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Daily Influent Quantity Forecasting Method for Sewage Treatment Plant Considering Uncertain Factors
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作者 龙腾锐 《Journal of Chongqing University》 CAS 2002年第1期37-41,共5页
Daily influent quantity forecasting plays an important role in sewage treatment plant design and operation. Its uncertain factors are classified into three categories including day types, weather conditions and specia... Daily influent quantity forecasting plays an important role in sewage treatment plant design and operation. Its uncertain factors are classified into three categories including day types, weather conditions and special events, of which the latter two are considered with a BP (Back Propagation) model. On this basis, the daily period feature is taken into account in the presented model. The data from a practical sewage treatment plant utility is employed to show the effectiveness of the method. 展开更多
关键词 Sewage treatment short-term influent quantity forecasting BP model Prediction robust
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城市污水量短时预测的混沌神经网络模型 被引量:16
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作者 李晓东 曾光明 +2 位作者 黄国和 李建兵 蒋茹 《环境科学学报》 CAS CSCD 北大核心 2006年第3期416-419,共4页
通过分析进水水量时间序列的非线性动力学性质,认为该时间序列具有混沌特性.在此基础上,通过相空间重构的方法建立了用于城市污水水量短时预测的混沌神经网络模型;并利用此模型对污水厂的进水水量进行短时预测,取得了较为满意的预测效果.
关键词 污水水量预测 混沌 时间序列 混沌神经网络模型
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Short-term prediction of the influent quantity time series of wastewater treatment plant based on a chaos neural network model
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作者 LI Xiaodong ZENG Guangming +2 位作者 HUANG Guohe LI Jianbing JIANG Ru 《Frontiers of Environmental Science & Engineering》 SCIE EI CSCD 2007年第3期334-338,共5页
By predicting influent quantity,a wastewater treatment plant(WWTP)can be well controlled.The non-linear dynamic characteristic of WWTP influent quantity time series was analyzed,with the assumption that the series was... By predicting influent quantity,a wastewater treatment plant(WWTP)can be well controlled.The non-linear dynamic characteristic of WWTP influent quantity time series was analyzed,with the assumption that the series was predictable.Based on this,a short-term forecasting chaos neural network model of WWTP influent quantity was built by phase space reconstruction.Reasonable forecasting results were achieved using this method. 展开更多
关键词 wastewater treatment plant(wwtp) influent quantity short-term forecasting time series chaos neural network model
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