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Endowing data-driven models with rejection ability: Out-of-distribution detection and confidence estimation for black-box models of building energy systems

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Listed:
  • Liang, Xinbin
  • Zhu, Xu
  • Chen, Kang
  • Chen, Siliang
  • Jin, Xinqiao
  • Du, Zhimin

Abstract

As one of the most popular modeling methods, data-driven methods would fail easily when the online data are outside the scope of training data. To tackle this problem, this paper proposed a novel concept named as the rejection ability of data-driven models. Its main idea is rejecting the unreliable predictions based on the threshold which can be either calculated from out-of-distribution detection model or the confidence score. To compare with traditional data-driven models, three evaluation metrics are derived from the rejection table to quantify model performance. The usefulness of rejection method is validated through the fault detection and diagnosis problem of chillers. The ASHARE RP-1043 dataset is adopted to conduct the data experiments where the in-distribution performance and out-of-distribution performance of three task models, including RF, ET and ANN, and their combinations with four rejection methods, including AE-MSE, AE-MAE, Entropy and Max probability, are comprehensively investigated. The experimental results indicate that the model performance improves for a large margin with the introduction of rejection method. The optimal combination is ET-Entropy model, where its threshold selection is discussed for different application scenarios. The proposed rejection methods might provide a solid foundation for the real-world application of data-driven models.

Suggested Citation

  • Liang, Xinbin & Zhu, Xu & Chen, Kang & Chen, Siliang & Jin, Xinqiao & Du, Zhimin, 2023. "Endowing data-driven models with rejection ability: Out-of-distribution detection and confidence estimation for black-box models of building energy systems," Energy, Elsevier, vol. 263(PC).
  • Handle: RePEc:eee:energy:v:263:y:2023:i:pc:s036054422202744x
    DOI: 10.1016/j.energy.2022.125858
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    References listed on IDEAS

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    1. Li, Ao & Xiao, Fu & Zhang, Chong & Fan, Cheng, 2021. "Attention-based interpretable neural network for building cooling load prediction," Applied Energy, Elsevier, vol. 299(C).
    2. Zhu, Xu & Zhang, Shuai & Jin, Xinqiao & Du, Zhimin, 2020. "Deep learning based reference model for operational risk evaluation of screw chillers for energy efficiency," Energy, Elsevier, vol. 213(C).
    3. Bünning, Felix & Huber, Benjamin & Schalbetter, Adrian & Aboudonia, Ahmed & Hudoba de Badyn, Mathias & Heer, Philipp & Smith, Roy S. & Lygeros, John, 2022. "Physics-informed linear regression is competitive with two Machine Learning methods in residential building MPC," Applied Energy, Elsevier, vol. 310(C).
    4. Fan, Cheng & Xiao, Fu & Zhao, Yang & Wang, Jiayuan, 2018. "Analytical investigation of autoencoder-based methods for unsupervised anomaly detection in building energy data," Applied Energy, Elsevier, vol. 211(C), pages 1123-1135.
    5. Zhang, Liang & Wen, Jin & Li, Yanfei & Chen, Jianli & Ye, Yunyang & Fu, Yangyang & Livingood, William, 2021. "A review of machine learning in building load prediction," Applied Energy, Elsevier, vol. 285(C).
    6. Wang, Zhanwei & Wang, Zhiwei & He, Suowei & Gu, Xiaowei & Yan, Zeng Feng, 2017. "Fault detection and diagnosis of chillers using Bayesian network merged distance rejection and multi-source non-sensor information," Applied Energy, Elsevier, vol. 188(C), pages 200-214.
    7. Zhao, Yang & Wang, Shengwei & Xiao, Fu, 2013. "Pattern recognition-based chillers fault detection method using Support Vector Data Description (SVDD)," Applied Energy, Elsevier, vol. 112(C), pages 1041-1048.
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    Cited by:

    1. Manfren, Massimiliano & Nastasi, Benedetto, 2023. "Interpretable data-driven building load profiles modelling for Measurement and Verification 2.0," Energy, Elsevier, vol. 283(C).

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