用于岩溶泉水排放预测的可解释多步骤混合深度学习模型:将时间融合转换器与集合经验模式分解相结合

IF 5.9 1区 地球科学 Q1 ENGINEERING, CIVIL
Renjie Zhou , Quanrong Wang , Aohan Jin , Wenguang Shi , Shiqi Liu
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引用次数: 0

摘要

岩溶地下水是全球众多地区的重要淡水资源。监测和预测岩溶泉水排放对有效管理地下水和保护岩溶生态系统至关重要。然而,高度异质性和岩溶化给基于物理的模型提供可靠的岩溶泉水排放预测带来了巨大挑战。本研究提出了一种名为 "选择性 EEMD-TFT" 的可解释多步骤混合深度学习模型,该模型自适应地集成了时间融合变换器(TFT)和集合经验模式分解(EEMD),用于预测岩溶泉水排放。选择性 EEMD-TFT 混合模型利用 EEMD 和 TFT 技术的优势,从非线性和非平稳信号中学习固有模式和时间动态,消除冗余成分,并强调输入变量的有用特征,从而提高预测性能和效率。它包括两个阶段:第一阶段,利用 EEMD 将日降水量数据分解为多个本征模式函数,以从非线性和非平稳信号中提取有价值的信息。然后将所有分解的成分、温度和分类日期特征输入 TFT 模型,该模型是一个基于注意力的深度学习模型,将高性能的多地平线预测和对时间动态的可解释性洞察结合在一起。输入变量的重要性将被量化和排序。在第二阶段,将选择重要性较高的降水分解成分作为 TFT 模型的输入特征,与温度和分类日期变量一起进行最终预测。结果表明,选择性 EEMD-TFT 模型优于 LSTM 和单一 TFT 模型等其他序列到序列深度学习模型,具有可靠、稳健的预测性能。值得注意的是,与其他序列到序列模型相比,该模型在更长的预测范围内保持了更稳定的预测性能,这突出表明它有能力从输入数据中学习复杂的模式,并有效地为岩溶泉预测提取有价值的信息。对选择性 EEMD-TFT 模型进行了可解释性分析,以深入了解各种水文过程之间的关系并分析时间模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Interpretable multi-step hybrid deep learning model for karst spring discharge prediction: Integrating temporal fusion transformers with ensemble empirical mode decomposition
Karst groundwater is a critical freshwater resource for numerous regions worldwide. Monitoring and predicting karst spring discharge is essential for effective groundwater management and the preservation of karst ecosystems. However, the high heterogeneity and karstification pose significant challenges to physics-based models in providing robust predictions of karst spring discharge. In this study, an interpretable multi-step hybrid deep learning model called selective EEMD-TFT is proposed, which adaptively integrates temporal fusion transformers (TFT) with ensemble empirical mode decomposition (EEMD) for predicting karst spring discharge. The selective EEMD-TFT hybrid model leverages the strengths of both EEMD and TFT techniques to learn inherent patterns and temporal dynamics from nonlinear and nonstationary signals, eliminate redundant components, and emphasize useful characteristics of input variables, leading to the improvement of prediction performance and efficiency. It consists of two stages: in the first stage, the daily precipitation data is decomposed into multiple intrinsic mode functions using EEMD to extract valuable information from nonlinear and nonstationary signals. All decomposed components, temperature and categorical date features are then fed into the TFT model, which is an attention-based deep learning model that combines high-performance multi-horizon prediction and interpretable insights into temporal dynamics. The importance of input variables will be quantified and ranked. In the second stage, the decomposed precipitation components with high importance are selected to serve as the TFT model’s input features along with temperature and categorical date variables for the final prediction. Results indicate that the selective EEMD-TFT model outperforms other sequence-to-sequence deep learning models, such as LSTM and single TFT models, delivering reliable and robust prediction performance. Notably, it maintains more consistent prediction performance at longer forecast horizons compared to other sequence-to-sequence models, highlighting its capacity to learn complex patterns from the input data and efficiently extract valuable information for karst spring prediction. An interpretable analysis of the selective EEMD-TFT model is conducted to gain insights into relationships among various hydrological processes and analyze temporal patterns.
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来源期刊
Journal of Hydrology
Journal of Hydrology 地学-地球科学综合
CiteScore
11.00
自引率
12.50%
发文量
1309
审稿时长
7.5 months
期刊介绍: The Journal of Hydrology publishes original research papers and comprehensive reviews in all the subfields of the hydrological sciences including water based management and policy issues that impact on economics and society. These comprise, but are not limited to the physical, chemical, biogeochemical, stochastic and systems aspects of surface and groundwater hydrology, hydrometeorology and hydrogeology. Relevant topics incorporating the insights and methodologies of disciplines such as climatology, water resource systems, hydraulics, agrohydrology, geomorphology, soil science, instrumentation and remote sensing, civil and environmental engineering are included. Social science perspectives on hydrological problems such as resource and ecological economics, environmental sociology, psychology and behavioural science, management and policy analysis are also invited. Multi-and interdisciplinary analyses of hydrological problems are within scope. The science published in the Journal of Hydrology is relevant to catchment scales rather than exclusively to a local scale or site.
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