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A novel nonlinear model predictive control design based on a hybrid particle swarm optimization-sequential quadratic programming algorithm: application to an evaporator system

机译:基于混合粒子群优化-序列二次规划算法的新型非线性模型预测控制设计:在蒸发器中的应用

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摘要

This paper proposes a hybrid algorithm by combining particle swarm optimization (PSO) with sequential quadratic programming (SQP) to handle the optimization part of the nonlinear model predictive control (NMPC). In the proposed method, a nonlinear model of the plant is directly applied to predict the future behaviour of the system for a certain horizon. In each sampling time a constrained nonlinear optimization (CNO) problem has to be solved in order to find the optimizing input sequence with predefined length. These solutions minimize the errors between the predicted states and the desired ones of the system. Only the first optimizing input is applied to the system and the rest of the sequence is discarded. The whole prediction and optimization must be repeated for the next upcoming steps. The evolutionary and heuristic PSO algorithm in cooperation with the powerful local minimizing SQP algorithm can quickly find these optimizing solutions and also can satisfy the constrains. The evaporation process due to its nonlinear dynamics and the existence of disturbances affecting the evaporator is considered to evaluate the performance of the proposed method. The simulation results show that the controller designed via the proposed approach can make the system track the reference commands and satisfy the restrictions properly. Moreover, based on the simulation results it can be seen that this approach is more efficient in comparison with the NMPC method, in which only the SQP algorithm has been utilized for optimization, and also the linear model predictive control method.
机译:本文提出了一种混合算法,将粒子群优化(PSO)与顺序二次规划(SQP)相结合,以处理非线性模型预测控制(NMPC)的优化部分。在所提出的方法中,直接将工厂的非线性模型应用于在特定范围内预测系统的未来行为。在每个采样时间中,必须解决约束非线性优化(CNO)问题,以便找到具有预定长度的优化输入序列。这些解决方案使预测状态与系统所需状态之间的误差最小化。仅将第一个优化输入应用于系统,而其余序列将被丢弃。必须为接下来的后续步骤重复整个预测和优化。进化启发式PSO算法与强大的局部最小化SQP算法配合使用,可以快速找到这些优化解决方案,并满足约束条件。考虑其蒸发过程的非线性动力学特性和影响蒸发器的干扰因素,以评价该方法的性能。仿真结果表明,该方法设计的控制器可以使系统跟踪参考命令,并适当满足约束条件。此外,根据仿真结果可以看出,与仅使用SQP算法进行优化的NMPC方法以及线性模型预测控制方法相比,该方法更为有效。

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