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探索一种基于多输出时间卷积网络驱动的编解码器框架的氨氮预测方法。

Exploring a multi-output temporal convolutional network driven encoder-decoder framework for ammonia nitrogen forecasting.

机构信息

State Key Laboratory of Water Resources Engineering and Management, Wuhan University, Wuhan, 430072, China.

State Key Laboratory of Water Resources Engineering and Management, Wuhan University, Wuhan, 430072, China.

出版信息

J Environ Manage. 2023 Sep 15;342:118232. doi: 10.1016/j.jenvman.2023.118232. Epub 2023 Jun 7.

Abstract

Artificial neural networks exhibit significant advantages in terms of learning capability and generalizability, and have been increasingly applied in water quality prediction. Through learning a compressed representation of the input data, the Encoder-Decoder (ED) structure not only could remove noise and redundancies, but also could efficiently capture the complex nonlinear relationships of meteorological and water quality factors. The novelty of this study lies in proposing a multi-output Temporal Convolutional Network based ED model (TCN-ED) to make ammonia nitrogen forecasts for the first time. The contribution of our study is indebted to systematically assessing the significance of combining the ED structure with advanced neural networks for making accurate and reliable water quality forecasts. The water quality gauge station located at Haihong village of an island in Shanghai City of China constituted the case study. The model input contained one hourly water quality factor and hourly meteorological factors of 32 observed stations, where each factor was traced back to the previous 24 h and each meteorological factor of 32 gauge stations was aggregated into one areal average factor. A total of 13,128 hourly water quality and meteorological data were divided into two datasets corresponding to model training and testing stages. The Long Short-Term Memory based ED (LSTM-ED), LSTM and TCN models were constructed for comparison purposes. The results demonstrated that the developed TCN-ED model can succeed in mimicking the complex dependence between ammonia nitrogen and water quality and meteorological factors, and provide more accurate ammonia nitrogen forecasts (1- up to 6-h-ahead) than the LSTM-ED, LSTM and TCN models. The TCN-ED model, in general, achieved higher accuracy, stability and reliability compared with the other models. Consequently, the improvement can facilitate river water quality forecasting and early warning, as well as benefit water pollution prevention in the interest of river environmental restoration and sustainability.

摘要

人工神经网络在学习能力和泛化能力方面表现出显著优势,已越来越多地应用于水质预测。通过学习输入数据的压缩表示,编解码器(Encoder-Decoder,ED)结构不仅可以去除噪声和冗余,还可以有效地捕捉气象和水质因素的复杂非线性关系。本研究的新颖之处在于提出了一种基于多输出的时间卷积网络的 ED 模型(TCN-ED),首次对氨氮进行预测。我们的研究贡献在于系统地评估了 ED 结构与先进神经网络相结合对水质进行准确可靠预测的重要性。该研究案例是位于上海市一个岛屿的海宏村的水质监测站。模型输入包含一个每小时的水质因子和 32 个观测站的每小时气象因子,其中每个因子都可以追溯到前 24 小时,32 个气象站的每个气象因子都被聚合为一个区域平均因子。总共 13128 个每小时的水质和气象数据被分为两个数据集,分别对应于模型训练和测试阶段。为了进行比较,构建了基于长短期记忆的 ED(LSTM-ED)、LSTM 和 TCN 模型。结果表明,所开发的 TCN-ED 模型能够成功模拟氨氮与水质和气象因子之间的复杂关系,并提供比 LSTM-ED、LSTM 和 TCN 模型更准确的氨氮预测(1 到 6 小时提前)。总的来说,与其他模型相比,TCN-ED 模型具有更高的准确性、稳定性和可靠性。因此,这种改进可以促进河流水质预测和预警,有利于水污染防治,从而有利于河流环境的恢复和可持续性。

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