Abstract

The increase of energy consumption in the world is reflected in the consumption of natural gas. However, this increment requires additional investment. This effect leads imbalances in terms of demand forecasting, such as applying penalties in the case of error rates occurring beyond the acceptable limits. As the forecasting errors increase, penalties increase exponentially. Therefore, the optimal use of natural gas as a scarce resource is important. There are various demand forecast ranges for natural gas and the most difficult range among these demands is the day-ahead forecasting, since it is hard to implement and makes predictions with low error rates. The objective of this study is stabilizing gas tractions on day-ahead demand forecasting using low-consuming subscriber data for minimizing error using univariate artificial bee colony-based artificial neural networks (ANN-ABC). For this purpose, households and low-consuming commercial users’ four-year consumption data between the years of 2011–2014 are gathered in daily periods. Previous consumption values are used to forecast day-ahead consumption values with sliding window technique and other independent variables are not taken into account. Dataset is divided into two parts. First, three-year daily consumption values are used with a seven day window for training the networks, while the last year is used for the day-ahead demand forecasting. Results show that ANN-ABC is a strong, stable, and effective method with a low error rate of 14.9 mean absolute percentage error (MAPE) for training utilizing MAPE with a univariate sliding window technique.

Highlights

  • The global demand for clean energy resources that meet the increasing need of energy demands is rising day by day

  • This paper studies forecasting day-ahead natural gas demand

  • This study examines forecasting with a back propagation learning based neural network and an artificial bee colony learning based feedforward network

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Summary

Introduction

The global demand for clean energy resources that meet the increasing need of energy demands is rising day by day. Since the early 1990s, natural gas is used more for these energy resources. While household users consume natural gas for heating, cooking and hot water, factory users utilize them for power generation, transportation, processing, heating, cooling and cooking. The cost and selling price of natural gas are affected by natural gas consumption of high-use industrial subscribers with expenditure items of energy. Forecasting year ahead natural gas demands close to actual consumption is important to industrial subscribers. Industrial subscribers’ consumption needs to be predictable, household and low-consuming subscribers do not have to know in advance.

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