Abstract

Load forecasts are fundamental inputs for the reliable and resilient operation of a power system. Globally, researchers endeavor to improve the accuracy of their forecast models. However, lack of studies detailing standardized model development procedures remains a major issue. In this regard, this study advances the knowledge of the systematic development of short-term load forecast (STLF) models for electric power utilities. The proposed model has been developed by using hourly load (time series) of five years of an electric power utility in Pakistan. Following the investigation of previously developed load forecast models, this study addresses the challenges of STLF by utilizing multiple linear regression, bootstrap aggregated decision trees, and artificial neural networks (ANNs) as mutually competitive forecasting techniques. The study also highlights both rudimentary and advanced elements of data extraction, synthetic weather station development, and the use of elastic nets for feature space development to upscale its reproducibility at global level. Simulations showed the superior forecasting prowess of ANNs over other techniques in terms of mean absolute percentage error (MAPE), root mean squared error (RMSE) and R2 score. Furthermore, an empirical approach has been taken to underline the effects of data recency, climatic events, power cuts, human activities, and public holidays on the model’s overall performance. Further analysis of the results showed how climatic variations, causing floods and heavy rainfalls, could prove detrimental for a utility’s ability to forecast its load demand in future.

Highlights

  • Load forecasts are fundamental inputs for a reliable, smooth, and resilient operation of any power system

  • This paper presents a comprehensive and reproducible process of model development, model’s training, and testing for a power utility, Islamabad Electric Supply Company (IESCO) in Pakistan which can be potentially reproduced for other similar distribution companies as well

  • This remained consistent for multiple linear regression (MLR), bagged regression trees (BRT), and artificial neural networks (ANNs)

Read more

Summary

Introduction

Load forecasts are fundamental inputs for a reliable, smooth, and resilient operation of any power system. With the advent of smart grid technologies, forecast models are required to consider new elements such as demand response, demand-side management, and distributed energy resources to maintain desired reliability. Forecasting electricity demand is pivotal for maintaining the balance between electricity supply and demand. The process of load forecasting introduces several factors which are responsible for influencing consumers’ electricity consumption patterns. A thorough consideration of these factors into a forecast model results in reliable forecasts.

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call