Neural network adaptive real-time optimizing control of industrial processes

N. Abdullah, M. A. Razali, Mohammed H. Othman Ahmed, M. Nuawi, M. Mustafa, Z. Nopiah, A. Mohamed, A. Mohamad
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引用次数: 1

Abstract

Real-time optimization (RTO) has attracted considerable interest among researchers and industries for being able to optimise the plant economics such as product efficiency, product quality and process safety in the wake of increasing global competitions. The success of RTO depends much on the quality of model being used in the optimisation. The present study was carried out to explore the use of artificial neural network (ANN) to improve the quality of the model being used in the modified two step (MTS) technique. The MTS is a real-time optimising control algorithm of the modifier adaptation scheme which is used to determine the optimum steady-state control set-points. The proposed new version of MTS technique will be using process model based on ANN. A laboratory scale process of a two continuous stirred tank heat exchanger in series (2CSTHEs) is used as a case study. The multilayer feed forward ANN architecture 4-10-6 with linear function was used to model the 2CSTHEs and then integrates into the MTS technique, the resulted algorithm will be known as Iterative Neural Network Modified Two Step (INNMTS) technique. Simulation studies were conducted to test the performance of the INNMTS technique on the 2CSTHEs process. The results show that the overall value for the coefficient of determination(R 2 )is equal to one, which indicates adequacy of the model proposed for the prediction of the behavior of 2CSTHEs system. When NN model of 2CSTHEs is applied to the INNMTS technique, the model-plant mismatch is greatly reduced to almost zero, which indicates by significant reduction in the number of iterations to 5which requires by INNMTS compared to 16 iterations by the MTS technique to converge to optimal real solution. Chemical Engineering Research Bulletin 19(2017) 129-138
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工业过程的神经网络自适应实时优化控制
实时优化(RTO)由于能够在日益激烈的全球竞争中优化产品效率、产品质量和过程安全等工厂经济效益,引起了研究人员和行业的极大兴趣。RTO的成功在很大程度上取决于优化中使用的模型的质量。本研究旨在探索使用人工神经网络(ANN)来提高修正两步(MTS)技术中使用的模型的质量。MTS是一种修正自适应方案的实时优化控制算法,用于确定最优稳态控制设定点。新版本的MTS技术将采用基于人工神经网络的过程模型。以实验室规模的双连续搅拌槽串联换热器(2CSTHEs)工艺为例进行了研究。采用线性函数的4-10-6多层前馈神经网络结构对2cscs进行建模,并将其与MTS技术相结合,得到的算法称为迭代神经网络修正两步(INNMTS)技术。通过仿真研究,测试了INNMTS技术在2CSTHEs工艺上的性能。结果表明,决定系数(r2)的总体值为1,表明所提出的2CSTHEs系统行为预测模型的充分性。当将2c塞斯的神经网络模型应用于INNMTS技术时,模型-植物不匹配大大减少到几乎为零,这表明与MTS技术的16次迭代收敛到最优实解所需的迭代次数相比,INNMTS技术的迭代次数显著减少到5次。化工研究通报19(2017)129-138
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