Abstract

This paper focuses on analytics of an extremely large dataset of smart grid electricity price and load, which is difficult to process with conventional computational models. These data are known as energy big data. The analysis of big data divulges the deeper insights that help experts in the improvement of smart grid’s (SG) operations. Processing and extracting of meaningful information from data is a challenging task. Electricity load and price are the most influential factors in the electricity market. For improving reliability, control and management of electricity market operations, an exact estimate of the day ahead load is a substantial requirement. Energy market trade is based on price. Accurate price forecast enables energy market participants to make effective and most profitable bidding strategies. This paper proposes a deep learning-based model for the forecast of price and demand for big data using Deep Long Short-Term Memory (DLSTM). Due to the adaptive and automatic feature learning mechanism of Deep Neural Network (DNN), the processing of big data is easier with LSTM as compared to the purely data-driven methods. The proposed model was evaluated using well-known real electricity markets’ data. In this study, day and week ahead forecasting experiments were conducted for all months. Forecast performance was assessed using Mean Absolute Error (MAE) and Normalized Root Mean Square Error (NRMSE). The proposed Deep LSTM (DLSTM) method was compared to traditional Artificial Neural Network (ANN) time series forecasting methods, i.e., Nonlinear Autoregressive network with Exogenous variables (NARX) and Extreme Learning Machine (ELM). DLSTM outperformed the compared forecasting methods in terms of accuracy. Experimental results prove the efficiency of the proposed method for electricity price and load forecasting.

Highlights

  • The Smart Grid (SG) is the modern and intelligent power grid that efficiently manages the generation, distribution and consumption of electricity

  • Big data are studied for load and price forecasting problem

  • Deep Long Short-Term Memory (LSTM) is proposed as a forecast model for short- and medium-term load and price forecasting

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Summary

Introduction

The Smart Grid (SG) is the modern and intelligent power grid that efficiently manages the generation, distribution and consumption of electricity. SG introduced communication, sensing and control technologies in power grids. It facilitates consumers in an economical, reliable, sustainable and secure manner. Consumers can manage their energy demand in an economical fashion based on Demand Side Management (DSM) [1]. The DSM program allows customers to manage their load demand according to the price variations. It offers energy consumers for load shifting and energy preservation in order to reduce the cost of power consumption. Customers partake in smart grid operations to reduce the price by load shifting and energy preservation

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