Advancing subseasonal reservoir inflow forecasts using an explainable machine learning method

被引:1
|
作者
Fan, Ming [1 ]
Liu, Siyan [1 ]
Lu, Dan [1 ]
机构
[1] Oak Ridge Natl Lab, Computat Sci & Engn Div, Oak Ridge, TN 37831 USA
关键词
Subseasonal forecasting; Explainable machine learning; Variable importance; Encoder-Decoder LSTM networks; Reservoir inflow; STREAMFLOW FORECASTS; MODEL; RIVER; RAINFALL; DAM; AI;
D O I
10.1016/j.ejrh.2023.101584
中图分类号
TV21 [水资源调查与水利规划];
学科分类号
081501 ;
摘要
Study Region Upper Colorado River Basin and Great Basin in the United StatesStudy Focus Accurate subseasonal reservoir inflow forecasts and understanding the influence of hydrometeorological forcings on these forecasts are crucial for improving water resources management. Machine learning (ML) techniques, such as long short-term memory (LSTM) networks, perform well for short-term inflow forecasts but have deficiencies in subseasonal forecasts and lack interpretability. To address these limitations, we propose an explainable ML method that integrates an encoder-decoder LSTM (ED-LSTM) network to improve long-term reservoir inflow forecasts and a gradient-based explanation method to quantify the importance of individual hydrometeorological forcings and their interactions on inflow forecasts.New Hydrological Insights for the Region The ED-LSTM model outperforms the standard LSTM in the 30-day inflow forecasts at all 30 reservoirs. At the 1-day lead time, ED-LSTM produces NSEs exceeding 0.75 at 29 reservoirs; at the 15-day lead time, about half of reservoirs maintain this high-accurate performance, and when forecasting 30 days ahead, ED-LSTM achieves NSEs exceeding 0.5 at most reservoirs. The variable importance identifies past inflow and temperature as crucial drivers for predicting inflow dynamics. When considering interactions between hydrometeorological forcings, precipitation contributes significantly to inflow forecasting through its interaction with temperature and historical inflow. The proposed method enhances subseasonal reservoir inflow forecasts and the understanding of the impact of hydrometeorological factors, which supports decision-making in reservoir operations.
引用
收藏
页数:21
相关论文
共 50 条
  • [21] PointHop: An Explainable Machine Learning Method for Point Cloud Classification
    Zhang, Min
    You, Haoxuan
    Kadam, Pranav
    Liu, Shan
    Kuo, C-C Jay
    IEEE TRANSACTIONS ON MULTIMEDIA, 2020, 22 (07) : 1744 - 1755
  • [22] Comprehensive evaluation of machine learning models for suspended sediment load inflow prediction in a reservoir
    Idrees, Muhammad Bilal
    Jehanzaib, Muhammad
    Kim, Dongkyun
    Kim, Tae-Woong
    STOCHASTIC ENVIRONMENTAL RESEARCH AND RISK ASSESSMENT, 2021, 35 (09) : 1805 - 1823
  • [23] Analyzing spatial heterogeneity of ridesourcing usage determinants using explainable machine learning
    Zhang, Xiaojian
    Zhou, Zhengze
    Xu, Yiming
    Zhao, Xilei
    JOURNAL OF TRANSPORT GEOGRAPHY, 2024, 114
  • [24] Estimating lane utilization for variable approach lanes using explainable machine learning
    Alagbe, Adje Jeremie
    Jin, Sheng
    Bao, Qianhan
    Guo, Wentong
    TRANSPORTMETRICA B-TRANSPORT DYNAMICS, 2023, 11 (01)
  • [25] Estimating Reservoir Sedimentation Using Machine Learning
    Cox, Amanda L.
    Meyer, Deanna
    Botero-Acosta, Alejandra
    Sagan, Vasit
    Demir, Ibrahim
    Muste, Marian
    Boyd, Paul
    Pathak, Chandra
    JOURNAL OF HYDROLOGIC ENGINEERING, 2024, 29 (04)
  • [26] TruVR: Trustworthy Cybersickness Detection using Explainable Machine Learning
    Kundu, Ripan Kumar
    Islam, Rifatul
    Calyam, Prasad
    Hoque, Khaza Anuarul
    2022 IEEE INTERNATIONAL SYMPOSIUM ON MIXED AND AUGMENTED REALITY (ISMAR 2022), 2022, : 777 - 786
  • [27] Integrating multiple data sources for improved flight delay prediction using explainable machine learning
    Pineda-Jaramillo, Juan
    Munoz, Claudia
    Mesa-Arango, Rodrigo
    Gonzalez-Calderon, Carlos
    Lange, Anne
    RESEARCH IN TRANSPORTATION BUSINESS AND MANAGEMENT, 2024, 56
  • [28] Automated Detection of Spectre and Meltdown Attacks using Explainable Machine Learning
    Pan, Zhixin
    Mishra, Prabhat
    2021 IEEE INTERNATIONAL SYMPOSIUM ON HARDWARE ORIENTED SECURITY AND TRUST (HOST), 2021, : 24 - 34
  • [29] Refining urban morphology: An explainable machine learning method for estimating footprint-level building height
    Chen, Yang
    Sun, Wenjie
    Yang, Ling
    Yang, Xin
    Zhou, Xingyu
    Li, Xin
    Li, Sijin
    Tang, Guoan
    SUSTAINABLE CITIES AND SOCIETY, 2024, 112
  • [30] Understanding predictions of drug profiles using explainable machine learning models
    Konig, Caroline
    Vellido, Alfredo
    BIODATA MINING, 2024, 17 (01):