Developing data-driven learning models to predict urban stormwater runoff volume

被引:1
|
作者
Wood-Ponce, Rachel [1 ]
Diab, Ghada [2 ]
Liu, Zeyu [3 ]
Blanchette, Ryan [1 ]
Hathaway, Jon [2 ]
Khojandi, Anahita [1 ]
机构
[1] Univ Tennessee, Dept Ind & Syst Engn, Knoxville, TN 37996 USA
[2] Univ Tennessee, Dept Civil & Environm Engn, Knoxville, TN USA
[3] West Virginia Univ, Dept Ind & Management Syst Engn, Morgantown, WV USA
基金
美国国家科学基金会;
关键词
Machine learning; SWMM; runoff volume prediction; clustering; SHAP values; AREA; SIMULATION;
D O I
10.1080/1573062X.2024.2312514
中图分类号
TV21 [水资源调查与水利规划];
学科分类号
081501 ;
摘要
The Storm Water Management Model (SWMM) is a hydrological model for simulating and predicting runoff. Although powerful, SWMM can be computationally demanding. Therefore, we develop machine learning (ML) models to approximate the behavior of SWMM and expedite the task of predicting runoff. We perform a case study for the First Creek watershed in Knoxville, Tennessee, USA. We train ML models using rainfall data and subcatchment characteristics and apply feature engineering and clustering to objectively compare the outputs from SWMM and ML models. The results show that random forests can predict runoff volume accurately, with a Mean Absolute Error (MAE) of 0.006 (0.001) ${10<^>6}$106 gallons, where predictions are made almost instantaneously. Hence, our proposed ML-based approach can accurately predict runoff while greatly reducing computational requirements, filling a critical need in the field.
引用
收藏
页码:549 / 564
页数:16
相关论文
共 50 条
  • [31] Data-driven Stellar Models
    Green, Gregory M.
    Rix, Hans-Walter
    Tschesche, Leon
    Finkbeiner, Douglas
    Zucker, Catherine
    Schlafly, Edward F.
    Rybizki, Jan
    Fouesneau, Morgan
    Andrae, Rene
    Speagle, Joshua
    ASTROPHYSICAL JOURNAL, 2021, 907 (01):
  • [32] Data-Driven Inverse Learning of Passenger Preferences in Urban Public Transits
    Wu, Guojun
    Ding, Yichen
    Li, Yanhua
    Luo, Jun
    Zhang, Fan
    Fu, Jie
    2017 IEEE 56TH ANNUAL CONFERENCE ON DECISION AND CONTROL (CDC), 2017,
  • [33] Subsampling approach and data-driven models to predict silicate glass melt viscosity
    Perret, Damien
    Garcin, Alexandra
    Soual, Carole
    Bergeret, Francois
    MATERIALS LETTERS, 2025, 379
  • [34] AN APPROACH TO DATA-DRIVEN LEARNING
    MARKOV, Z
    LECTURE NOTES IN ARTIFICIAL INTELLIGENCE, 1991, 535 : 127 - 140
  • [35] Approach to data-driven learning
    Markov, Z.
    International Workshop on Fundamentals of Artificial Intelligence Research, 1991,
  • [36] Data-Driven Personalized Learning
    Guo, Xue
    He, Xiangchun
    Pei, Zhuoyun
    PROCEEDINGS OF 2023 6TH INTERNATIONAL CONFERENCE ON EDUCATIONAL TECHNOLOGY MANAGEMENT, ICETM 2023, 2023, : 49 - 54
  • [37] Metacognition and Data-Driven Learning
    Sato, Masatoshi
    TESOL QUARTERLY, 2024, 58 (03) : 1246 - 1255
  • [38] Fuzzy and Data-Driven Urban Crowds
    Toledo, Leonel
    Rivalcoba, Ivan
    Rudomin, Isaac
    COMPUTATIONAL SCIENCE - ICCS 2018, PT III, 2018, 10862 : 280 - 290
  • [39] A data- and knowledge-driven framework for developing machine learning models to predict soccer match outcomes
    Berrar, Daniel
    Lopes, Philippe
    Dubitzky, Werner
    MACHINE LEARNING, 2024, 113 (10) : 8165 - 8204
  • [40] Using Data-Driven Learning to Predict and Control the Outcomes of Inorganic Materials Synthesis
    Williamson, Emily M.
    Brutchey, Richard L.
    INORGANIC CHEMISTRY, 2023, 62 (40) : 16251 - 16262