• DocumentCode
    62955
  • Title

    Accelerated Continuous Conditional Random Fields For Load Forecasting

  • Author

    Hongyu Guo

  • Author_Institution
    Nat. Res. Council of Canada, Ottawa, ON, Canada
  • Volume
    27
  • Issue
    8
  • fYear
    2015
  • fDate
    Aug. 1 2015
  • Firstpage
    2023
  • Lastpage
    2033
  • Abstract
    Increasingly, aiming to contain their rapidly growing energy expenditures, commercial buildings are equipped to respond to utility´s demand and price signals. Such smart energy consumption, however, heavily relies on accurate short-term energy load forecasting, such as hourly predictions for the next n (n ≥ 2) hours. To attain sufficient accuracy for these predictions, it is important to exploit the relationships among the n estimated outputs. This paper treats such multi-steps ahead regression task as a sequence labeling (regression) problem, and adopts the continuous conditional random fields (CCRF) to explicitly model these interconnected outputs. In particular, we improve the CCRF´s computation complexity and predictive accuracy with two novel strategies. First, we employ two tridiagonal matrix computation techniques to significantly speed up the CCRF´s training and inference. These techniques tackle the cubic computational cost required by the matrix inversion calculations in the training and inference of the CCRF, resulting in linear complexity for these matrix operations. Second, we address the CCRF´s weak feature constraint problem with a novel multi-target edge function, thus boosting the CCRF´s predictive performance. The proposed multi-target feature is able to convert the relationship of related outputs with continuous values into a set of “sub-relationships”, each providing more specific feature constraints for the interplays of the related outputs. We applied the proposed approach to two real-world energy load prediction systems: one for electricity demand and another for gas usage. Our experimental results show that the proposed strategy can meaningfully reduce the predictive error for the two systems, in terms of mean absolute percentage error and root mean square error, when compared with three benchmarking methods. Promisingly, the relative error reduction achieved by our CCRF model was up to 50 percent.
  • Keywords
    least mean squares methods; load forecasting; matrix algebra; CCRF; accelerated continuous conditional random fields; cubic computational cost; electricity demand; linear complexity; load forecasting; matrix inversion calculations; multisteps ahead regression task; multitarget edge function; root mean square error; sequence labeling; tridiagonal matrix computation techniques; Computational modeling; Correlation; Electricity; Equations; Load modeling; Mathematical model; Training; Continuous Conditional Random Fields; Continuous conditional random fields; Energy Demand Forecast; Multi-target Decision Trees; Tridiagonal Matrix; energy demand forecast; multi-target decision trees; tridiagonal matrix;
  • fLanguage
    English
  • Journal_Title
    Knowledge and Data Engineering, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1041-4347
  • Type

    jour

  • DOI
    10.1109/TKDE.2015.2399311
  • Filename
    7039287