Convolutional Neural Networks Facilitate River Barrier Detection and Evidence Severe Habitat Fragmentation in the Mekong River Biodiversity Hotspot

Author:

Sun Jingrui123ORCID,Ding Chengzhi123ORCID,Lucas Martyn C.4ORCID,Tao Juan123,Cheng Hiuyi5,Chen Jinnan12,Li Mingbo12,Ding Liuyong12,Ji Xuan12,Wang Yan12,He Daming12ORCID

Affiliation:

1. Yunnan Key Laboratory of International Rivers and Transboundary Eco‐security Yunnan University Kunming China

2. Institute of International Rivers and Eco‐security Yunnan University Kunming China

3. Ministry of Education Key Laboratory for Transboundary Eco‐Security of Southwest China Yunnan University Kunming China

4. Department of Biosciences University of Durham Durham UK

5. School of Electronic and Information Engineering South China University of Technology Guangzhou China

Abstract

AbstractConstruction of river infrastructure, such as dams and weirs, is a global issue for ecosystem protection due to the fragmentation of river habitat and hydrological alteration it causes. Accurate river barrier databases, increasingly used to determine river fragmentation for ecologically sensitive management, are challenging to generate. This is especially so in large, poorly mapped basins where only large dams tend to be recorded. The Mekong is one of the world's most biodiverse river basins but, like many large rivers, impacts on habitat fragmentation from river infrastructure are poorly documented. To demonstrate a solution to this, and enable more sensitive basin management, we generated a whole‐basin barrier database for the Mekong, by training Convolutional Neural Network (CNN)–based object detection models, the best of which was used to identify 10,561 previously unrecorded barriers. Combining manual revision and merged with the existing barrier database, our new barrier database for the Mekong Basin contains 13,054 barriers. Existing databases for the Lower Mekong documented under ∼3% of the barriers recorded by CNN combined with manual checking. The Nam Chi/Nam Mun region, eastern Thailand, is the most fragmented area within the basin, with a median [95% CI] barrier density of 15.53 [0.00–49.30] per 100 km, and Catchment Area‐based Fragmentation Index value, calculated in an upstream direction, of 1,178.67 [0.00–6,418.46], due to the construction of dams and sluice gates. The CNN‐based object detection framework is effective and potentially can transform our ability to identify river barriers across many large river basins and facilitate ecologically‐sensitive management.

Funder

National Natural Science Foundation of China

China Postdoctoral Science Foundation

Publisher

American Geophysical Union (AGU)

Subject

Water Science and Technology

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