2021
DOI: 10.2166/wp.2021.133
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Water poverty assessment based on the random forest algorithm: application to Gansu, Northwest China

Abstract: This study proposes a random forest algorithm to evaluate water poverty. It shows how the machine learning technique can be used to classify the degree of water poverty into five levels: very severe, severe, moderate, mild, and very mild. The strengths of the proposed random forest method include a high classification accuracy, good operational efficiency, and the ability to handle high-dimensional datasets. The success of the proposed method is empirically illustrated through a case study in Gansu, Northwest … Show more

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Cited by 5 publications
(2 citation statements)
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“…The model output (for each 30 × 30 m pixel) were probability values (of predicting the presence of a well) ranging from 0 to 1 [23]. The model was initially built with 1000 trees (ntree = 1000), as it is not possible to know a priori when the stabilization of the error will occur [52]. In any case, a sensitivity analysis on this hyperparameter, as well as on mtry (number of variables to try at each node of RF trees), is given in Appendix A.…”
Section: The Random Forest Algorithm and The Groundwater Potential Mapmentioning
confidence: 99%
“…The model output (for each 30 × 30 m pixel) were probability values (of predicting the presence of a well) ranging from 0 to 1 [23]. The model was initially built with 1000 trees (ntree = 1000), as it is not possible to know a priori when the stabilization of the error will occur [52]. In any case, a sensitivity analysis on this hyperparameter, as well as on mtry (number of variables to try at each node of RF trees), is given in Appendix A.…”
Section: The Random Forest Algorithm and The Groundwater Potential Mapmentioning
confidence: 99%
“…The majority, approximately 97%, exists in the form of saline oceans, rendering it unsuitable for consumption. Additionally, around 2% of water is locked in ice caps, further limiting accessible freshwater sources [1,2].…”
Section: Introductionmentioning
confidence: 99%