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Self-learning salp swarm optimisation based controller design for photovoltaic reverse osmosis plant

机译:基于自学习SALP SALP Swarm优化的光伏反渗透植物控制器设计

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摘要

In this work, a self-learning salp swarm optimisation (SLSSO) based controller design is proposed for a photovoltaic reverse osmosis (RO) desalination unit. The SLSSO algorithm is proposed in order to improve the performance of salp swarm optimisation. The photovoltaic RO model considered is basically an interacting two-input-two-output (TITO) system. The interacting TITO system is first converted into two non-interacting sub-systems by designing an appropriate decoupler. Then, two proportional-integral-derivative (PID) controllers are designed by minimising the integral-of-squared-error (ISE) of respective non-interacting sub-system. The ISE is designed in terms of alpha and beta parameters for ease of simulation. The designed ISE is minimised using the proposed SLSSO algorithm. For showing the efficacy of SLSSO assisted PID controllers, other PID controllers are also obtained using some state-of-art optimisation algorithms. The results prove that SLSSO assisted PID controllers outperform other PID controllers.
机译:在这项工作中,提出了一种自学习SALP群优化(SLSSO)的控制器设计,用于光伏反渗透(RO)海水淡化单元。提出了SLSSO算法,以提高SALP群优化的性能。所考虑的光伏RO模型基本上是一种相互作用的两输入 - 二输出(TITO)系统。首先通过设计适当的解耦器将交互的标准系统转换成两个非交互的子系统。然后,通过最小化各个非交互子系统的积分平方误差(ISE)来设计两个比例积分衍生物(PID)控制器。 ISE以alpha和beta参数而设计,以便于模拟。使用所提出的SLSSO算法最小化设计的ISE。为了显示SLSSO辅助PID控制器的功效,还使用一些最先进的优化算法获得其他PID控制器。结果证明了SLSSO辅助PID控制器优于其他PID控制器。

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