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Toprak Radon (222Rn) Gazı Anomalilerinin ARIMA Analizi

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dc.creator KAMIŞLIOĞLU, Miraç
dc.creator KÜLAHCI, Fatih
dc.creator NİKSARLIOĞLU, Seçil
dc.date 2014-12-31T00:00:00Z
dc.date.accessioned 2019-07-09T11:48:46Z
dc.date.available 2019-07-09T11:48:46Z
dc.identifier http://dergipark.org.tr/sdufeffd/issue/11280/134800
dc.identifier
dc.identifier.uri http://acikerisim.sdu.edu.tr/xmlui/handle/123456789/45803
dc.description Özet: Zaman serileri analizi, istatistik, ekonomi, fizik ve mühendislik gibi bilim dallarında geniş uygulama alanına sahiptir. Zaman serisi analizi, değişkenlerin gelecekteki değerlerinin doğru bir şekilde tahmin edilmesi için kullanılan bir yöntemdir. Bu çalışmada, bir deprem öncüsü olarak bilinen toprak radon gazı (222Rn) ölçümleri ile bir zaman serisi oluşturulmuştur. Bu veriler kullanılarak, otoregresif süreçler (ARIMA) yardımıyla dinamik sistem modellemesi yapılmıştır. ARIMA; zaman serileri analizinde, zaman içerisinde rastgele gerçekleşen bir stokastik (olasılıksal) sürecin veya hatalarının modellenmesidir. ARIMA modeli, temelde Box-Jenkins modeline dayanmaktadır. Box-Jenkins modeli, tek değişkenli zaman serilerinin ileriye dönük tahmin ve kontrolünde kullanılan istatistiksel tabanlı bir yöntemdir. Elde edilen sonuçlar, ARIMA modellerinin tahmin konusundaki başarısını göstermektedir. Anahtar kelimeler: Zaman Serileri Analizi, Radon Gazı (222Rn), ARIMAARIMA Analysis of Soil Radon (222Rn) Gas Anomalies Abstract: Time series analysis, has wide applications in statistics, economics, physics and engineering such disciplines. This method used for estimate correctly future values of the variables. In this study, is formed a time series with soil radon gas (222Rn) measurements known as a pioneer of an earthquake. Dynamic system modelling was performed with autoregressive (ARIMA) modelling process by used these measurements. ARIMA; time series analysis is modelled of the recoverable over time a random stochastic (probabilistic) process or its errors. ARIMA model is based on Box-Jenkins model. Box-Jenkins model is a statistically based method which is used forward-looking forecasting and control of univariate time series. The obtained results, ARIMA model is indicating success in predict subject.Key words: Time Series Analysis, Radon Gas (222Rn), ARIMA
dc.description Time series analysis, has wide applications in statistics, economics, physics and engineering such disciplines. This method used for estimate correctly future values of the variables. In this study, is formed a time series with soil radon gas (222Rn) measurements known as a pioneer of an earthquake. Dynamic system modelling was performed with autoregressive (ARIMA) modelling process by used these measurements. ARIMA; time series analysis is modelled of the recoverable over time a random stochastic (probabilistic) process or its errors. ARIMA model is based on Box-Jenkins model. BoxJenkins model is a statistically based method which is used forward-looking forecasting and control of univariate time series. The obtained results, ARIMA model is indicating success in predict subject
dc.format application/pdf
dc.language tr
dc.publisher Süleyman Demirel University
dc.publisher Süleyman Demirel Üniversitesi
dc.relation http://dergipark.org.tr/download/article-file/116410
dc.source Volume: 9, Issue: 2 93-99 en-US
dc.source 1306-7575
dc.subject Zaman Serileri Analizi, Radon Gazı (222Rn), ARIMA
dc.subject Zaman Serileri Analizi,Radon Gazı (222Rn),ARIMA
dc.title Toprak Radon (222Rn) Gazı Anomalilerinin ARIMA Analizi en-US
dc.title Toprak Radon (222Rn) Gazı Anomalilerinin ARIMA Analizi en-US
dc.type info:eu-repo/semantics/article


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