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Data-driven prediction and control of wastewater treatment process through the combination of convolutional neural network and recurrent neural network

机译:通过卷积神经网络和经常性神经网络的组合,数据驱动的预测和控制废水处理过程

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摘要

It is widely believed that effective prediction of wastewater treatment results (WTR) is conducive to precise control of aeration amount in the wastewater treatment process (WTP). Conventional biochemical mechanism-driven approaches are highly dependent on complicated and redundant model parameters, resulting in low efficiency. Besides, sharp increase in business volume of wastewater treatment requires automatic operation technologies for this purpose. Under this background, researchers started to introduce the idea of data mining to model the WTP, in order to automatically predict WTR given inlet conditions and aeration amount. However, existing data-driven approaches for this purpose focus on modelling of the WTP at independent timestamps, neglecting sequential characteristics of timestamps during the long-term treatment process. To tackle the challenge, in this paper, a novel prediction and control framework through combination of convolutional neural network (CNN) and recurrent neural network (RNN) is proposed for prediction of the WTR. Firstly, the CNN model is utilized to automatically extract the local features of each independent timestamp in the WTP and make them encoded. Next, the RNN model is employed to represent global sequential features of the WTP on the basis of local feature encoding. Finally, we conduct a large number of experiments to verify efficiency and stability of the proposed prediction framework.
机译:众所周知,有效预测废水处理结果(WTR)有利于确切地控制废水处理过程(WTP)中的曝气量。传统的生化机制驱动方法高度依赖于复杂和冗余的模型参数,从而导致低效率。此外,废水处理的业务量急剧增加需要为此目的自动运行技术。在此背景下,研究人员开始介绍数据挖掘以模拟WTP的想法,以便自动预测WTR给定进口条件和曝气量。然而,现有的数据驱动方法为此目的侧重于独立时间戳的WTP的建模,忽略了长期治疗过程中时间戳的顺序特征。为了解决挑战,本文通过卷积神经网络(CNN)和经常性神经网络(RNN)的组合提出了一种新的预测和控制框架,用于预测WTR。首先,利用CNN模型来自动提取WTP中每个独立时间戳的本地特征,并使其编码。接下来,用于基于本地特征编码来表示WTP的全局顺序特征的RNN模型。最后,我们进行大量实验以验证所提出的预测框架的效率和稳定性。

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