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Research on prediction model of optimal coagulant dosage in water purifying plant based on nerual network

机译:基于神经网络的水净化植物最佳凝血剂量预测模型研究

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Coagulant dosing process is an important part in water reatment plan, it directly affects the water quality and operating costs of production. It is very difficult to set up its mathematical model accurately basing on its reactive mechanism at presen. Factors that affect the coagulation effect are analyzed in this paper, then a BP neural network prediction model of coagulant dosage is established. A improved BP algorithm — LM algorithm is used to train the neural network, it can improve the data's convergent speed. Experimental results show that the prediction accuracy of the BP neural network model is very high. The online predictive control of coagulant dosage can be made basing on this model, so it can optimize the coagulant dosage.
机译:凝血剂量加工过程是水磨削计划的重要组成部分,它直接影响生产的水质和生产成本。非常困难地建立其数学模型,准确地基于其经过的反应机制。在本文中分析了影响凝固效果的因素,然后建立了凝结剂剂量的BP神经网络预测模型。一种改进的BP算法 - LM算法用于训练神经网络,可以提高数据的收敛速度。实验结果表明,BP神经网络模型的预测精度非常高。可以在该模型上基于该模型进行凝结剂量的在线预测控制,因此它可以优化凝结剂剂量。

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