Abstract

Reservoir water level (RWL) prediction has become a challenging task due to spatio-temporal changes in climatic conditions and complicated physical process. The Red Hills Reservoir (RHR) is an important source of drinking and irrigation water supply in Thiruvallur district, Tamil Nadu, India, also expected to be converted into the other productive services in the future. However, climate change in the region is expected to have consequences over the RHR’s future prospects. As a result, accurate and reliable prediction of the RWL is crucial to develop an appropriate water release mechanism of RHR to satisfy the population’s water demand. In the current study, time series modelling technique was adopted for the RWL prediction in RHR using Box–Jenkins autoregressive seasonal autoregressive integrated moving average (SARIMA) and artificial neural network (ANN) hybrid models. In this research, the SARIMA model was obtained as SARIMA (0, 0, 1) (0, 3, 2)12 but the residual of the SARIMA model could not meet the autocorrelation requirement of the modelling approach. In order to overcome this weakness of the SARIMA model, a new SARIMA–ANN hybrid time series model was developed and demonstrated in this study. The average monthly RWL data from January 2004 to November 2020 was used for developing and testing the models. Several model assessment criteria were used to evaluate the performance of each model. The findings showed that the SARIMA–ANN hybrid model outperformed the remaining models considering all performance criteria for reservoir RWL prediction. Thus, this study conclusively proves that the SARIMA–ANN hybrid model could be a viable option for the accurate prediction of reservoir water level.

Highlights

  • IntroductionEach region has its own set of water quality and quantity concerns, depending on the climatic, geographic, geologic, social, and economic characteristics

  • The results show that the seasonal autoregressive integrated moving average (SARIMA)–artificial neural network (ANN) model performed better than single SARIMA and ANN models in prediction of data, with an R2 value of 0.84, mean absolute error (MAE) value of 328.69, mean absolute percentage error (MAPE) value of 32,868.51, MSE value of 174,043.217, and root mean squired error (RMSE) value of 417.185

  • The probabilistic aspect of Reservoir water level (RWL) prediction is investigated in this study using a hybrid model, SARIMA and ANN model for the Red Hills Reservoir (RHR)

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Summary

Introduction

Each region has its own set of water quality and quantity concerns, depending on the climatic, geographic, geologic, social, and economic characteristics. The rainfall pattern is likely to shift all over the planet as a result of global warming and climate change. Modelling studies until the year 2050 have anticipated that the world’s freshwater distribution is expected to undergo a paradigm shift [1,2]. A reliable water management system is necessary, which is a key for the sustainable development of a region or a country

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