Modeling flood susceptibility using data-driven approaches of naive bayes tree, alternating decision tree, and random forest methods

Floods are one of the most devastating types of disasters that cause loss of lives and property worldwide each year. This study aimed to evaluate and compare the prediction capability of the naïve Bayes tree (NBTree), alternating decision tree (ADTree), and random forest (RF) methods for the spatial...

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Main Authors: Chen, W., Li, Y., Xue, W., Shahabi, H., Li, S., Hong, H., Wang, X., Bian, H., Zhang, S., Pradhan, B., Ahmad, B. B.
Format: Article
Published: Elsevier B. V. 2020
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Online Access:http://eprints.utm.my/id/eprint/86440/
https://dx.doi.org/10.1016/j.scitotenv.2019.134979
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Institution: Universiti Teknologi Malaysia
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spelling my.utm.864402020-09-09T07:15:56Z http://eprints.utm.my/id/eprint/86440/ Modeling flood susceptibility using data-driven approaches of naive bayes tree, alternating decision tree, and random forest methods Chen, W. Li, Y. Xue, W. Shahabi, H. Li, S. Hong, H. Wang, X. Bian, H. Zhang, S. Pradhan, B. Ahmad, B. B. SB469-476 Landcsape architecture Floods are one of the most devastating types of disasters that cause loss of lives and property worldwide each year. This study aimed to evaluate and compare the prediction capability of the naïve Bayes tree (NBTree), alternating decision tree (ADTree), and random forest (RF) methods for the spatial prediction of flood occurrence in the Quannan area, China. A flood inventory map with 363 flood locations was produced and partitioned into training and validation datasets through random selection with a ratio of 70/30. The spatial flood database was constructed using thirteen flood explanatory factors. The probability certainty factor (PCF) method was used to analyze the correlation between the factors and flood occurrences. Consequently, three flood susceptibility maps were produced using the NBTree, ADTree, and RF methods. Finally, the area under the curve (AUC) and statistical measures were used to validate the flood susceptibility models. The results indicated that the RF method is an efficient and reliable model in flood susceptibility assessment, with the highest AUC values, positive predictive rate, negative predictive rate, sensitivity, specificity, and accuracy for the training (0.951, 0.892, 0.941, 0.945, 0.886, and 0.915, respectively) and validation (0.925, 0.851, 0.938, 0.945, 0.835, and 0.890, respectively) datasets. Elsevier B. V. 2020-01 Article PeerReviewed Chen, W. and Li, Y. and Xue, W. and Shahabi, H. and Li, S. and Hong, H. and Wang, X. and Bian, H. and Zhang, S. and Pradhan, B. and Ahmad, B. B. (2020) Modeling flood susceptibility using data-driven approaches of naive bayes tree, alternating decision tree, and random forest methods. Science of the Total Environment, 701 . ISSN 0048-9697 https://dx.doi.org/10.1016/j.scitotenv.2019.134979 DOI:10.1016/j.scitotenv.2019.134979
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
topic SB469-476 Landcsape architecture
spellingShingle SB469-476 Landcsape architecture
Chen, W.
Li, Y.
Xue, W.
Shahabi, H.
Li, S.
Hong, H.
Wang, X.
Bian, H.
Zhang, S.
Pradhan, B.
Ahmad, B. B.
Modeling flood susceptibility using data-driven approaches of naive bayes tree, alternating decision tree, and random forest methods
description Floods are one of the most devastating types of disasters that cause loss of lives and property worldwide each year. This study aimed to evaluate and compare the prediction capability of the naïve Bayes tree (NBTree), alternating decision tree (ADTree), and random forest (RF) methods for the spatial prediction of flood occurrence in the Quannan area, China. A flood inventory map with 363 flood locations was produced and partitioned into training and validation datasets through random selection with a ratio of 70/30. The spatial flood database was constructed using thirteen flood explanatory factors. The probability certainty factor (PCF) method was used to analyze the correlation between the factors and flood occurrences. Consequently, three flood susceptibility maps were produced using the NBTree, ADTree, and RF methods. Finally, the area under the curve (AUC) and statistical measures were used to validate the flood susceptibility models. The results indicated that the RF method is an efficient and reliable model in flood susceptibility assessment, with the highest AUC values, positive predictive rate, negative predictive rate, sensitivity, specificity, and accuracy for the training (0.951, 0.892, 0.941, 0.945, 0.886, and 0.915, respectively) and validation (0.925, 0.851, 0.938, 0.945, 0.835, and 0.890, respectively) datasets.
format Article
author Chen, W.
Li, Y.
Xue, W.
Shahabi, H.
Li, S.
Hong, H.
Wang, X.
Bian, H.
Zhang, S.
Pradhan, B.
Ahmad, B. B.
author_facet Chen, W.
Li, Y.
Xue, W.
Shahabi, H.
Li, S.
Hong, H.
Wang, X.
Bian, H.
Zhang, S.
Pradhan, B.
Ahmad, B. B.
author_sort Chen, W.
title Modeling flood susceptibility using data-driven approaches of naive bayes tree, alternating decision tree, and random forest methods
title_short Modeling flood susceptibility using data-driven approaches of naive bayes tree, alternating decision tree, and random forest methods
title_full Modeling flood susceptibility using data-driven approaches of naive bayes tree, alternating decision tree, and random forest methods
title_fullStr Modeling flood susceptibility using data-driven approaches of naive bayes tree, alternating decision tree, and random forest methods
title_full_unstemmed Modeling flood susceptibility using data-driven approaches of naive bayes tree, alternating decision tree, and random forest methods
title_sort modeling flood susceptibility using data-driven approaches of naive bayes tree, alternating decision tree, and random forest methods
publisher Elsevier B. V.
publishDate 2020
url http://eprints.utm.my/id/eprint/86440/
https://dx.doi.org/10.1016/j.scitotenv.2019.134979
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