SEASONAL TIME-SERIES IMPUTATION OF GAP MISSING ALGORITHM (STIGMA)

被引:0
|
作者
Rangel-heras, Eduardo [1 ]
Zuniga, Pavel [1 ]
Alanis, Alma y. [1 ]
Hernadez-vargas, Esteban a. [2 ]
Sanchez, Oscar d. [1 ]
机构
[1] Univ Guadalajara, Dept Odontol Integral Clin, Blvd Gral Marcelino Garciıa Barragain,CP 444, Guadalajara 1421, Mexico
[2] Univ Idaho, Dept Math & Stat Sci, Moscow, ID USA
关键词
contiguous missing values; seasonal patterns; time-series;
D O I
10.14736/kyb-2023-6-0861
中图分类号
TP3 [计算技术、计算机技术];
学科分类号
0812 ;
摘要
This work presents a new approach for the imputation of missing data in weather timeseries from a seasonal pattern; the seasonal time-series imputation of gap missing algorithm (STIGMA). The algorithm takes advantage from a seasonal pattern for the imputation of unknown data by averaging available data. We test the algorithm using data measured every 10 minutes over a period of 365 days during the year 2010; the variables include global irradiance, diffuse irradiance, ultraviolet irradiance, and temperature, arranged in a matrix of dimensions 52,560 rows for data points over time and 4 columns for weather variables. The particularity of this work is that the algorithm is well-suited for the imputation of values when the missing data are presented continuously and in seasonal patterns. The algorithm employs a date-time index to collect available data for the imputation of missing data, repeating the process until all missing values are calculated. The tests are performed by removing 5%, 10%, 15%, 20%, 25%, and 30% of the available data, and the results are compared to autoregressive models. The proposed algorithm has been successfully tested with a maximum of 2, 736 contiguous missing values that account for 19 consecutive days of a single month; this dataset is a portion of all the missing values when the time-series lacks 30% of all data. The metrics to measure the performance of the algorithms are root-mean-square error (RMSE) and the coefficient of determination (R2). The results indicate that the proposed algorithm outperforms autoregressive models while preserving the seasonal behavior of the time-series. The STIGMA is also tested with non-weather time-series of beer sales and number of air passengers per month, which also have a cyclical pattern, and the results show the precise imputation of data.
引用
收藏
页码:861 / 879
页数:19
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