基于概率深度学习的冲击负荷事件下污水处理厂出水水质预测。

IF 7.2 2区 环境科学与生态学 Q1 ENGINEERING, ENVIRONMENTAL
Hailong Yin , Yongqi Chen , Jingshu Zhou , Yifan Xie , Qing Wei , Zuxin Xu
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引用次数: 0

摘要

以污水处理厂(污水处理厂)的流入量或浓度显著增加为特征的突发冲击负荷事件,是实现经处理的污水排放质量标准的主要威胁。为了帮助污水处理厂稳定运行的实时决策,本研究开发了一个概率深度学习模型,该模型由编码器-解码器长短期记忆(LSTM)网络组成,具有生成概率预测的能力,以增强在此类事件下污水处理厂出水质量实时预测的鲁棒性。开发的概率编码器-解码器LSTM (P-ED-LSTM)模型在实际污水处理厂进行了测试,在该模型中进行了两小时总氮出水质量预测,并与经典深度学习模型(包括LSTM,门控循环单元(GRU)和Transformer)进行了比较。研究发现,在冲击负荷事件下,与LSTM、GRU和Transformer相比,P-ED-LSTM在两小时实时预测出水浓度方面的预测精度提高了49.7%。P-ED-LSTM模型输出的概率数据的分位数越高,表明预测值更接近实际出水质量。P-ED-LSTM模型对冲击负荷情景下的后续多个时间步也表现出较高的预测能力。它提前6小时捕获了大约90%的实际超限放电,显著优于其他深度学习模型。因此,P-ED-LSTM模型具有对显著波动的强大适应性,具有在不同工艺的污水处理厂中更广泛应用的潜力,并为应急条件下的废水系统调节提供策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A probabilistic deep learning approach to enhance the prediction of wastewater treatment plant effluent quality under shocking load events
Sudden shocking load events featuring significant increases in inflow quantities or concentrations of wastewater treatment plants (WWTPs), are a major threat to the attainment of treated effluents to discharge quality standards. To aid in real-time decision-making for stable WWTP operations, this study developed a probabilistic deep learning model that comprises encoder-decoder long short-term memory (LSTM) networks with added capacity of producing probability predictions, to enhance the robustness of real-time WWTP effluent quality prediction under such events. The developed probabilistic encoder-decoder LSTM (P-ED-LSTM) model was tested in an actual WWTP, where bihourly effluent quality prediction of total nitrogen was performed and compared with classical deep learning models, including LSTM, gated recurrent unit (GRU) and Transformer. It was found that under shocking load events, the P-ED-LSTM could achieve a 49.7% improvement in prediction accuracy for bihourly real-time predictions of effluent concentration compared to the LSTM, GRU, and Transformer. A higher quantile of the probability data from the P-ED-LSTM model output, indicated a prediction value more approximate to real effluent quality. The P-ED-LSTM model also exhibited higher predictive power for the next multiple time steps with shocking load scenarios. It captured approximately 90% of the actual over-limit discharges up to 6 hours ahead, significantly outperforming other deep learning models. Therefore, the P-ED-LSTM model, with its robust adaptability to significant fluctuations, has the potential for broader applications across WWTPs with different processes, as well as providing strategies for wastewater system regulation under emergency conditions.
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来源期刊
Water Research X
Water Research X Environmental Science-Water Science and Technology
CiteScore
12.30
自引率
1.30%
发文量
19
期刊介绍: Water Research X is a sister journal of Water Research, which follows a Gold Open Access model. It focuses on publishing concise, letter-style research papers, visionary perspectives and editorials, as well as mini-reviews on emerging topics. The Journal invites contributions from researchers worldwide on various aspects of the science and technology related to the human impact on the water cycle, water quality, and its global management.
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