基于FOA GNN的醋酸乙烯酯聚合速率预测

Yang Jing, Zeng Hui, H. Jiangping
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引用次数: 2

摘要

醋酸乙烯酯的聚合速率是聚乙烯醇生产中的一项重要质量指标。但由于不能在线测量,不能有效地控制聚乙烯醇的质量。果蝇优化算法(FOA)是一种新颖的元启发式进化算法,具有可调整参数少、能够实现全局最优等优点。因此,为了提高预测性能,本文提出了一种灰色神经网络预测模式,利用FOA对该灰色神经网络的“白化”参数进行优化。仿真和实验结果表明,结合FOA的灰色神经网络预测模型(FOA_GNN)是一种有效的醋酸乙烯酯聚合速率预测方法,其预测效果优于单一灰色神经网络模型(GNN)、自适应竞争遗传神经网络预测模型(ACGA)和径向基函数神经网络模型(RBF)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vinyl Acetate Polymerization Rate Prediction Based on FOA GNN
The vinyl acetate polymerization rate is an important quality index in the production of polyvinyl alcohol. However, for it can not be measured online, the polyvinyl alcohol quality can not be controlled effectively. As a novel meta-heuristic and evolutional algorithm, the fruit fly optimization algorithm (FOA) has several merits such as having few parameters to be adjusted and able to achieve global optimum. Therefore, to improve the prediction performance, this paper proposes a grey neural network prediction mode that uses FOA to optimize the "whitening" parameters of this grey neural network. Simulation and experimental results show that the grey neural network prediction model combined with FOA (FOA_GNN) is an effective method to predict the vinyl acetate polymerization rate, and it outperforms other alternative methods, namely single the grey neural network model (GNN), the adaptive compete genetic neural network prediction model (ACGA) and radial basic function neural network model (RBF).
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