Author
Listed:
- Shuyou Zhang
(Chinese Academy of Sciences
University of Chinese Academy of Sciences
Hohai University)
- Jiangjiang Zhang
(Hohai University)
- Lili Niu
(Zhejiang Shuren University)
- Qiang Chen
(Chinese Academy of Sciences
University of Chinese Academy of Sciences
Nanjing Institute of Environmental Sciences of the Ministry of Ecology and Environment)
- Qing Zhou
(Chinese Academy of Sciences
University of Chinese Academy of Sciences)
- Nan Xiao
(Zhejiang University)
- Jun Man
(Chinese Academy of Sciences
University of Chinese Academy of Sciences)
- Jianqing Ma
(NingboTech University)
- Changlong Wei
(Chinese Academy of Sciences
University of Chinese Academy of Sciences)
- Songhe Zhang
(Hohai University)
- Yongming Luo
(Chinese Academy of Sciences
University of Chinese Academy of Sciences)
- Yijun Yao
(Chinese Academy of Sciences
University of Chinese Academy of Sciences)
Abstract
China faces widespread soil arsenic pollution caused by intensified industrial and agricultural activities, the impacts of which, however, have never been evaluated at the national scale. In this study, we developed a machine-learning model built on 3,524 surveys, representing over one million soil samples, to generate annual maps of arsenic concentration in China’s surface soils for the period 2000–2040. The model has uncovered a worrying trend of increasing arsenic concentrations, rising from a mean of 11.9 mg kg−1 in 2000 to 12.6 mg kg−1 in 2020, with an anticipated further increase to 13.6 mg kg−1 by 2040. The primary anthropogenic causes have been identified as non-ferrous mining activities (68.0%), followed by energy consumption (15.8%), smelting (13.2%) and farming practices (3.0%). Furthermore, in 2000, 2020 and 2040, the model predicts that 13.0%, 17.1% and 18.3% of rice production and 10.0%, 13.9% and 15.9% of the population, respectively, would be located on soils with arsenic concentrations over 20 mg kg−1. Despite the establishment of initiatives such as the Soil Pollution Prevention and Control Action Plan by the Chinese government to restrain this burgeoning arsenic pollution, our findings underscore the urgent need for more vigorous measures to stall or reverse this disturbing trend.
Suggested Citation
Shuyou Zhang & Jiangjiang Zhang & Lili Niu & Qiang Chen & Qing Zhou & Nan Xiao & Jun Man & Jianqing Ma & Changlong Wei & Songhe Zhang & Yongming Luo & Yijun Yao, 2024.
"Escalating arsenic contamination throughout Chinese soils,"
Nature Sustainability, Nature, vol. 7(6), pages 766-775, June.
Handle:
RePEc:nat:natsus:v:7:y:2024:i:6:d:10.1038_s41893-024-01341-7
DOI: 10.1038/s41893-024-01341-7
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