Long short-term memory models of water quality in inland water environments

IF 7.2 2区 环境科学与生态学 Q1 ENGINEERING, ENVIRONMENTAL Water Research X Pub Date : 2023-11-16 DOI:10.1016/j.wroa.2023.100207
JongCheol Pyo , Yakov Pachepsky , Soobin Kim , Ather Abbas , Minjeong Kim , Yong Sung Kwon , Mayzonee Ligaray , Kyung Hwa Cho
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Abstract

Water quality is substantially influenced by a multitude of dynamic and interrelated variables, including climate conditions, landuse and seasonal changes. Deep learning models have demonstrated predictive power of water quality due to the superior ability to automatically learn complex patterns and relationships from variables. Long short-term memory (LSTM), one of deep learning models for water quality prediction, is a type of recurrent neural network that can account for longer-term traits of time-dependent data. It is the most widely applied network used to predict the time series of water quality variables. First, we reviewed applications of a standalone LSTM and discussed its calculation time, prediction accuracy, and good robustness with process-driven numerical models and the other machine learning. This review was expanded into the LSTM model with data pre-processing techniques, including the Complete Ensemble Empirical Mode Decomposition with Adaptive Noise method and Synchrosqueezed Wavelet Transform. The review then focused on the coupling of LSTM with a convolutional neural network, attention network, and transfer learning. The coupled networks demonstrated their performance over the standalone LSTM model. We also emphasized the influence of the static variables in the model and used the transformation method on the dataset. Outlook and further challenges were addressed. The outlook for research and application of LSTM in hydrology concludes the review.

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内陆水域水质的长短期记忆模型
水质在很大程度上受到许多动态和相互关联的变量的影响,包括气候条件、土地利用和季节变化。深度学习模型已经证明了对水质的预测能力,因为它具有从变量中自动学习复杂模式和关系的优越能力。长短期记忆(LSTM)是用于水质预测的深度学习模型之一,是一种递归神经网络,可以解释时间依赖性数据的长期特征。它是目前应用最广泛的用于预测水质变量时间序列的网络。首先,我们回顾了独立LSTM的应用,并讨论了它的计算时间、预测精度以及与过程驱动的数值模型和其他机器学习的良好鲁棒性。本文将数据预处理技术扩展到LSTM模型,包括自适应噪声方法的完全集成经验模态分解和同步压缩小波变换。然后,回顾了LSTM与卷积神经网络、注意网络和迁移学习的耦合。耦合网络的性能优于独立LSTM模型。我们还强调了模型中静态变量的影响,并在数据集上使用了转换方法。讨论了展望和进一步的挑战。最后,对LSTM在水文学领域的研究和应用前景进行了展望。
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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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