Abstract

Prediction of electricity energy consumption plays a crucial role in the electric power industry. Accurate forecasting is essential for electricity supply policies. A characteristic feature of electrical energy is the need to ensure a constant balance between consumption and electricity production, whereas electricity cannot be stored in significant quantities, nor is it easy to transport. Electricity consumption generally has a stochastic behavior that makes it hard to predict. The main goal of this study is to propose the forecasting models to predict the maximum hourly electricity consumption per day that is more accurate than the official load prediction of the Slovak Distribution Company. Different models are proposed and compared. The first model group is based on the transverse set of Grey models and Nonlinear Grey Bernoulli models and the second approach is based on a multi-layer feed-forward back-propagation network. Moreover, a new potential hybrid model combining these different approaches is used to forecast the maximum hourly electricity consumption per day. Various performance metrics are adopted to evaluate the performance and effectiveness of models. All the proposed models achieved more accurate predictions than the official load prediction, while the hybrid model offered the best results according to performance metrics and supported the legitimacy of this research.

Highlights

  • Precise electrical energy consumption (EEC) forecasting is of great importance for the electric power industry

  • The results are divided into three parts, namely the prediction of grey models, the results of artificial neural networks, and the potential of hybridization

  • The results were maintained separately for the year 2019, which was not affected by pandemic lockdown, and the year 2020, which was affected in all provided results

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Summary

Introduction

Precise electrical energy consumption (EEC) forecasting is of great importance for the electric power industry. Electricity consumption can be directly or indirectly affected by various parameters. Such parameters include previous data of consumption, weather, population, industry, transportation, gross domestic product, and so on. Electricity consumption generally has a stochastic behavior that makes it hard to predict. Consumption overestimation would lead to redundant idle capacity, which would be a waste of funds. Underestimating, on the other hand, would lead to higher operating costs for energy suppliers and potential energy outages. Precise forecasting of electricity consumption is crucial to avoid costly errors

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