Abstract

Accurate electrical load forecasting is of great significance to help power companies in better scheduling and efficient management. Since high levels of uncertainties exist in the load time series, it is a challenging task to make accurate short-term load forecast (STLF). In recent years, deep learning approaches provide better performance to predict electrical load in real world cases. The convolutional neural network (CNN) can extract the local trend and capture the same pattern, and the long short-term memory (LSTM) is proposed to learn the relationship in time steps. In this paper, a new deep neural network framework that integrates the hidden feature of the CNN model and the LSTM model is proposed to improve the forecasting accuracy. The proposed model was tested in a real-world case, and detailed experiments were conducted to validate its practicality and stability. The forecasting performance of the proposed model was compared with the LSTM model and the CNN model. The Mean Absolute Error (MAE), Mean Absolute Percentage Error (MAPE) and Root Mean Square Error (RMSE) were used as the evaluation indexes. The experimental results demonstrate that the proposed model can achieve better and stable performance in STLF.

Highlights

  • Demand Response Management (DRM) is one of the main features in smart grid that helps to reduce power peak load and variation [1]

  • From the point of view of these three indexes, t the proposed model can improve performance by at least 9% compared to the DeepEnergy, 12% compared to the convolutional neural network (CNN) module, and 14% compared to the long short-term memory (LSTM) module

  • The results prove that the integration of the hidden features of CNN model and LSTM model is effective in load forecast and can improve the prediction stability

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Summary

Introduction

Demand Response Management (DRM) is one of the main features in smart grid that helps to reduce power peak load and variation [1]. The DRM controls the electricity consumption at the customer side and targets at improving energy-efficiency and reducing cost [2]. Accurate load forecasting has been more essential after deregulation of electricity industry [3]. It can minimize the gap between electricity supply and demand, while any error in the forecasting brings additional costs. Power companies are beginning to work with experts to explore models obtaining more accurate results in load forecasts

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