Evaluating different machine learning methods to simulate runoff from extensive green roofs

被引:19
|
作者
Abdalla, Elhadi Mohsen Hassan [1 ]
Pons, Vincent [1 ]
Stovin, Virginia [2 ]
De-Ville, Simon [2 ]
Fassman-Beck, Elizabeth [3 ]
Alfredsen, Knut [1 ]
Muthanna, Tone Merete [1 ]
机构
[1] Norwegian Univ Sci & Technol, Dept Civil & Environm Engn, N-7031 Trondheim, Norway
[2] Univ Sheffield, Dept Civil & Struct Engn, Sheffield S1 3JD, S Yorkshire, England
[3] Southern Calif Coastal Water Res Project, Costa Mesa, CA 92626 USA
关键词
ARTIFICIAL NEURAL-NETWORK; DECISION TREE ALGORITHMS; MOISTURE-CONTENT; MODEL TREES; FUZZY-LOGIC; PERFORMANCE; STREAMFLOW; IMPACT; VEGETATION; ACCURACY;
D O I
10.5194/hess-25-5917-2021
中图分类号
P [天文学、地球科学];
学科分类号
07 ;
摘要
Green roofs are increasingly popular measures to permanently reduce or delay storm-water runoff. The main objective of the study was to examine the potential of using machine learning (ML) to simulate runoff from green roofs to estimate their hydrological performance. Four machine learning methods, artificial neural network (ANN), M5 model tree, long short-term memory (LSTM) and k nearest neighbour (kNN), were applied to simulate storm-water runoff from 16 extensive green roofs located in four Norwegian cities across different climatic zones. The potential of these ML methods for estimating green roof retention was assessed by comparing their simulations with a proven conceptual retention model. Furthermore, the transferability of ML models between the different green roofs in the study was tested to investigate the potential of using ML models as a tool for planning and design purposes. The ML models yielded low volumetric errors that were comparable with the conceptual retention models, which indicates good performance in estimating annual retention. The ML models yielded satisfactory modelling results (NSE >0.5) in most of the roofs, which indicates an ability to estimate green roof detention. The variations in ML models' performance between the cities was larger than between the different configurations, which was attributed to the different climatic characteristics between the four cities. Transferred ML models between cities with similar rainfall events characteristics (Bergen-Sandnes, Trondheim-Oslo) could yield satisfactory modelling performance (Nash-Sutcliffe efficiency NSE >0.5 and percentage bias vertical bar PBIAS vertical bar <25 %) in most cases. However, we recommend the use of the conceptual retention model over the transferred ML models, to estimate the retention of new green roofs, as it gives more accurate volume estimates. Follow-up studies are needed to explore the potential of ML models in estimating detention from higher temporal resolution datasets.
引用
收藏
页码:5917 / 5935
页数:19
相关论文
共 50 条
  • [31] The influence of extensive green roofs on rainwater runoff quality: a field-scale study in southwest China
    Liu, Ruifen
    Stanford, Richard L.
    Deng, Yun
    Liu, Defu
    Liu, Ying
    Yu, Shaw L.
    ENVIRONMENTAL SCIENCE AND POLLUTION RESEARCH, 2020, 27 (12) : 12932 - 12941
  • [32] Research on the characteristics of the water quality of rainwater runoff from green roofs
    Gong, Kena
    Wu, Qing
    Peng, Sen
    Zhao, Xinhua
    Wang, Xiaochen
    WATER SCIENCE AND TECHNOLOGY, 2014, 70 (07) : 1205 - 1210
  • [33] Evaluating performances of green roofs for stormwater runoff mitigation in a high flood risk urban catchment
    Ercolani, Giulia
    Chiaradia, Enrico Antonio
    Gandolfi, Claudio
    Castelli, Fabio
    Masseroni, Daniele
    JOURNAL OF HYDROLOGY, 2018, 566 : 830 - 845
  • [34] Evaluating Different Machine Learning Methods on RapidEye and PlanetScope Satellite Imagery
    Kranjcic, Nikola
    Medak, Damir
    GEODETSKI LIST, 2020, 74 (01) : 1 - 18
  • [35] Influence of different alternative organic substrates as fillings for green roofs on the quality of rainfall runoff
    Novotny, Michal
    Sipka, Milan
    Miino, Marco Carnevale
    Racek, Jakub
    Chorazy, Tomas
    Petreje, Marek
    Tosic, Ivana
    Hlavinek, Petr
    Markovic, Mihajlo
    SUSTAINABLE CHEMISTRY AND PHARMACY, 2024, 38
  • [36] Heavy metals in plants and substrate from simulated extensive green roofs
    Ye, Jianjun
    Liu, Chuanyin
    Zhao, Zichao
    Li, Yuqi
    Yu, Shixiao
    ECOLOGICAL ENGINEERING, 2013, 55 : 29 - 34
  • [37] Green roofs are not created equal: The hydrologic and thermal performance of six different extensive green roofs and reflective and non-reflective roofs in a sub-tropical climate
    Simmons M.T.
    Gardiner B.
    Windhager S.
    Tinsley J.
    Urban Ecosystems, 2008, 11 (4) : 339 - 348
  • [38] Increasing the resistance of Mediterranean extensive green roofs by using native plants from old roofs and walls
    Esfahani, Razieh Ebadati
    Paco, Teresa A.
    Martins, Diana
    Arsenio, Pedro
    ECOLOGICAL ENGINEERING, 2022, 178
  • [39] Cooling Performances on Rainless Days of Extensive Green Roofs Planted with Different Ornamental Species
    Lin, Yann-Jou
    Su, Ai-Tsen
    Lin, Bau-Show
    HORTSCIENCE, 2017, 52 (03) : 467 - 474
  • [40] Energy performance assessment and optimization of extensive green roofs in different climate zones of China
    Ran, Jiandong
    Yang, Zhenjing
    Feng, Ya
    Xiong, Ke
    Tang, Mingfang
    12TH NORDIC SYMPOSIUM ON BUILDING PHYSICS (NSB 2020), 2020, 172