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Assessment of prediction performances of stochastic models: Monthly groundwater level prediction in Southern Italy
Authors:Boulariah O  Mikhailov PA  Longobardi A  Elizariev AN  Aksenov SG
Institution:1.Department of Civil Engineering, University of Salerno, Via Giovanni Paolo II, 123, 84084, Italy2.Ufa State Aviation Technical University, 450000, Russian Federation
Abstract:Stochastic modelling of hydrological time series with insufficient length and data gaps is a serious challenge since these problems significantly affect the reliability of statistical models predicting and forecasting skills. In this paper, we proposed a method for searching the seasonal autoregressive integrated moving average(SARIMA) model parameters to predict the behavior of groundwater time series affected by the issues mentioned. Based on the analysis of statistical indices, 8 stations among 44 available within the Campania region(Italy) have been selected as the highest quality measurements. Different SARIMA models, with different autoregressive, moving average and differentiation orders had been used.By reviewing the criteria used to determine the consistency and goodness-of-fit of the model, it is revealed that the model with specific combination of parameters, SARIMA(0,1,3)(0,1,2) _(12), has a high R~2 value,larger than 92%, for each of the 8 selected stations. The same model has also good performances for what concern the forecasting skills, with an average NSE of about 96%. Therefore, this study has the potential to provide a new horizon for the simulation and reconstruction of groundwater time series within the investigated area.
Keywords:Groundwater level forecast  Stochastic modelling  Southern Italy  Seasonality  Homogeneity
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