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Automated Landslide-Risk Prediction Using Web GIS and Machine Learning Models

Spatial susceptible landslide prediction is the one of the most challenging research areas which essentially concerns the safety of inhabitants. The novel geographic information web (GIW) application is proposed for dynamically predicting landslide risk in Chiang Rai, Thailand. The automated GIW sys...

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Autores principales: Tengtrairat, Naruephorn, Woo, Wai Lok, Parathai, Phetcharat, Aryupong, Chuchoke, Jitsangiam, Peerapong, Rinchumphu, Damrongsak
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8271927/
https://www.ncbi.nlm.nih.gov/pubmed/34283153
http://dx.doi.org/10.3390/s21134620
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author Tengtrairat, Naruephorn
Woo, Wai Lok
Parathai, Phetcharat
Aryupong, Chuchoke
Jitsangiam, Peerapong
Rinchumphu, Damrongsak
author_facet Tengtrairat, Naruephorn
Woo, Wai Lok
Parathai, Phetcharat
Aryupong, Chuchoke
Jitsangiam, Peerapong
Rinchumphu, Damrongsak
author_sort Tengtrairat, Naruephorn
collection PubMed
description Spatial susceptible landslide prediction is the one of the most challenging research areas which essentially concerns the safety of inhabitants. The novel geographic information web (GIW) application is proposed for dynamically predicting landslide risk in Chiang Rai, Thailand. The automated GIW system is coordinated between machine learning technologies, web technologies, and application programming interfaces (APIs). The new bidirectional long short-term memory (Bi-LSTM) algorithm is presented to forecast landslides. The proposed algorithm consists of 3 major steps, the first of which is the construction of a landslide dataset by using Quantum GIS (QGIS). The second step is to generate the landslide-risk model based on machine learning approaches. Finally, the automated landslide-risk visualization illustrates the likelihood of landslide via Google Maps on the website. Four static factors are considered for landslide-risk prediction, namely, land cover, soil properties, elevation and slope, and a single dynamic factor i.e., precipitation. Data are collected to construct a geospatial landslide database which comprises three historical landslide locations—Phu Chifa at Thoeng District, Ban Pha Duea at Mae Salong Nai, and Mai Salong Nok in Mae Fa Luang District, Chiang Rai, Thailand. Data collection is achieved using QGIS software to interpolate contour, elevation, slope degree and land cover from the Google satellite images, aerial and site survey photographs while the physiographic and rock type are on-site surveyed by experts. The state-of-the-art machine learning models have been trained i.e., linear regression (LR), artificial neural network (ANN), LSTM, and Bi-LSTM. Ablation studies have been conducted to determine the optimal parameters setting for each model. An enhancement method based on two-stage classifications has been presented to improve the landslide prediction of LSTM and Bi-LSTM models. The landslide-risk prediction performances of these models are subsequently evaluated using real-time dataset and it is shown that Bi-LSTM with Random Forest (Bi-LSTM-RF) yields the best prediction performance. Bi-LSTM-RF model has improved the landslide-risk predicting performance over LR, ANNs, LSTM, and Bi-LSTM in terms of the area under the receiver characteristic operator (AUC) scores by 0.42, 0.27, 0.46, and 0.47, respectively. Finally, an automated web GIS has been developed and it consists of software components including the trained models, rainfall API, Google API, and geodatabase. All components have been interfaced together via JavaScript and Node.js tool.
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spelling pubmed-82719272021-07-11 Automated Landslide-Risk Prediction Using Web GIS and Machine Learning Models Tengtrairat, Naruephorn Woo, Wai Lok Parathai, Phetcharat Aryupong, Chuchoke Jitsangiam, Peerapong Rinchumphu, Damrongsak Sensors (Basel) Article Spatial susceptible landslide prediction is the one of the most challenging research areas which essentially concerns the safety of inhabitants. The novel geographic information web (GIW) application is proposed for dynamically predicting landslide risk in Chiang Rai, Thailand. The automated GIW system is coordinated between machine learning technologies, web technologies, and application programming interfaces (APIs). The new bidirectional long short-term memory (Bi-LSTM) algorithm is presented to forecast landslides. The proposed algorithm consists of 3 major steps, the first of which is the construction of a landslide dataset by using Quantum GIS (QGIS). The second step is to generate the landslide-risk model based on machine learning approaches. Finally, the automated landslide-risk visualization illustrates the likelihood of landslide via Google Maps on the website. Four static factors are considered for landslide-risk prediction, namely, land cover, soil properties, elevation and slope, and a single dynamic factor i.e., precipitation. Data are collected to construct a geospatial landslide database which comprises three historical landslide locations—Phu Chifa at Thoeng District, Ban Pha Duea at Mae Salong Nai, and Mai Salong Nok in Mae Fa Luang District, Chiang Rai, Thailand. Data collection is achieved using QGIS software to interpolate contour, elevation, slope degree and land cover from the Google satellite images, aerial and site survey photographs while the physiographic and rock type are on-site surveyed by experts. The state-of-the-art machine learning models have been trained i.e., linear regression (LR), artificial neural network (ANN), LSTM, and Bi-LSTM. Ablation studies have been conducted to determine the optimal parameters setting for each model. An enhancement method based on two-stage classifications has been presented to improve the landslide prediction of LSTM and Bi-LSTM models. The landslide-risk prediction performances of these models are subsequently evaluated using real-time dataset and it is shown that Bi-LSTM with Random Forest (Bi-LSTM-RF) yields the best prediction performance. Bi-LSTM-RF model has improved the landslide-risk predicting performance over LR, ANNs, LSTM, and Bi-LSTM in terms of the area under the receiver characteristic operator (AUC) scores by 0.42, 0.27, 0.46, and 0.47, respectively. Finally, an automated web GIS has been developed and it consists of software components including the trained models, rainfall API, Google API, and geodatabase. All components have been interfaced together via JavaScript and Node.js tool. MDPI 2021-07-05 /pmc/articles/PMC8271927/ /pubmed/34283153 http://dx.doi.org/10.3390/s21134620 Text en © 2021 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Tengtrairat, Naruephorn
Woo, Wai Lok
Parathai, Phetcharat
Aryupong, Chuchoke
Jitsangiam, Peerapong
Rinchumphu, Damrongsak
Automated Landslide-Risk Prediction Using Web GIS and Machine Learning Models
title Automated Landslide-Risk Prediction Using Web GIS and Machine Learning Models
title_full Automated Landslide-Risk Prediction Using Web GIS and Machine Learning Models
title_fullStr Automated Landslide-Risk Prediction Using Web GIS and Machine Learning Models
title_full_unstemmed Automated Landslide-Risk Prediction Using Web GIS and Machine Learning Models
title_short Automated Landslide-Risk Prediction Using Web GIS and Machine Learning Models
title_sort automated landslide-risk prediction using web gis and machine learning models
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8271927/
https://www.ncbi.nlm.nih.gov/pubmed/34283153
http://dx.doi.org/10.3390/s21134620
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