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Real time Multiple Generalized Predictive Control based on a Neuro-fuzzy model

机译:基于神经模糊模型的实时多重广义预测控制

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This paper presents an implementation of Multiple Generalized Predictive Control (MGPC) based a Neuro-fuzzy model to control a real time gaseous nonlinear process. Firstly, a Neuro-fuzzy model, which describes the dynamic characteristics of the process is identified and optimized. Because the consequent part of the identified Neuro-fuzzy model is represented as a form of several Auto-Regressive Exogenous (ARX) sub models, MGPC are then designed based on the ARX sub models to work collaboratively to control the process. To validate the improvement of the proposed control strategy, two real time closed loop tests, referred as set-point tracking and disturbance rejection are investigated. In both tests, the performances of the proposed MGPC are benchmarked to the performances of traditional single GPC, which is designed based on a single ARX model. Results from the comparison show that the MGPC based Neuro-fuzzy model is able to improve the performance of nonlinear control system.
机译:本文提出了一种基于神经模糊模型的多重广义预测控制(MGPC)的实现,以控制实时气态非线性过程。首先,确定并优化了描述过程动态特征的神经模糊模型。由于已识别的神经模糊模型的后续部分以几种自回归外生(ARX)子模型的形式表示,因此基于ARX子模型设计了MGPC,以协同工作来控制过程。为了验证所提出的控制策略的改进,研究了两个实时闭环测试,即设定点跟踪和干扰抑制。在这两个测试中,建议的MGPC的性能均以基于单个ARX模型设计的传统单个GPC的性能为基准。比较结果表明,基于MGPC的神经模糊模型能够提高非线性控制系统的性能。

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