LSTM-based autoencoder models for real-time quality control of wastewater treatment sensor data

Siddharth Seshan, Dirk Vries, Jasper N. Immink, Alex van der Helm, Johann Poinapen
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Abstract

The operation of smart wastewater treatment plants (WWTPs) is increasingly paramount in improving effluent quality, facilitating resource recovery and reducing carbon emissions. To achieve these objectives, sensors, monitoring systems, and artificial intelligence (AI)-based models are increasingly being developed and utilised for decision support and advanced control. One of the important aspects of the adoption of advanced data-driven control of WWTPs is real-time data validation and reconciliation (DVR), especially for sensor data. This research demonstrates and evaluates real-time AI-based data quality control methods, i.e. long short-term memory (LSTM) autoencoder (AE) models, to reconcile faulty sensor signals in WWTPs as compared to autoregressive integrated moving average (ARIMA) models. The DVR procedure is aimed at anomalies resulting from data acquisition issues and sensor faults. Anomaly detection precedes the reconciliation procedure using models that capture short-time dynamics (SD) and (relatively) long-time dynamics (LD). Real data from an operational WWTP are used to test the DVR procedure. To address the reconciliation of prolonged anomalies, the SD is aggregated with an LD model by exponential weighting. For reconciling single-point anomalies, both ARIMA and LSTM AEs showed high accuracy, while the accuracy of reconciliation regresses quickly with an increasing forecasting horizon for prolonged anomalous events.
基于 LSTM 的自动编码器模型,用于污水处理传感器数据的实时质量控制
智能污水处理厂(WWTP)的运行对于提高污水处理质量、促进资源回收和减少碳排放越来越重要。为实现这些目标,传感器、监控系统和基于人工智能(AI)的模型正被越来越多地开发和用于决策支持和高级控制。对污水处理厂采用先进的数据驱动控制的一个重要方面是实时数据验证和调节(DVR),特别是针对传感器数据。这项研究展示并评估了基于人工智能的实时数据质量控制方法,即长短时记忆(LSTM)自动编码器(AE)模型,与自回归综合移动平均(ARIMA)模型相比,该方法可用于调节污水处理厂中的故障传感器信号。DVR 程序针对的是数据采集问题和传感器故障导致的异常。异常检测先于调节程序,使用的模型可捕捉短时动态(SD)和(相对)长时动态(LD)。来自运行中的污水处理厂的真实数据被用来测试 DVR 程序。为了调节长时间的异常现象,通过指数加权将 SD 与 LD 模型汇总。在调节单点异常时,ARIMA 和 LSTM AE 都表现出很高的准确性,而在调节长期异常事件时,随着预测时间的延长,调节的准确性迅速下降。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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