4.6 Article

Stride-TCN for Energy Consumption Forecasting and Its Optimization

期刊

APPLIED SCIENCES-BASEL
卷 12, 期 19, 页码 -

出版社

MDPI
DOI: 10.3390/app12199422

关键词

temporal convolutional networks; deep learning; time-series forecasting

资金

  1. Korea Electric Power Research Institute (KEPRI) - Korea Electric Power Corporation (KEPCO) [R20IA02]
  2. Institute of Information & communications Technology Planning & Evaluation (IITP) - Korean government (MSIT) [2021-0-02068]

向作者/读者索取更多资源

This study proposes a lightweight temporal convolutional network (TCN) model for resource-constrained systems, which achieves the same accuracy as the heavy counterpart through a stride-dilation mechanism. Experimental results show that the model reduces the mean squared error by 32.7% compared to the baseline TCN.
Forecasting, commonly used in econometrics, meteorology, or energy consumption prediction, is the field of study that deals with time series data to predict future trends. Former studies have revealed that both traditional statistical models and recent deep learning-based approaches have achieved good performance in forecasting. In particular, temporal convolutional networks (TCNs) have proved their effectiveness in several time series benchmarks. However, presented TCN models are too heavy to deploy on resource-constrained systems, such as edge devices. As a resolution, this study proposes a stride-dilation mechanism for TCN that favors a lightweight model yet still achieves on-pair accuracy with the heavy counterparts. We also present the Chonnam National University (CNU) Electric Power Consumption dataset, the dataset of energy consumption measured at CNU by smart meters every hour. The experimental results indicate that our best model reduces the mean squared error by 32.7%, whereas the model size is only 1.6% compared to the baseline TCN.

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