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Prediction of Wastewater Treatment Plants Performance Based on NW Multilayer Feedforward Small-World Artificial Neural Networks

机译:基于NW多层前馈小世界人工神经网络的污水处理厂性能预测。

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In order to provide a tool for predicting wastewater treatment performance and form a basis for controlling the operation of the process, a reliable model is essential for any wastewater treatment plant. This would minimize the operation costs and assess the stability of environmental balance. For the multi-variable, uncertainty, non-linear characteristics of the wastewater treatment system, a NW multilayer feedforward small-world artificial neural network prediction model is established standing on the actual operation data in the wastewater treatment system. The model overcomes several disadvantages of the conventional BP neural network. Namely: slow convergence, low accuracy and difficulty in finding the global optimum. The results of model calculation show that the predicted value can better match measured value, played an effect of simulating and predicting and be able to optimize the operation status. The establishment of the predicting model provides a simple and practical way for the operation and management in wastewater treatment plant, and has good research and engineering practical value.
机译:为了提供一种预测废水处理性能的工具并形成控制过程操作的基础,可靠的模型对于任何废水处理厂都是必不可少的。这将最大程度地降低运营成本,并评估环境平衡的稳定性。针对废水处理系统的多变量,不确定性,非线性特征,建立了基于废水处理系统实际运行数据的NW多层前馈小世界人工神经网络预测模型。该模型克服了常规BP神经网络的几个缺点。即:收敛慢,准确性低并且难以找到全局最优值。模型计算结果表明,该预测值能更好地与测量值匹配,起到仿真预测的作用,能够优化运行状态。该预测模型的建立为污水处理厂的运行管理提供了一种简单实用的方法,具有良好的研究和工程实用价值。

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