闭环辨识与控制方法。导出的模型具有非线性结构。在对研究对象进行物理建模的基础上,建立了基于系统物理动力学的非线性模型。然而,不需要进行大量的物理实验来估计模型参数。采用遗传算法作为一种非线性优化技术来获取模型参数。因此,采用了建模和识别两种方法的优点。下一步,将得到的非线性模型作为对象的模拟器,通过遗传算法对模型的多输入多输出(MIMO) PID控制器的参数进行调谐。将该控制器应用于实际对象和仿真模型,验证了模型的准确性和控制器的性能。结果表明,所建立的模型能较好地拟合实际系统的行为,基于该模型设计的控制器能较好地控制实际系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nonlinear identification and MIMO control of a laboratory helicopter using genetic algorithm
Closed loop identification of nonlinear model and control of a laboratory helicopter using genetic algorithm is proposed in this paper. The derived model has a nonlinear structure. Using the previous results of the physical modeling of the studied plant, a nonlinear model is considered based on the physical dynamics of the system. However, there is no need to perform numerous physical experiments to estimate the model parameters. Instead, genetic algorithm as a nonlinear optimization technique is used to obtain the parameters of the model. Therefore, the advantage of both modeling and identification methods are employed. In the next step, the parameters of a multi input-multi output (MIMO) PID controller for the derived model will be tuned by GA using the obtained nonlinear model as a simulator of the plant. Applying the controller to both the real plant and the simulation model, the accuracy of the model and the performance of the controller is examined. The results demonstrate that the achieved model accurately fits to the behavior of the real plant and the controller designed based on this model, can control the real system appropriately.
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