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A deep learning based dynamic COD prediction model for urban sewage

机译:基于深度学习的城市污水动态COD预测模型

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摘要

Due to the comprehensive sources of urban sewage, the contents of pollutants in urban sewage are quite complex and fluctuate frequently. The unstable status of both sewage inflow and COD makes it difficult to precisely control the process parameters in wastewater treatment plants (WWTPs). To reach effluent quality standards, WWTPs increase the aeration rate and chemical inputs, resulting in a great waste of resources and energy, rising production costs, and secondary pollution. Reputed for decreasing unnecessary energy and chemical input, a dynamic COD prediction model of urban sewage based on the hybrid CNN-LSTM deep learning algorithm is proposed to support the further development of feed-forward control systems. The prediction results reveal that the hybrid CNN-LSTM prediction model has higher accuracy and better prediction performance than the stand-alone CNN or LSTM model. The error analysis indicates that the prediction performance can satisfy industrial requirements and can be adopted in urban WWTPs.
机译:由于城市污水的综合来源,城市污水中污染物的含量非常复杂,而且波动频繁。污水流入量和化学需氧量的不稳定状态使得难以精确控制废水处理厂(WWTP)中的工艺参数。为了达到废水质量标准,污水处理厂增加了曝气速率和化学投入,导致资源和能源的浪费,生产成本上升和二次污染。为了减少不必要的能源和化学输入,提出了一种基于混合CNN-LSTM深度学习算法的城市污水动态COD预测模型,以支持前馈控制系统的进一步发展。预测结果表明,混合CNN-LSTM预测模型比独立的CNN或LSTM模型具有更高的准确性和更好的预测性能。误差分析表明,该预测性能可以满足工业要求,可以在城市污水处理厂中采用。

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    South China Univ Technol State Key Lab Pulp & Papermaking Engn Guangzhou 510640 Peoples R China|South China Univ Technol Natl Demonstrat Ctr Expt Light Ind & Food Educ Guangzhou 510640 Peoples R China;

    South China Univ Technol State Key Lab Pulp & Papermaking Engn Guangzhou 510640 Peoples R China;

    Qingdao Univ Sci & Technol Coll Chem Engn Qingdao 266042 Peoples R China|Shandong Collaborat Innovat Ctr Ecochem Engn Qingdao 266042 Peoples R China;

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