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BP神经网络在炼油污水回用于循环水系统中腐蚀率的预测
引用本文:顾敏,朱越平,郑堉鑫,张新超.BP神经网络在炼油污水回用于循环水系统中腐蚀率的预测[J].当代化工,2014(11):2358-2361,2365.
作者姓名:顾敏  朱越平  郑堉鑫  张新超
作者单位:1. 江苏科技大学 生物与化学工程学院,江苏 镇江 212000; 广东石油化工学院 环境与生物工程学院,广东 茂名 525000
2. 广东石油化工学院 环境与生物工程学院,广东 茂名,525000
基金项目:广东省科技攻关项目,项目号2011B010100045;茂名市教育部产学研结合项目,项目编号2011B01047。
摘    要:介绍了BP神经网络的构造及基本原理,阐述了利用MATLAB的GUI建立BP模型的方法和步骤,并将其应用于炼油污水回用于循环冷却水系统腐蚀率的预测,建立一个以电导率和p H为输入向量、腐蚀率为输出向量的BP神经网络预测模型。结果表明,采用GUI建立的三层结构的BP神经网络模型,对炼油污水循环冷却水系统的腐蚀率的预测具有较高的预测精度。说明人工神经网络在循环水腐蚀预测中的应用是可行的,具有一定的应用价值。

关 键 词:BP神经网络  图形用户界面  循环水腐蚀  腐蚀率预测

Prediction of the Corrosion Rate of Reused Refinery Wastewater in Circulating Cooling Water System by BP Neural Network
GU Min , ZHU Yue-ping , ZHENG Yu-xin , ZHANG Xin-chao.Prediction of the Corrosion Rate of Reused Refinery Wastewater in Circulating Cooling Water System by BP Neural Network[J].Contemporary Chemical Industry,2014(11):2358-2361,2365.
Authors:GU Min  ZHU Yue-ping  ZHENG Yu-xin  ZHANG Xin-chao
Affiliation:GU Min, ZHU Yue-ping, ZHENG Yu-xin, ZHANG Xin-chao ( 1. School of Biology and Chemical Engineering, Jiangsu University of Science and Technology, Jiangsu Zhenjiang 212000, China 2. School of Environmental and Biological Engineering, Guangdong University of Petrochemical Technology, Guangdong Maoming 525000, China)
Abstract:The structure and principle of Back-Propagation (BP) neural network were introduced. The method and steps for building the BP neural network by the Graph User Interface (GUI) of MATLAB were also discussed. The BP neural network prediction model was established by using conductivity and pH as input vectors and corrosion rate as output vector, and the model was utilized to predict the corrosion rate of refinery wastewater reused as circulating cooling water. The results indicate that the established prediction model with three-layer structure has the higher forecast accuracy to the corrosion rate of circulating water. So application of the artificial neural network in corrosion rate prediction of circulating cooling water is feasible, and also suggested that it has extensive practicability.
Keywords:Back propagation neural network  Graph user interface  Circulating water corrosion  Prediction of corrosion
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