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
  • [31] Explainable Artificial Intelligence for 6G: Improving Trust between Human and Machine
    Guo, Weisi
    IEEE COMMUNICATIONS MAGAZINE, 2020, 58 (06) : 39 - 45
  • [32] Learning to Comprehend and Trust Artificial Intelligence Outcomes: A Conceptual Explainable AI Evaluation Framework
    Love P.E.D.
    Matthews J.
    Fang W.
    Porter S.
    Luo H.
    Ding L.
    IEEE Engineering Management Review, 2024, 52 (01): : 230 - 247
  • [33] An efficient mechanism for time series forecasting and anomaly detection using explainable artificial intelligence
    Amjad Iqbal
    Rashid Amin
    The Journal of Supercomputing, 81 (4)
  • [34] Explainable Artificial Intelligence for Crowd Forecasting Using Global Ensemble Echo State Networks
    Samarajeewa, Chamod
    De Silva, Daswin
    Manic, Milos
    Mills, Nishan
    Rathnayaka, Prabod
    Jennings, Andrew
    IEEE OPEN JOURNAL OF THE INDUSTRIAL ELECTRONICS SOCIETY, 2024, 5 : 415 - 427
  • [35] Artificial intelligence in the clinical setting Towards actual implementation of reliable outcome predictions
    Vistisen, Simon Tilma
    Pollard, Tom Joseph
    Harris, Steve
    Lauritsen, Simon Meyer
    EUROPEAN JOURNAL OF ANAESTHESIOLOGY, 2022, 39 (09) : 729 - 732
  • [36] Application of artificial intelligence models in water quality forecasting
    Yeon, I. S.
    Kim, J. H.
    Jun, K. W.
    ENVIRONMENTAL TECHNOLOGY, 2008, 29 (06) : 625 - 631
  • [37] Forecasting the River Water Discharge by Artificial Intelligence Methods
    Barbulescu, Alina
    Zhen, Liu
    WATER, 2024, 16 (09)
  • [38] Energy Demand Forecasting: Combining Cointegration Analysis and Artificial Intelligence Algorithm
    Huang, Junbing
    Tang, Yuee
    Chen, Shuxing
    MATHEMATICAL PROBLEMS IN ENGINEERING, 2018, 2018
  • [39] Electricity Demand Forecasting with Use of Artificial Intelligence: The Case of Gokceada Island
    Saglam, Mustafa
    Spataru, Catalina
    Karaman, Omer Ali
    ENERGIES, 2022, 15 (16)
  • [40] Forecasting River Water Temperature Using Explainable Artificial Intelligence and Hybrid Machine Learning: Case Studies in Menindee Region in Australia
    Briceno Medina, Leyde
    Joehnk, Klaus
    Deo, Ravinesh C.
    Ali, Mumtaz
    Prasad, Salvin S.
    Downs, Nathan
    Water (Switzerland), 2024, 16 (24)