1. A novel distributed forecasting method based on information fusion and incremental learning for streaming time series.
- Author
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Melgar-García, Laura, Gutiérrez-Avilés, David, Rubio-Escudero, Cristina, and Troncoso, Alicia
- Subjects
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MACHINE learning , *TIME series analysis , *DEMAND forecasting , *FORECASTING , *K-nearest neighbor classification , *ELECTRIC power consumption , *DISTRIBUTED algorithms , *PATTERN matching - Abstract
Real-time algorithms have to adapt and adjust to new incoming patterns to provide timely and accurate responses. This paper presents a new distributed forecasting algorithm for streaming time series called StreamWNN. StreamWNN starts with an offline stage in which a forecasting model based on tuples of information fusion is created with historical data. In particular, this model consists of the fusion of patterns composed of past values of the time series with the future values of their k-nearest neighbors. Afterwards, streaming data starts to arrive. The model is incrementally updated in the online stage using a buffer with streaming data that more accurately matches the current model patterns. The model can be updated daily, monthly, quarterly or based on error thresholds. The methodology has been applied to Spanish electricity demand time series providing more accurate results when the model is updated incrementally. The best error results are obtained with the daily update of the model, resulting in an error between 2% and 3.5% depending on the prediction horizon. The model provides better error results than other algorithms. • StreamWNN is a real-time forecasting algorithm for time series received in streaming. • The prediction model is based on the fusion of relevant information related to the nearest neighbors. • Incremental learning deals with the change of distribution of streaming data. • StreamWNN predicts accurately Spanish electricity consumption in real-time. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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