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Quantum neural network-based intelligent controller design for CSTR using modified particle swarm optimization algorithm

机译:基于量子神经网络的CSTR智能控制器设计,用于使用修改粒子群优化算法

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摘要

In this paper, a combination of a multi-layer quantum neural network (QNN) with the particle swarm optimization (PSO) algorithm is used with the aim of controlling a continuous stirred-tank reactor (CSTR) system. The CSTR process is highly non-linear and its dynamics are significantly sensitive to system parameter values. Normally, conventional controllers with fixed coefficients are applied to control this kind of system. In highly non-linear systems, having fixed controller coefficients in different operational conditions may decrease the performance of controllers. In the proposed scheme, by using a multi-layer QNN, an adaptive structure is designed for a PI-D controller. In order to train the QNN, the PSO algorithm is employed. With the aim of improving accuracy and convergence speed of the training process, some modifications have been applied to the movement of each particle towards the optimal point. Furthermore, in order to evaluate the performance of the system, the proposed scheme has been applied in various operational situations in the presence of disturbances and set-point change. The efficiency of the proposed control scheme is compared with PID and a perceptron neural network-based controller, and the simulation results endorse that the proposed scheme shows significantly better performance in different operating conditions.
机译:本文使用粒子群优化(PSO)算法的多层量子神经网络(QNN)的组合用于控制连续搅拌罐电抗器(CSTR)系统的目的。 CSTR进程高度非线性,其动态对系统参数值显着敏感。通常,应用具有固定系数的传统控制器来控制这种系统。在高度非线性系统中,在不同操作条件下具有固定控制器系数可能会降低控制器的性能。在所提出的方案中,通过使用多层QNN,设计自适应结构用于PI-D控制器。为了训练QNN,采用PSO算法。随着提高训练过程的准确性和收敛速度的目的,已经将各种修改应用于每个颗粒朝向最佳点的运动。此外,为了评估系统的性能,在存在干扰和设定点变化的情况下,所提出的方案已经应用于各种操作情况。将所提出的控制方案的效率与PID和基于PID的基于PID和一个基于PID的控制器进行比较,并且模拟结果支持所提出的方案在不同的操作条件下表现出明显更好的性能。

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