Abstract

Short-term load forecast plays an important role in the day-to-day operation and scheduling of generating units. Season and temperature are the most important factors that affect the load change, but random factors such as big sport events or popular TV shows can change demand consumption in particular hours, which will lead to sudden load changes. A weighted time-variant slide fuzzy time-series model (WTVS) for short-term load forecasting is proposed to improve forecasting accuracy. The WTVS model is divided into three parts, including the data preprocessing, the trend training and the load forecasting. In the data preprocessing phase, the impact of random factors will be weakened by smoothing the historical data. In the trend training and load forecasting phase, the seasonal factor and the weighted historical data are introduced into the Time-variant Slide Fuzzy Time-series Models (TVS) for short-term load forecasting. The WTVS model is tested on the load of the National Electric Power Company in Jordan. Results show that the proposed WTVS model achieves a significant improvement in load forecasting accuracy as compared to TVS models.

Highlights

  • Load forecast has been a research topic for many decades and the accuracy of load forecast is crucial to electricity power industry due to its direct influence on generating planning

  • The weighted time-variant slide fuzzy time-series model (WTVS) model is divided into three parts, including the data preprocessing, the trend training and the load forecasting

  • The WTVS model is tested on the load of the National Electric Power Company in Jordan

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Summary

Introduction

Load forecast has been a research topic for many decades and the accuracy of load forecast is crucial to electricity power industry due to its direct influence on generating planning. Season and temperature are have the most influence to the load due to the fact that changes in temperature results in direct changes in energy consumption by heating and cooling appliances Random factors such as big sport events or popular TV shows can change demand consumption in particular hours, which will lead to sudden load changes. A number of load forecasting models have been presented in the last decades These models can be divided into traditional approaches [1] and the artificial intelligence methods [2]. Taking into account the affect of season, temperature, and random factors, a Weighted Time-variant Slide Fuzzy Time-series Forecasting Model (WTVS) is presented. In the trend training and load forecasting stage, the seasonal factor and the weight of history data are introduced into the TVS model. Results show that the WTVS model achieves a significant improvement in load forecasting accuracy as compared to TVS models

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