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基于多子系统协同的 Bi-LSTM 自适应软测量模型用于污水处理过程中氨氮浓度的全局预测。

A multi-subsystem collaborative Bi-LSTM-based adaptive soft sensor for global prediction of ammonia-nitrogen concentration in wastewater treatment processes.

机构信息

The School of Automation, Central South University, Changsha 410 083, China.

The School of Automation, Central South University, Changsha 410 083, China.

出版信息

Water Res. 2024 May 1;254:121347. doi: 10.1016/j.watres.2024.121347. Epub 2024 Feb 20.

DOI:10.1016/j.watres.2024.121347
PMID:38422697
Abstract

Ammonia-nitrogen concentration is a key water quality indicator, which reflects changes in pollutant components during wastewater treatment processes. The timely and accurate detection results contribute to optimizing control and operational management of wastewater treatment plants (WWTPs), but current detection methods only focus on the effluent location. This paper proposes a multi-subsystem collaborative Bi-LSTM-based adaptive soft sensor to achieve the global prediction of ammonia-nitrogen concentration. Firstly, the wastewater treatment process is divided into several independent subsystems depending on the reaction mechanism, and the variable selection is performed using mutual information. Subsequently, the bidirectional long short-term memory network (Bi-LSTM) is employed to construct a model for predicting ammonia-nitrogen concentration within each subsystem, and the outputs between neighboring subsystems are incorporated as a set of new variables added into the training dataset to strengthen their connection. Finally, to address performance degradation caused by environmental factors, a probability density function (PDF)-based dynamic moving window method is proposed to enhance the robustness. The effectiveness and superiority of the proposed soft sensor are validated in the Benchmark Simulation Model no. 1 (BSM1). The experimental results demonstrate that the proposed soft sensor can accurately predict the global ammonia-nitrogen concentration in the face of different weather conditions including sunny, rainy, and stormy days. This study contributes to the stable operation of WWTPs with higher treatment efficiency and lower economic costs.

摘要

氨氮浓度是水质的一个关键指标,反映了污水处理过程中污染物成分的变化。及时、准确的检测结果有助于优化污水处理厂(WWTP)的控制和运行管理,但目前的检测方法仅关注出水口位置。本文提出了一种基于多子系统协同 Bi-LSTM 的自适应软测量方法,实现了氨氮浓度的全局预测。首先,根据反应机理将污水处理过程分为几个独立的子系统,并使用互信息进行变量选择。然后,采用双向长短期记忆网络(Bi-LSTM)构建每个子系统的氨氮浓度预测模型,并将相邻子系统之间的输出作为一组新变量添加到训练数据集中,以增强它们之间的联系。最后,为了解决环境因素引起的性能下降问题,提出了一种基于概率密度函数(PDF)的动态移动窗口方法来增强鲁棒性。在基准模拟模型 1(BSM1)中验证了所提出的软传感器的有效性和优越性。实验结果表明,所提出的软传感器可以在不同的天气条件下(包括晴天、雨天和暴风雨天)准确预测全局氨氮浓度。本研究有助于提高处理效率和降低经济成本,实现 WWTP 的稳定运行。

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