Matches in SemOpenAlex for { <https://semopenalex.org/work/W4293192742> ?p ?o ?g. }
- W4293192742 endingPage "1449" @default.
- W4293192742 startingPage "1431" @default.
- W4293192742 abstract "Water level predictions in the river, lake and delta play an important role in flood management. Every year Mekong River delta of Vietnam is experiencing flood due to heavy monsoon rains and high tides. Land subsidence may also aggravate flooding problems in this area. Therefore, accurate predictions of water levels in this region are very important to forewarn the people and authorities for taking timely adequate remedial measures to prevent losses of life and property. There are so many methods available to predict the water levels based on historical data but nowadays Machine Learning (ML) methods are considered the best tool for accurate prediction. In this study, we have used surface water level data of 18 water level measurement stations of the Mekong River delta from 2000 to 2018 to build novel time-series Bagging based hybrid ML models namely: Bagging (RF), Bagging (SOM) and Bagging (M5P) to predict historical water levels in the study area. Performances of the Bagging-based hybrid models were compared with Reduced Error Pruning Trees (REPT), which is a benchmark ML model. The data of 19 years period was divided into 70:30 ratio for the modeling. The data of the period 1/2000 to 5/2013 (which is about 70% of total data) was used for the training and for the period 5/2013 to 12/2018 (which is about 30% of total data) was used for testing (validating) the models. Performance of the models was evaluated using standard statistical measures: Coefficient of Determination (R2), Root Mean Square Error (RMSE) and Mean Absolute Error (MAE). Results show that the performance of all the developed models is good (R2 > 0.9) for the prediction of water levels in the study area. However, the Bagging-based hybrid models are slightly better than another model such as REPT. Thus, these Bagging-based hybrid time series models can be used for predicting water levels at Mekong data." @default.
- W4293192742 created "2022-08-27" @default.
- W4293192742 creator A5007756877 @default.
- W4293192742 creator A5015175852 @default.
- W4293192742 creator A5017720257 @default.
- W4293192742 creator A5019323825 @default.
- W4293192742 creator A5027233897 @default.
- W4293192742 creator A5029814958 @default.
- W4293192742 creator A5038013289 @default.
- W4293192742 creator A5048764248 @default.
- W4293192742 creator A5051780339 @default.
- W4293192742 creator A5056909844 @default.
- W4293192742 creator A5070829177 @default.
- W4293192742 creator A5074376739 @default.
- W4293192742 creator A5077502967 @default.
- W4293192742 date "2022-01-01" @default.
- W4293192742 modified "2023-09-26" @default.
- W4293192742 title "Novel Time Series Bagging Based Hybrid Models for Predicting Historical Water Levels in the Mekong Delta Region, Vietnam" @default.
- W4293192742 cites W1985817801 @default.
- W4293192742 cites W2007435156 @default.
- W4293192742 cites W2008534839 @default.
- W4293192742 cites W2011694392 @default.
- W4293192742 cites W2017978747 @default.
- W4293192742 cites W2022977604 @default.
- W4293192742 cites W2043123954 @default.
- W4293192742 cites W2064069471 @default.
- W4293192742 cites W2065273135 @default.
- W4293192742 cites W2068690409 @default.
- W4293192742 cites W2088281440 @default.
- W4293192742 cites W2092468938 @default.
- W4293192742 cites W2092997181 @default.
- W4293192742 cites W2158324401 @default.
- W4293192742 cites W2285460534 @default.
- W4293192742 cites W2438885293 @default.
- W4293192742 cites W2472378482 @default.
- W4293192742 cites W2519919616 @default.
- W4293192742 cites W2593914038 @default.
- W4293192742 cites W2594967417 @default.
- W4293192742 cites W2600250093 @default.
- W4293192742 cites W2765198615 @default.
- W4293192742 cites W2787202711 @default.
- W4293192742 cites W2885962128 @default.
- W4293192742 cites W2905155550 @default.
- W4293192742 cites W2908707004 @default.
- W4293192742 cites W2938992826 @default.
- W4293192742 cites W2950911818 @default.
- W4293192742 cites W2952484941 @default.
- W4293192742 cites W2970447650 @default.
- W4293192742 cites W2978970120 @default.
- W4293192742 cites W2982073971 @default.
- W4293192742 cites W2985813553 @default.
- W4293192742 cites W2989305098 @default.
- W4293192742 cites W2995284026 @default.
- W4293192742 cites W3006382597 @default.
- W4293192742 cites W3008466867 @default.
- W4293192742 cites W3010194463 @default.
- W4293192742 cites W3011540643 @default.
- W4293192742 cites W3011784078 @default.
- W4293192742 cites W3016497199 @default.
- W4293192742 cites W3033820437 @default.
- W4293192742 cites W3037607875 @default.
- W4293192742 cites W3044546013 @default.
- W4293192742 cites W3045302412 @default.
- W4293192742 cites W3048075134 @default.
- W4293192742 cites W3048264598 @default.
- W4293192742 cites W3049586794 @default.
- W4293192742 cites W3081522700 @default.
- W4293192742 cites W3083635533 @default.
- W4293192742 cites W3087374167 @default.
- W4293192742 cites W3091853686 @default.
- W4293192742 cites W3092127644 @default.
- W4293192742 cites W3092453021 @default.
- W4293192742 cites W3105352306 @default.
- W4293192742 cites W3106559480 @default.
- W4293192742 cites W3113295025 @default.
- W4293192742 cites W3114168626 @default.
- W4293192742 cites W3115867105 @default.
- W4293192742 cites W3116430925 @default.
- W4293192742 cites W3117380426 @default.
- W4293192742 cites W3117812662 @default.
- W4293192742 cites W3120338070 @default.
- W4293192742 cites W3128290931 @default.
- W4293192742 cites W3129902997 @default.
- W4293192742 cites W3132571889 @default.
- W4293192742 cites W3133107848 @default.
- W4293192742 cites W3133676333 @default.
- W4293192742 cites W3134795671 @default.
- W4293192742 cites W3135766442 @default.
- W4293192742 cites W3143783562 @default.
- W4293192742 cites W3152783047 @default.
- W4293192742 cites W3153764057 @default.
- W4293192742 cites W3154732998 @default.
- W4293192742 cites W3155820524 @default.
- W4293192742 cites W3157404655 @default.
- W4293192742 cites W3181144872 @default.
- W4293192742 cites W3185133656 @default.
- W4293192742 cites W3185348343 @default.
- W4293192742 cites W3188968325 @default.