Explainable artificial intelligence for reliable water demand forecasting to increase trust in predictions

被引:0
|
作者
Maußner, Claudia [1 ]
Oberascher, Martin [2 ]
Autengruber, Arnold [3 ]
Kahl, Arno [3 ]
Sitzenfrei, Robert [2 ]
机构
[1] Fraunhofer Austria Research GmbH KI4LIFE, Lakeside B13a, 9020 Klagenfurt am Wörthersee, Austria
[2] Unit of Environmental Engineering, Department of Infrastructure Engineering, University of Innsbruck, Technikerstraße 13, Innsbruck,6020, Austria
[3] Department for Public Law, Constitutional and Administrative Theory, University of Innsbruck, Innrain 52d, Innsbruck,6020, Austria
关键词
Prediction models;
D O I
10.1016/j.watres.2024.122779
中图分类号
学科分类号
摘要
The EU Artificial Intelligence Act sets a framework for the implementation of artificial intelligence (AI) in Europe. As a legal assessment reveals, AI applications in water supply systems are categorised as high-risk AI if a failure in the AI application results in a significant impact on physical infrastructure or supply reliability. The use case of water demand forecasts with AI for automatic tank operation is for example categorised as high-risk AI and must fulfil specific requirements regarding model transparency (traceability, explainability) and technical robustness (accuracy, reliability). To this end, six widely established machine learning models, including both transparent and opaque models, are applied to different datasets for daily water demand forecasting and the requirements regarding model accuracy, transparency and technical robustness are systematically evaluated for this use case. Opaque models generally achieve higher prediction accuracy compared to transparent models due to their ability to capture the complex relationship between parameters like for example weather data and water demand. However, this also makes them vulnerable to deviations and irregularities in weather forecasts and historical water demand. In contrast, transparent models rely mainly on historical water demand data for the utilised dataset and are less influenced by weather data, making them more robust against various data irregularities. In summary, both transparent and opaque models can fulfil the requirements regarding explainability but differ in their level of transparency and robustness to input errors. The choice of model depends also on the operator's preferences and the context of the application. © 2024
引用
下载
收藏
相关论文
共 50 条
  • [41] Guest Editorial: Artificial intelligence-empowered reliable forecasting for energy sectors
    Mahmoud, Karar
    Guerrero, Josep M.
    Abdel-Nasser, Mohamed
    Yorino, Naoto
    IET GENERATION TRANSMISSION & DISTRIBUTION, 2024, 18 (05) : 881 - 884
  • [42] Effects of Explainable Artificial Intelligence on trust and human behavior in a high-risk decision task
    Leichtmann, Benedikt
    Humer, Christina
    Hinterreiter, Andreas
    Streit, Marc
    Mara, Martina
    COMPUTERS IN HUMAN BEHAVIOR, 2023, 139
  • [43] Long-term water demand forecasting using artificial intelligence models in the Tuojiang River basin, China
    Shu, Jun
    Xia, Xinyu
    Han, Suyue
    He, Zuli
    Pan, Ke
    Liu, Bin
    PLOS ONE, 2024, 19 (05):
  • [44] Comparison of Inputs Correlation and Explainable Artificial Intelligence Recommendations for Neural Networks Forecasting Electricity Consumption
    Ramos, Daniel
    Faria, Pedro
    Vale, Zita
    ENERGY INFORMATICS, EI.A 2023, PT II, 2024, 14468 : 51 - 62
  • [45] Gaining Insight Into Solar Photovoltaic Power Generation Forecasting Utilizing Explainable Artificial Intelligence Tools
    Kuzlu, Murat
    Cali, Umit
    Sharma, Vinayak
    Guler, Ozgur
    IEEE ACCESS, 2020, 8 (08): : 187814 - 187823
  • [46] An Interpretable Solar Photovoltaic Power Generation Forecasting Approach Using An Explainable Artificial Intelligence Tool
    Sarp, Salih
    Kuzlu, Murat
    Cali, Umit
    Elma, Onur
    Guler, Ozgur
    2021 IEEE POWER & ENERGY SOCIETY INNOVATIVE SMART GRID TECHNOLOGIES CONFERENCE (ISGT), 2021,
  • [47] A Cross-View Model for Tourism Demand Forecasting with Artificial Intelligence Method
    Han, Siming
    Guo, Yanhui
    Cao, Han
    Feng, Qian
    Li, Yifei
    DATA SCIENCE, PT 1, 2017, 727 : 573 - 582
  • [48] Interpretation of ensemble learning to predict water quality using explainable artificial intelligence
    Park, Jungsu
    Lee, Woo Hyoung
    Kim, Keug Tae
    Park, Cheol Young
    Lee, Sanghun
    Heo, Tae-Young
    SCIENCE OF THE TOTAL ENVIRONMENT, 2022, 832
  • [49] Demand forecasting application with regression and artificial intelligence methods in a construction machinery company
    Aktepe, Adnan
    Yanik, Emre
    Ersoz, Suleyman
    JOURNAL OF INTELLIGENT MANUFACTURING, 2021, 32 (06) : 1587 - 1604
  • [50] Research on the demand forecasting model of intelligent tourist attractions based on the artificial intelligence
    Jiang, Xiaohan
    BASIC & CLINICAL PHARMACOLOGY & TOXICOLOGY, 2020, 126 : 40 - 40