Design and comparison of particle swarm optimization tuned Kalman filter based linear quadratic Gaussian controller and linear quadratic regulator for surface to air missile guidance system

Girma Kassa Alitasb, Getasew Mekonnen Beyene, Ayodeji Olalekan Salau
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Abstract

The study of missile guidance systems is a well-known nonlinear control engineering area of research. To enhance the control performance of a missle guidance system, several technologies have been proposed in existing works. To resolve the weighting matrix selection issue of a linear quadratic Gaussian (LQG) controller for the surface-to-air missile guidance control system, this study utilizes the particle swarm optimization (PSO) technique. Selecting the best state (Q) and input (R) weighting matrices is a significant difficulty in the design of the LQG controller for real-time applications since it affects the controller's performance and optimality. The weighting matrices are often chosen by a trial-and-error method that not only complicates the design but also does not yield optimal outcomes. Therefore, in this paper, a PSO method is developed and used in the design of the linear quadratic regulator (LQR) and LQG controllers for the surface-to-air missile control system to choose the elements of the Q and R matrices in the best possible way. Finally, a comparative analysis between the designed controllers was presented. The results shows that a good performance was achieved by using the proposed PSO-tuned design process. The LQG and LQR are designed by manually adjusting the weighting matrices and utilizing an intelligent procedure, PSO algorithm which achieved optimal results. Further results indicate that the designed controllers, the PSO tuned LQR and LQG achieved a better performance over the manually adjusted LQR and LQG controllers.

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地对空导弹制导系统中基于粒子群优化调整卡尔曼滤波器的线性二次高斯控制器和线性二次调节器的设计与比较
导弹制导系统研究是一个著名的非线性控制工程研究领域。为了提高导弹制导系统的控制性能,现有研究提出了多种技术。为解决地对空导弹制导控制系统线性二次高斯(LQG)控制器的权重矩阵选择问题,本研究采用了粒子群优化(PSO)技术。选择最佳状态(Q)和输入(R)加权矩阵是实时应用 LQG 控制器设计中的一大难题,因为它会影响控制器的性能和最优性。权重矩阵的选择通常采用试错法,不仅使设计复杂化,而且无法获得最佳结果。因此,本文开发了一种 PSO 方法,并将其用于地对空导弹控制系统的线性二次调节器(LQR)和 LQG 控制器的设计,以最佳方式选择 Q 和 R 矩阵的元素。最后,对所设计的控制器进行了对比分析。结果表明,使用所提出的 PSO 调整设计过程实现了良好的性能。LQG 和 LQR 的设计是通过手动调整加权矩阵,并利用智能程序 PSO 算法来实现最优结果的。进一步的结果表明,与手动调整的 LQR 和 LQG 控制器相比,经过 PSO 调整的 LQR 和 LQG 控制器的性能更好。
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