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Corrosion Prediction Model of Circulating Water in Refinery Unit Based on PCA-PSO-BP

机译:基于PCA-PSO-BP的炼油厂循环水腐蚀预测模型

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The corrosion of circulating water in oil refinery units is prominent due to water quality problems. The establishment of corrosion prediction model based on long-term monitoring data of circulating water quality is of great significance to control the quality of circulating water and identify its corrosion state. In this paper, a prediction model of circulating water corrosion based on optimized back propagation (BP) neural network is established by using 10 kinds of circulating water quality detection indexes and coupon corrosion rate data of a circulating water field in two years. Firstly, the data collection frequency of each index is unified by downsampling, and the data normalization pretreatment is carried out. Then, principal component analysis (PCA) is used to analyze the original water quality data, and 6 new principal components are obtained as the input data of the prediction model; at the same time, in order to improve the prediction accuracy of the model, the parameters of the neural network are optimized by particle swarm optimization algorithm (PSO). Finally, the PCA-PSO-BP prediction model is established and its prediction mean absolute percentage error is 8.32%, which has a better prediction effect and generalization ability than other models.
机译:由于水质问题,炼油机组中循环水的腐蚀突出。基于循环水质的长期监测数据的腐蚀预测模型的建立具有重要意义,可以控制循环水的质量并确定其腐蚀状态。本文采用了两种循环水域的10种循环水质检测指标和循环水域的循环水质检测指标和优惠券腐蚀速率数据建立了基于优化的回波传播(BP)神经网络的循环水腐蚀预测模型。首先,通过下采样统一每个索引的数据收集频率,并且执行数据归一化预处理。然后,主要成分分析(PCA)用于分析原始水质数据,并获得6个新的主组件作为预测模型的输入数据;同时,为了提高模型的预测准确性,通过粒子群优化算法(PSO)优化神经网络的参数。最后,建立了PCA-PSO-BP预测模型,其预测意味着绝对百分比误差为8.32%,其比其他模型更好的预测效果和泛化能力。

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