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Evaluating the ecological vulnerability of Chongqing using deep learning.
Wu, Jun-Yi; Liu, Hong; Li, Tong; Ou-Yang, Yuan; Zhang, Jing-Hua; Zhang, Teng-Jiao; Huang, Yong; Gao, Wen-Long; Shao, Lu.
Afiliación
  • Wu JY; China University of Geosciences, Beijing, 100089, China.
  • Liu H; Graduate School, Chinese Academy of Geological Sciences, Beijing, 100037, China.
  • Li T; Chengdu Center, China Geological Survey, Chengdu, 610081, China.
  • Ou-Yang Y; Chengdu Center, China Geological Survey, Chengdu, 610081, China.
  • Zhang JH; College of Earth Sciences, Chengdu University of Technology, Chengdu, 610059, China.
  • Zhang TJ; College of Earth Sciences, Chengdu University of Technology, Chengdu, 610059, China.
  • Huang Y; Chengdu Center, China Geological Survey, Chengdu, 610081, China. ouyangyuan@mail.cgs.gov.cn.
  • Gao WL; Chengdu Center, China Geological Survey, Chengdu, 610081, China.
  • Shao L; Chengdu Center, China Geological Survey, Chengdu, 610081, China.
Environ Sci Pollut Res Int ; 30(36): 86365-86379, 2023 Aug.
Article en En | MEDLINE | ID: mdl-37407859
ABSTRACT
This study used deep learning to evaluate the ecological vulnerability of Chongqing, China, discuss the deep learning evaluations of ecological vulnerability, and generate vulnerability maps that support local ecological environment protection and governance decisions and provide reference for future studies. The information gain ratio was used to screen the influencing factors, selecting 16 factors that influence ecological vulnerability. Deep neural network (DNN) and convolutional neural network (CNN) methods were used for modeling, and two ecological vulnerability maps of the study area were generated. The results showed that the mean absolute error and root mean square error of the DNN and CNN models were relatively small, and the fitting accuracy was high. The area under the receiver operating characteristic curve of the CNN model was 0.926, which was better than that of the DNN model (0.888). Random forest was applied to calculate the importance of the influencing factors in the two models. Because the main factor was geological features, the relative ecological vulnerability was mainly affected by karst topography. Through the analysis of the ecological vulnerability map, the areas with higher vulnerability are the karst mountains of Dabashan, Wushan, and Qiyaoshan in the northeast and southeast, as well as the valley between mountains and cities in the center and west of the study area. According to the investigation of these areas, the primary ecological problems are low forest quality, structural irregularities caused by self-geological factors, severe desertification, and soil erosion. Human activity is also an important factor that causes ecological vulnerability in the study area. In conclusion, deep learning, particularly CNN models, can be used for ecological vulnerability assessments. The ecological vulnerability maps conformed to the basic cognition of field surveys and can provide references for other deep learning vulnerability studies. While the overall vulnerability of the study area is not high, ecological problems that lead to its vulnerability should be addressed by future ecological protection and management measures.
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Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Asunto principal: Aprendizaje Profundo Tipo de estudio: Prognostic_studies Límite: Humans País/Región como asunto: Asia Idioma: En Revista: Environ Sci Pollut Res Int Asunto de la revista: SAUDE AMBIENTAL / TOXICOLOGIA Año: 2023 Tipo del documento: Article País de afiliación: China

Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Asunto principal: Aprendizaje Profundo Tipo de estudio: Prognostic_studies Límite: Humans País/Región como asunto: Asia Idioma: En Revista: Environ Sci Pollut Res Int Asunto de la revista: SAUDE AMBIENTAL / TOXICOLOGIA Año: 2023 Tipo del documento: Article País de afiliación: China
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