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Particle swarm optimization based fuzzy gain scheduled subspace predictive control

机译:基于粒子群算法的模糊增益调度子空间预测控制

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The key feature of data-driven Subspace Predictive Control (SPC) is its capability in on-line and automatically adaptation of SPC gains with no need to obtain the explicit model of the system. This feature makes SPC suitable to control nonlinear and time-varying systems. However, in conventional SPC persistently excitation (PE) signals are required to update the SPC gains in the presence of system variations. This procedure demands high computational load and has convergency issues. In this paper we propose a new approach to eliminate the requirement of applying PE signals without degrading the SPC performance. This can be done by using Particle Swarm Optimization (PSO) based Fuzzy Gain Scheduling (FGS) method to optimally update the SPC gains directly with no need to apply PE signals. The method is denoted by PSO-based FGS-SPC. In PSO-based FGS-SPC the SPC gains are optimally adapted by utilizing and evaluating auxiliary scheduling variables, which are correlated with the changes in system dynamics, as soon as a changes are observed in system dynamics without applying PE signals. Eliminating the PE in our proposed method reduces the computational load drastically. Moreover, in PSO-based FGS-SPC, the controller gain ranges (CGRs) of FGS technique are optimally auto-tuned by minimizing the SPC cost function via the PSO algorithm. As a result, the difficulty in finding the CGRs in FGS procedure for inverting the normalized gains is overcome by applying PSO technique on FGS. Consequently, the PSO-based FGS-SPC shows more efficient controlling performance than the SPC by optimally adapting the SPC gains. In addition, PSO-based FGS-SPC shows fast convergence capability and time efficiency over the SPC. Simulation results confirm efficiency and robustness of the method in the presence of constraints and noisy data.
机译:数据驱动子空间预测控制(SPC)的关键功能是其在线自动适应SPC增益的能力,而无需获取系统的显式模型。此功能使SPC适合控制非线性和时变系统。但是,在常规的SPC中,在存在系统变化的情况下,需要持续激励(PE)信号来更新SPC增益。此过程需要较高的计算负荷,并且存在收敛性问题。在本文中,我们提出了一种新方法,以消除在不降低SPC性能的情况下应用PE信号的要求。可以通过使用基于粒子群优化(PSO)的模糊增益调度(FGS)方法直接优化最佳SPC增益,而无需施加PE信号来完成此操作。该方法由基于PSO的FGS-SPC表示。在基于PSO的FGS-SPC中,只要在不施加PE信号的情况下观察到系统动态的变化,就可以通过利用和评估辅助调度变量来最佳地调整SPC增益,这些变量与系统动态的变化相关。在我们提出的方法中消除PE可以大大减少计算量。此外,在基于PSO的FGS-SPC中,通过通过PSO算法最小化SPC成本函数,可以最佳地自动调整FGS技术的控制器增益范围(CGR)。结果,通过在FGS上应用PSO技术克服了在FGS程序中找到CGR以求归一化增益的困难。因此,基于PSO的FGS-SPC通过最佳地调整SPC增益,显示出比SPC更有效的控制性能。此外,基于PSO的FGS-SPC具有比SPC更快的收敛能力和时间效率。仿真结果证实了在存在约束和噪声数据的情况下该方法的效率和鲁棒性。

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