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A New Hybrid BFOA-PSO Optimization Technique for Decoupling and Robust Control of Two-Coupled Distillation Column Process

机译:两联蒸馏塔过程解耦和鲁棒控制的新型混合BFOA-PSO优化技术

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摘要

The two-coupled distillation column process is a physically complicated system in many aspects. Specifically, the nested interrelationship between system inputs and outputs constitutes one of the significant challenges in system control design. Mostly, such a process is to be decoupled into several input/output pairings (loops), so that a single controller can be assigned for each loop. In the frame of this research, the Brain Emotional Learning Based Intelligent Controller (BELBIC) forms the control structure for each decoupled loop. The paper's main objective is to develop a parameterization technique for decoupling and control schemes, which ensures robust control behavior. In this regard, the novel optimization technique Bacterial Swarm Optimization (BSO) is utilized for the minimization of summation of the integral time-weighted squared errors (ITSEs) for all control loops. This optimization technique constitutes a hybrid between two techniques, which are the Particle Swarm and Bacterial Foraging algorithms. According to the simulation results, this hybridized technique ensures low mathematical burdens and high decoupling and control accuracy. Moreover, the behavior analysis of the proposed BELBIC shows a remarkable improvement in the time domain behavior and robustness over the conventional PID controller.
机译:在许多方面,双偶合蒸馏塔工艺是一个物理复杂的系统。具体而言,系统输入和输出之间的嵌套相互关系构成系统控制设计中的重大挑战之一。通常,此过程将被分解为几个输入/输出对(回路),以便可以为每个回路分配一个控制器。在本研究的框架中,基于脑情感学习的智能控制器(BELBIC)形成了每个解耦回路的控制结构。本文的主要目的是开发一种用于解耦和控制方案的参数化技术,以确保鲁棒的控制行为。在这方面,新颖的优化技术细菌群优化(BSO)用于最小化所有控制回路的积分时间加权平方误差(ITSE)的总和。此优化技术构成了两种技术的混合体,即粒子群算法和细菌觅食算法。根据仿真结果,这种混合技术可确保较低的数学负担以及较高的去耦和控制精度。此外,所提出的BELBIC的行为分析表明,与传统的PID控制器相比,时域行为和鲁棒性得到了显着改善。

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