Abstract

The intensive industrial development in special economic zones, such as Thailand’s Eastern Economic Corridor, increases energy consumption, leading to an imbalance of energy supply and a challenge for energy management. Electricity consumption at a local level is crucial for utility planners to manage and invest in the electrical grid. With this study, we propose an electricity consumption estimation model at the district level using machine learning with publicly available statistical data and built-up area (BU), area of lit (AL), and sum of light intensity (SL) data extracted from Landsat 8 and Suomi NPP satellite nighttime light images. The models created from three machine learning algorithms, which included Multiple Linear Regression (MR), Decision Tree (DT), and Support Vector Regression (SVR), were compared. The results show that (1) electricity consumption is highly correlated with SL, AL, and BU; and (2) the DT model demonstrated a better performance in predicting local electricity consumption when compared to MR and SVR with the lowest error rate and highest R2. The local government in developing countries with limited data and financial resources can adopt the proposed approach to benefit from utilizing commonly available remote sensing and statistical data with simple machine learning models such as DT (regression method) for sustainable electricity management.

Highlights

  • Nowadays, energy has become an essential support for economic growth and is a rapid indicator of human living standards

  • The Pearson correlation coefficients were calculated to determine the correlation among variables

  • The Gross Domestic Product 4 (GDP) provided a high correlation to total electricity consumption at 0.83. These results suggest that the variables extracted from remote sensing products could estimate the electricity consumption at the district level

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Summary

Introduction

Energy has become an essential support for economic growth and is a rapid indicator of human living standards. Energy consumption can be explained by many factors, including economic growth, non-agricultural GDP, population, and urbanization [2]. Many pieces of previous research have focused on how energy consumption relates to Human Development Index (HDI) at the national level in developed countries [3,4,5]. These studies aim to sustain the welfare of developed countries through energy demand and its footprint. Estimating electricity consumption enhances the understanding of human activities in the region and helps authorities determine the appropriate electricity supply [6]

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