Temperature Estimation with Time Series Analysis from Air Quality Data Set

Zeynep Ozpolat, M. Karabatak
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引用次数: 2

Abstract

With the expansion of the data size, data mining techniques are gaining more and more importance. Data mining consists of methods such as classification, clustering, time series estimation and association rule. In this study, a time series analysis is carried out in order to make an estimation for the future in accordance with the structure of the data set. Time series are series in which the variables are recorded in chronological order. The data set was created by recording the gas concentrations in the air at a time interval. These data are used to estimate the changes in air quality. Three types of time series analysis training algorithm are used in the study. The results given by the algorithms are close to each other and high performance has been determined. As a result of experimental studies, it is observed that time series analysis is sufficient to estimate air quality.
基于空气质量数据集时间序列分析的温度估计
随着数据规模的不断扩大,数据挖掘技术越来越受到人们的重视。数据挖掘包括分类、聚类、时间序列估计和关联规则等方法。在本研究中,通过时间序列分析,根据数据集的结构对未来进行估计。时间序列是按时间顺序记录变量的序列。数据集是通过每隔一段时间记录空气中的气体浓度而产生的。这些数据被用来估计空气质量的变化。研究中使用了三种时间序列分析训练算法。各算法的计算结果基本一致,具有较高的性能。实验结果表明,时间序列分析足以估计空气质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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