Estimation of hydraulic conductivity of landslides based on support vector machine method optimized with genetic algorithm
Estimation of hydraulic conductivities (K) of the rock media in a landslide is the basis for the study of the seepage field and multi-dimensional evolution of the reservoir bank slope. Traditionally, in-situ tests and indoor tests are used to determine the hydraulic conductivity of landslide rock an...
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Editorial Office of Hydrogeology & Engineering Geology
2021-07-01
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Series: | Shuiwen dizhi gongcheng dizhi |
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Online Access: | https://www.swdzgcdz.com/en/article/doi/10.16030/j.cnki.issn.1000-3665.202007039 |
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author | Peng HU Zhang WEN Xinli HU Yuming ZHANG |
author_facet | Peng HU Zhang WEN Xinli HU Yuming ZHANG |
author_sort | Peng HU |
collection | DOAJ |
description | Estimation of hydraulic conductivities (K) of the rock media in a landslide is the basis for the study of the seepage field and multi-dimensional evolution of the reservoir bank slope. Traditionally, in-situ tests and indoor tests are used to determine the hydraulic conductivity of landslide rock and soil, but this method is costly and the test location has a certain randomness. In this study, the Majiagou landslide in the Three Gorges Reservoir area is taken as an example, and a method for inverting the K values of the deformed rock and soil mass using the groundwater level dynamic monitoring data is proposed. The basic idea is as follows. First, build a numerical model of the landslide based on the landslide survey data and water level observation data. Afterwards, SPSS is used to generate different orthogonal test combinations of hydraulic conductivity, substitute the hydraulic conductivity into the numerical model to calculate the water levels of the monitoring wells, and obtain the data of hydraulic conductivity and corresponding simulated water levels. Finally, the support vector machine (SVM) optimized with the genetic algorithm (GA) is used to construct a nonlinear mapping relationship between slope water level and hydraulic conductivities (K). The results obtained are then replaced for the monitored water levels to obtain the hydraulic conductivities of the landslide rock and soil which is used to develop the finite element model. The model is then verified by comparing the simulated water levels with the observed water levels. The inversion of the Majiagou landslide hydraulic conductivity shows that the SVM optimized with GA yields a good agreement between the simulated and real data and has a very efficient and accurate search results. The inversion accuracy of K based on the GA-SVM method meets the needs of practical applications. |
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issn | 1000-3665 |
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series | Shuiwen dizhi gongcheng dizhi |
spelling | doaj.art-ca983e6e343f470a92fd01a4ba6670662023-02-08T01:29:16ZzhoEditorial Office of Hydrogeology & Engineering GeologyShuiwen dizhi gongcheng dizhi1000-36652021-07-0148416016810.16030/j.cnki.issn.1000-3665.202007039202007039Estimation of hydraulic conductivity of landslides based on support vector machine method optimized with genetic algorithmPeng HU0Zhang WEN1Xinli HU2Yuming ZHANG3School of Environmental Studies, China University of Geosciences (Wuhan), Wuhan, Hubei 430074, ChinaSchool of Environmental Studies, China University of Geosciences (Wuhan), Wuhan, Hubei 430074, ChinaFaculty of Engineering, China University of Geosciences (Wuhan), Wuhan, Hubei 430074, ChinaArchitecture and Art College, Weifang University of Science and Technology, Weifang, Shandong 262700, ChinaEstimation of hydraulic conductivities (K) of the rock media in a landslide is the basis for the study of the seepage field and multi-dimensional evolution of the reservoir bank slope. Traditionally, in-situ tests and indoor tests are used to determine the hydraulic conductivity of landslide rock and soil, but this method is costly and the test location has a certain randomness. In this study, the Majiagou landslide in the Three Gorges Reservoir area is taken as an example, and a method for inverting the K values of the deformed rock and soil mass using the groundwater level dynamic monitoring data is proposed. The basic idea is as follows. First, build a numerical model of the landslide based on the landslide survey data and water level observation data. Afterwards, SPSS is used to generate different orthogonal test combinations of hydraulic conductivity, substitute the hydraulic conductivity into the numerical model to calculate the water levels of the monitoring wells, and obtain the data of hydraulic conductivity and corresponding simulated water levels. Finally, the support vector machine (SVM) optimized with the genetic algorithm (GA) is used to construct a nonlinear mapping relationship between slope water level and hydraulic conductivities (K). The results obtained are then replaced for the monitored water levels to obtain the hydraulic conductivities of the landslide rock and soil which is used to develop the finite element model. The model is then verified by comparing the simulated water levels with the observed water levels. The inversion of the Majiagou landslide hydraulic conductivity shows that the SVM optimized with GA yields a good agreement between the simulated and real data and has a very efficient and accurate search results. The inversion accuracy of K based on the GA-SVM method meets the needs of practical applications.https://www.swdzgcdz.com/en/article/doi/10.16030/j.cnki.issn.1000-3665.202007039majiagou landslidesupport vector machinegenetic algorithmnumerical simulationhydraulic conductivity ;inversion |
spellingShingle | Peng HU Zhang WEN Xinli HU Yuming ZHANG Estimation of hydraulic conductivity of landslides based on support vector machine method optimized with genetic algorithm Shuiwen dizhi gongcheng dizhi majiagou landslide support vector machine genetic algorithm numerical simulation hydraulic conductivity ;inversion |
title | Estimation of hydraulic conductivity of landslides based on support vector machine method optimized with genetic algorithm |
title_full | Estimation of hydraulic conductivity of landslides based on support vector machine method optimized with genetic algorithm |
title_fullStr | Estimation of hydraulic conductivity of landslides based on support vector machine method optimized with genetic algorithm |
title_full_unstemmed | Estimation of hydraulic conductivity of landslides based on support vector machine method optimized with genetic algorithm |
title_short | Estimation of hydraulic conductivity of landslides based on support vector machine method optimized with genetic algorithm |
title_sort | estimation of hydraulic conductivity of landslides based on support vector machine method optimized with genetic algorithm |
topic | majiagou landslide support vector machine genetic algorithm numerical simulation hydraulic conductivity ;inversion |
url | https://www.swdzgcdz.com/en/article/doi/10.16030/j.cnki.issn.1000-3665.202007039 |
work_keys_str_mv | AT penghu estimationofhydraulicconductivityoflandslidesbasedonsupportvectormachinemethodoptimizedwithgeneticalgorithm AT zhangwen estimationofhydraulicconductivityoflandslidesbasedonsupportvectormachinemethodoptimizedwithgeneticalgorithm AT xinlihu estimationofhydraulicconductivityoflandslidesbasedonsupportvectormachinemethodoptimizedwithgeneticalgorithm AT yumingzhang estimationofhydraulicconductivityoflandslidesbasedonsupportvectormachinemethodoptimizedwithgeneticalgorithm |