Journals Information
Environment and Ecology Research Vol. 9(3), pp. 93 - 106
DOI: 10.13189/eer.2021.090301
Reprint (PDF) (3792Kb)
A Hybrid Seasonal Box Jenkins-ANN Approach for Water Level Forecasting in Thailand
Kittipol Nualtong 1, Thammarat Panityakul 1,*, Piyawan Khwanmuang 1, Ronnason Chinram 1, Sukrit Kirtsaeng 2
1 Faculty of Science, Prince of Songkla University, Hat Yai, 90110, Songkhla, Thailand
2 Thai Meteorological Department, Bangna, 10260, Bangkok, Thailand
ABSTRACT
Every year, many basins in Thailand face the perennial droughts and floods that lead to the great impact on agricultural segments. In order to reduce the impact, water management would be applied to the critical basin, for instance, Yom River basin. An importing task of management is quantitative prediction of water that is stated by water level. This study proposes the hybridized forecasting models between the stochastic approaches, seasonal autoregressive integrated moving average (SARIMA) models and machine learning approach, artificial neural network (ANN). The proposed hybrid model is called seasonal autoregressive integrated moving average and artificial neural network or SARIMANN model for average monthly water level (AMWL) time series of Yom River basin. The study period is from April 2007 to March 2020, over thirteen hydrological years. The forecasting performance is the minimum values of root mean squared error (RMSE) and mean absolute percentage error (MAPE) between SARIMA models, ANN models, and SARIMANN models. Results indicated that: The three models reveal the similarity of RMSE and MAPE for both four water level measurement stations for wet and dry seasons. The forecasting performance is the minimum values of RMSE and MAPE of three models. The SARIMA model is the best approach for Y.31 Station [Wet Season], Y.20 Station [Wet Season], Y.37 Station [Wet Season], Y.31 Station [Dry Season], Y.20 Station [Dry Season], and Y.1C Station [Dry Season, while the best method for Y.37 Station [Dry Season] is ANN model, furthermore the SARIMANN model is the best approach for Y.1C Station [Wet Season]. All methods have delivered the similar results in dry season, while both SARIMA and SARIMANN are better than ANN in wet season by RMSE for all stations. Even though the downstream is affected by many disturbances, it is still more accurate than the upstream. This is the visible evidence to indicate that the stochastic based models, SARIMA and SARIMANN proposed in this study are appropriate for the high fluctuation series. Furthermore, the dry season forecasting is more accurate than the wet season.
KEYWORDS
SARIMA, ANN, SARIMANN, Average Monthly Water Level, Yom River Basin
Cite This Paper in IEEE or APA Citation Styles
(a). IEEE Format:
[1] Kittipol Nualtong , Thammarat Panityakul , Piyawan Khwanmuang , Ronnason Chinram , Sukrit Kirtsaeng , "A Hybrid Seasonal Box Jenkins-ANN Approach for Water Level Forecasting in Thailand," Environment and Ecology Research, Vol. 9, No. 3, pp. 93 - 106, 2021. DOI: 10.13189/eer.2021.090301.
(b). APA Format:
Kittipol Nualtong , Thammarat Panityakul , Piyawan Khwanmuang , Ronnason Chinram , Sukrit Kirtsaeng (2021). A Hybrid Seasonal Box Jenkins-ANN Approach for Water Level Forecasting in Thailand. Environment and Ecology Research, 9(3), 93 - 106. DOI: 10.13189/eer.2021.090301.