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Deep learning based automatic maintenance of soft sensors used in wastewater treatment plants.

机译:基于深度学习的废水处理厂中软传感器的自动维护。

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Soft sensors in wastewater treatment plants are used to estimate the difficult to measure variables, predict the parameters of concern as per the instructions of the pollution control board or monitor the plant and effluent quality. However the soft sensor deterioration is a limitation of such soft sensors which occur due to various reasons like sudden change in process characteristic or involvement of faulty data in designing and updating the soft sensor. The paper overcome this limitation by using a deep learning based method for automatic maintenance. The proposed technique identify and rectify the faulty data involved in designing and updating of soft sensor based on a ten layered deep neural network. The comparative results show that the proposed method reduces the soft sensor deterioration of a total nitrogen soft sensor used in wastewater treatment plants.
机译:废水处理厂中的软传感器用于估算难以测量的变量,根据污染控制委员会的指示预测所关注的参数,或监控工厂和废水质量。然而,软传感器的劣化是这种软传感器的局限性,其由于各种原因而发生,例如过程特性的突然变化或在设计和更新软传感器时涉及错误数据。本文通过使用基于深度学习的自动维护方法克服了这一限制。所提出的技术基于十层深度神经网络,识别和纠正软传感器设计和更新中涉及的故障数据。比较结果表明,该方法减少了污水处理厂中使用的总氮软传感器的软传感器劣化。

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