Time Series Seasonal Analysis Based on Fuzzy Transforms

We define a new seasonal forecasting method based on fuzzy transforms. We use the best interpolating polynomial for extracting the trend of the time series and generate the inverse fuzzy transform on each seasonal subset of the universe of discourse for predicting the value of an assigned output. In...

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Main Authors: Ferdinando Di Martino, Salvatore Sessa
Format: Article
Language:English
Published: MDPI AG 2017-11-01
Series:Symmetry
Subjects:
Online Access:https://www.mdpi.com/2073-8994/9/11/281
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spelling doaj-fd57c4a68e9e467aab5b86849cd97bf22020-11-24T21:18:05ZengMDPI AGSymmetry2073-89942017-11-0191128110.3390/sym9110281sym9110281Time Series Seasonal Analysis Based on Fuzzy TransformsFerdinando Di Martino0Salvatore Sessa1Dipartimento di Architettura, Università degli Studi di Napoli Federico II, via Toledo 402, 80134 Napoli, ItalyDipartimento di Architettura, Università degli Studi di Napoli Federico II, via Toledo 402, 80134 Napoli, ItalyWe define a new seasonal forecasting method based on fuzzy transforms. We use the best interpolating polynomial for extracting the trend of the time series and generate the inverse fuzzy transform on each seasonal subset of the universe of discourse for predicting the value of an assigned output. In the first example, we use the daily weather dataset of the municipality of Naples (Italy) starting from data collected from 2003 to 2015 making predictions on mean temperature, max temperature and min temperature, all considered daily. In the second example, we use the daily mean temperature measured at the weather station “Chiavari Caperana” in the Liguria Italian Region. We compare the results with our method, the average seasonal variation, Auto Regressive Integrated Moving Average (ARIMA) and the usual fuzzy transforms concluding that the best results are obtained under our approach in both examples. In addition, the comparison results show that, for seasonal time series that have no consistent irregular variations, the performance obtained with our method is comparable with the ones obtained using Support Vector Machine- and Artificial Neural Networks-based models.https://www.mdpi.com/2073-8994/9/11/281ARIMAforecastingfuzzy partitionfuzzy transformtime series
collection DOAJ
language English
format Article
sources DOAJ
author Ferdinando Di Martino
Salvatore Sessa
spellingShingle Ferdinando Di Martino
Salvatore Sessa
Time Series Seasonal Analysis Based on Fuzzy Transforms
Symmetry
ARIMA
forecasting
fuzzy partition
fuzzy transform
time series
author_facet Ferdinando Di Martino
Salvatore Sessa
author_sort Ferdinando Di Martino
title Time Series Seasonal Analysis Based on Fuzzy Transforms
title_short Time Series Seasonal Analysis Based on Fuzzy Transforms
title_full Time Series Seasonal Analysis Based on Fuzzy Transforms
title_fullStr Time Series Seasonal Analysis Based on Fuzzy Transforms
title_full_unstemmed Time Series Seasonal Analysis Based on Fuzzy Transforms
title_sort time series seasonal analysis based on fuzzy transforms
publisher MDPI AG
series Symmetry
issn 2073-8994
publishDate 2017-11-01
description We define a new seasonal forecasting method based on fuzzy transforms. We use the best interpolating polynomial for extracting the trend of the time series and generate the inverse fuzzy transform on each seasonal subset of the universe of discourse for predicting the value of an assigned output. In the first example, we use the daily weather dataset of the municipality of Naples (Italy) starting from data collected from 2003 to 2015 making predictions on mean temperature, max temperature and min temperature, all considered daily. In the second example, we use the daily mean temperature measured at the weather station “Chiavari Caperana” in the Liguria Italian Region. We compare the results with our method, the average seasonal variation, Auto Regressive Integrated Moving Average (ARIMA) and the usual fuzzy transforms concluding that the best results are obtained under our approach in both examples. In addition, the comparison results show that, for seasonal time series that have no consistent irregular variations, the performance obtained with our method is comparable with the ones obtained using Support Vector Machine- and Artificial Neural Networks-based models.
topic ARIMA
forecasting
fuzzy partition
fuzzy transform
time series
url https://www.mdpi.com/2073-8994/9/11/281
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