Autocorrelation Structure Analysis and Auto Regressive Prediction of the Time Series of Mean Monthly Total Ozone over Arosa, Switzerland
نویسندگان
چکیده
The purpose of the present study is to look into the characteristics of the mean monthly total ozone time series over Arosa (46.8N/ 9.68E), Switzerland using statistical methodologies. In this paper, the time series pertains to the data between 1932 and 1971. The intrinsic deterministic patterns of the time series have been investigated through autocorrelation analysis. A second order Auto Regressive Model is tested for prediction potential.
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