Improvement and Evaluation of Estimation of Time Series Data of Daily Life

T. Hochin, Hiroki Nomiya
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引用次数: 1

Abstract

This paper improves the estimation of the amounts of sewage flow, which is one of daily life data, in order to manage them efficiently. The amounts of flow of a typical day are tried to be adjusted to those of a non-regular day. A typical (non-regular, respectively) day is a non-rainy day having good data and no (a few) outliers. The values for the adjustment are tried to be estimated by using the multiple regression analysis. It is shown that the estimation can be improved, and these values can be estimated by using the temperature of that day, the amount of the rain fall of the previous day, and the day type, which distinguishes a weekday, Saturday, Sunday, and a national holiday. The estimation is tried to be used in estimating the data of a regular day. It is experimentally shown that the estimation works well.
日常生活时间序列数据估计的改进与评价
本文对日常生活数据之一的污水流量估算进行了改进,以便对其进行有效的管理。一个典型的一天的流量试图调整到那些不规律的一天。一个典型的(分别是非规则的)日子是一个没有下雨的日子,有良好的数据,没有(几个)异常值。尝试用多元回归分析对平差值进行估计。结果表明,可以改进估计,利用当天的温度、前一天的降雨量和区分工作日、星期六、星期日和国家法定假日的日类型来估计这些值。试图将该估计用于估计常规日的数据。实验结果表明,该方法具有良好的估计效果。
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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