Abstract

Electricity is an essential commodity that must be generated in response to demand. Hydroelectric power plants, fossil fuels, nuclear energy, and wind energy are just a few examples of energy sources that significantly impact production costs. Accurate load forecasting for a specific region would allow for more efficient management, planning, and scheduling of low-cost generation units and ensuring on-time energy delivery for full monetary benefit. Machine learning methods are becoming more effective on power grids as data availability increases. Ensemble learning models are hybrid algorithms that combine various machine learning methods and intelligently incorporate them into a single predictive model to reduce uncertainty and bias. In this study, several ensemble methods were implemented and tested for short-term electric load forecasting. The suggested method is trained using the influential meteorological variables obtained through correlation analysis and the past load. We used real-time load data from Nagaland’s load dispatch centre in India and meteorological parameters of the Nagaland region for data analysis. The synthetic minority over-sampling technique for regression (SMOTE-R) is also employed to avoid data imbalance issues. The experimental results show that the Bagging methods outperform other models with respect to mean squared error and mean absolute percentage error.

Highlights

  • Electricity load forecasting is the process of predicting future load based on various features, including weather conditions, time details such as the month and hour, economic conditions, energy tariffs, regional conditions are examples

  • Since accurate electricity load forecasting is critical in the power system, even minor improvements in load forecasting accuracy can result in substantial cost savings and environmental benefits[5]

  • An ensemble regressor was used to demonstrate a process of short term load forecasting in North-Eastern part of India

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Summary

Introduction

Load forecasting is a pivotal step for electric grids’ efficient operation and management in the day-ahead electricity market[1]. Owing to the rapid growth of renewable energy and the implementation of electric vehicles and other emerging technologies, the electric power grid has undergone significant changes in the last few years, both on the supply and demand lines[2]. It is essential to forecast future load demand to reduce the cost of generating electricity[15]. Electricity load forecasting is the process of predicting future load based on various features, including weather conditions, time details such as the month and hour, economic conditions, energy tariffs, regional conditions are examples. Since accurate electricity load forecasting is critical in the power system, even minor improvements in load forecasting accuracy can result in substantial cost savings and environmental benefits[5]. Effective load forecasting is critical for power-grid construction, investment, and transactions in order to ensure reliable and cost-effective power system operation[20]

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