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引用次数: 6
摘要
由于天然气的许多优点,对天然气的需求大幅增加,并开发了许多预测天然气消耗的模型。本文的目的是对2002年至2017年住宅和商业用天然气消费预测的最新研究论文进行概述和系统分析。文献综述分析使用两个最相关的科学数据库Web of Science Core Collection和Scopus进行。结果表明,神经网络是预测天然气消费量最常用的方法,而最准确的方法是遗传算法、支持向量机和ANFIS。最常用的输入变量是过去的天然气消费数据和天气数据,最常用的预测是在国家和地区层面的每日和年度水平上进行的。该研究的局限性源于相对较少的分析论文,但该研究仍可用于显著改进天然气消费预测模型。
Analysis of methods and techniques for prediction of natural gas consumption
Due to its many advantages, demand for natural gas has increased considerably and many models for predicting natural gas consumption are developed. The aim of this paper is to present an overview and systematic analysis of the latest research papers that deal with predictions of natural gas consumption for residential and commercial use from the year 2002 to 2017. Literature overview analysis was conducted using the two most relevant scientific databases Web of Science Core Collection and Scopus. The results indicate neural networks as the most common method used for predictions of natural gas consumption, while most accurate methods are genetic algorithms, support vector machines and ANFIS. Most used input variables are past natural gas consumption data and weather data, and prediction is most commonly made on daily and annual level on a country area level. Limitations of the research raise from relatively small number of analyzed papers but still research could be used for significant improving of prediction models for natural gas consumption.