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Spatial patterns and controlling factors of the evolution process of karst depressions in Guizhou province, China

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Abstract

Karst depressions are common negative topographic landforms formed by the intense dissolution of soluble rocks and are widely developed in Guizhou province. In this work, an inventory of karst depressions in Guizhou was established, and a total of approximately 256,400 karst depressions were extracted and found to be spatially clustered based on multidistance spatial cluster analysis with Ripley’s K function. The kernel density (KD) can transform the position data of the depressions into a smooth trend surface, and five different depression concentration areas were established based on the KD values. The results indicated that the karst depressions are clustered and developed in the south and west of Guizhou, while some areas in the southeast, east and north have poorly developed or no clustering. Additionally, the random forest (RF) model was used to rank the importance of factors affecting the distribution of karst depressions, and the results showed that the influence of lithology on the spatial distribution of karst depressions is absolutely dominant, followed by that of fault tectonics and hydrological conditions. The research results will contribute to the resource investigation of karst depressions and provide theoretical support for resource evaluation and sustainable utilization.

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Correspondence to Shuangying Zuo.

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Foundation: The Science and Technology Foundation of Guizhou Province (2022-212), [2020] 1Z052; National Natural Science Foundation of China, No.42167025

Author: Zhang Tao (1998–), Master Candidate, specialized in karst depression resource evaluation and engineering development.

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Zhang, T., Zuo, S., Yu, B. et al. Spatial patterns and controlling factors of the evolution process of karst depressions in Guizhou province, China. J. Geogr. Sci. 33, 2052–2076 (2023). https://doi.org/10.1007/s11442-023-2165-z

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