改进小波神经网络在MBR磁通预测中的应用

Guoshuai Cai, Chunqing Li
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引用次数: 1

摘要

膜生物反应器(MBR)技术在现代污水处理中发挥着重要作用,但膜污染严重影响了MBR技术的性能。一般情况下,膜污染的结果是MBR膜通量下降,膜通量的降低直接影响MBR污水处理的效果。为了准确、快速地预测MBR膜通量,建立了基于粒子群改进小波神经网络算法(PSO_WNN)的MBR膜通量预测模型。针对MBR膜污染因素的复杂性,首先对影响MBR膜通量的主要因素进行了分析。提取重要因子作为PSO_WNN预测模型的输入,膜通量作为输出。然后,建立了PSO_WNN仿真模型,并利用该模型获得了预测结果。通过对预测数据和实验数据的比较,该算法对膜通量的预测精度较高,并与BP神经网络模型进行比较,结果表明PSO_WNN预测模型具有更高的预测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of improved wavelet neural network in MBR flux prediction
Membrane Bio-Reactor(MBR) technology plays an important role in modern sewage treatment » but the performance of the MBR technology is seriously affected by the membrane fouling. In general, the result of membrane fouling is decline of MBR membrane flux, and the effect of MBR sewage treatment is directly affected by the decrease of membrane flux. In order to predict MBR membrane flux accurately and rapidly, the forecasting model of MBR membrane flux based on particle swarm improving wavelet neural network algorithm (PSO_WNN) was established. In view of the complexity of the MBR membrane fouling factor, in the beginning, the main components of the factors affecting the flux of MBR membrane were analyzed. The important factor is extracted as the input of the PSO_WNN prediction model, and the membrane flux is used as the output. Then, the PSO_WNN simulation model is established, and the prediction results are obtained by using the model. By comparing the predicted data and experimental data, the predictive accuracy of this algorithm is high on the membrane flux, and compared with the BP neural network model, the comparative results show that the PSO_WNN forecasting model has higher predicted accuracy.
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