Abstract
Accurate electricity demand forecasting for a short horizon is very important for day-to-day control, scheduling, operation, planning, and stability of the power system. The main factors that affect the forecasting accuracy are deterministic variables and weather variables such as types of days and temperature. Due to the tropical climate of Thailand, the marginal impact of weather variables on electricity demand is worth analyzing. Therefore, this paper primarily focuses on the impact of temperature and other deterministic variables on Thai electricity demand. Accuracy improvement is also considered during model design. Based on the characteristics of demand, the overall dataset is divided into four different subgroups and models are developed for each subgroup. The regression models are estimated using Ordinary Least Square (OLS) methods for uncorrelated errors, and General Least Square (GLS) methods for correlated errors, respectively. While Feed Forward Artificial Neural Network (FF-ANN) as a simple Deep Neural Network (DNN) is estimated to compare the accuracy with regression methods, several experiments conducted for determination of training length, selection of variables, and the number of neurons show some major findings. The first finding is that regression methods can have better forecasting accuracy than FF-ANN for Thailand’s dataset. Unlike much existing literature, the temperature effect on Thai electricity demand is very interesting because of their linear relationship. The marginal impacts of temperature on electricity demand are also maximal at night hours. The maximum impact of temperature during night hours happens at 11 p.m., is 300 MW/ ° C, about 4 % rise in demand while during day hours, the temperature impact is only 10 MW/ ° C to 200 MW/ ° C about 1.4 % to 2.6 % rise.
Highlights
The Electric Supply Industry of Thailand consists of Electricity Generating Authority of Thailand (EGAT), Metropolitan Electricity Authority (MEA), and Provincial Electricity Authority (PEA); where EGAT is responsible for generation, MEA for distribution in the metropolitan area around
Insufficient feature abstraction could happen in a short length of the training dataset
Considering a longer training dataset, the forecasting accuracy can be affected if the historical pattern of data significantly differs from the most recent data [66]
Summary
Thailand has 100% access to electricity [1] for both urban and rural areas with the second-largest economy and the fourth-largest country by population in Southeast Asia. Such population and the economic growth lead to an increment of electricity demand by an annual average of 684 MW since 1987 [2]. The Electric Supply Industry of Thailand consists of Electricity Generating Authority of Thailand (EGAT), Metropolitan Electricity Authority (MEA), and Provincial Electricity Authority (PEA); where EGAT is responsible for generation, MEA for distribution in the metropolitan area around. PEA distribution in the rest of the country. The scope of our paper is centered on the metropolitan areas
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