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A multiobjective optimization approach for linear quadratic Gaussian/loop transfer recovery design

机译:线性二次高斯/环路转移恢复设计的多目标优化方法

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摘要

This article bestows the linear quadratic Gaussian (LQG)/Loop Transfer Recovery (LTR) optimal controller design for a perturbed linear system having insufficient information about systems states through a multiobjective optimization approach. A Kalman filter observer is required to estimate the unknown states at the output from the noisy data. However, the main downside of the LQG controller's is that its robustness cannot be guaranteed because it consists of linear quadratic regulator (LQR) and Kalman observer, and due to observer incorporation within the LQR framework results in loss of robustness which is undesirable. Therefore, it is necessary to recover the robustness by tuning the controller which further plays havoc with system performance and control effort for certain plants. The present work addresses the investigation of the trade-off between multiobjective indexes (formulated on the basis of robustness, optimal control, and performances) through three multiobjective optimization algorithms as NSGA-II, multiobjective simulated annealing and multiobjective particle swarm optimization. The tuned parameters meet the competitive multiobjective performance indexes that are verified through simulation results. The Pareto front with multiple solutions helps to design a robust controller depending on the weightage given to the respective performance indexes. Simulation results reveal that the proposed multiobjective control strategy helps in recovering the characteristics of LQG/LTR.
机译:本文赋予线性二次高斯(LQG)/环路传输恢复(LTR)最佳控制器设计,用于通过多目标优化方法具有有关系统状态的信息不足的扰动线性系统。需要一个卡尔曼滤波器观察者来估计来自嘈杂数据的输出处的未知状态。然而,LQG控制器的主要缺点是无法保证其鲁棒性,因为它由线性二次调节器(LQR)和卡尔曼观察者组成,并且由于观察者在LQR框架内掺入,导致鲁棒性丧失,这是不希望的。因此,有必要通过调整控制器来恢复鲁棒性,该控制器进一步与某些工厂的系统性能和控制努力发挥作用。本工作解决了通过三种多目标优化算法作为NSGA-II,多目标模拟退火和多目标粒子群优化的三种多目标优化算法来调查调谐参数符合通过仿真结果验证的竞争多目标性能指标。具有多种解决方案的Pareto Front有助于根据对各个性能索引的重量设计鲁棒控制器。仿真结果表明,所提出的多目标控制策略有助于恢复LQG / LTR的特性。

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