In this paper a statistical study on the time series of water levels measured, during the 2014, in the water tank of Cesine, Avellino (Italy) is presented. In particular, the ARIMA forecasting methodology is applied to model and forecast the daily water levels. This technique combines the autoregression and the moving average approaches, with the possibility to differentiate the data, to make the series stationary. In order to better describe the trend, over the time, of the water levels in the reservoir, three ARIMA models are calibrated, validated and compared: ARIMA (2,0,2), ARIMA (3,1,3), ARIMA (6,1,6). After a preliminary statistical characterization of the series, the models’ parameters are calibrated on the data related to the first 11 months of 2014, in order to keep last month of data for validating the results. For each model, a graphical comparison with the observed data is presented, together with the calculation of the summary statistics of the residuals and of some error metrics. The results are discussed and some further possible applications are highlighted in the conclusions.

On the use of ARIMA models for short-term water tank levels forecasting

Viccione, G.
Membro del Collaboration Group
;
Guarnaccia, C.
Membro del Collaboration Group
;
Mancini, S.
Membro del Collaboration Group
;
Quartieri, J.
Membro del Collaboration Group
2019-01-01

Abstract

In this paper a statistical study on the time series of water levels measured, during the 2014, in the water tank of Cesine, Avellino (Italy) is presented. In particular, the ARIMA forecasting methodology is applied to model and forecast the daily water levels. This technique combines the autoregression and the moving average approaches, with the possibility to differentiate the data, to make the series stationary. In order to better describe the trend, over the time, of the water levels in the reservoir, three ARIMA models are calibrated, validated and compared: ARIMA (2,0,2), ARIMA (3,1,3), ARIMA (6,1,6). After a preliminary statistical characterization of the series, the models’ parameters are calibrated on the data related to the first 11 months of 2014, in order to keep last month of data for validating the results. For each model, a graphical comparison with the observed data is presented, together with the calculation of the summary statistics of the residuals and of some error metrics. The results are discussed and some further possible applications are highlighted in the conclusions.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11386/4733680
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