Author
Listed:
- Peng Xu
(Southern University of Science and Technology
Tianjin University)
- Geng Li
(The Hong Kong University of Science and Technology
The Hong Kong University of Science and Technology)
- Yi Zheng
(Southern University of Science and Technology
Southern University of Science and Technology
Southern University of Science and Technology)
- Jimmy C. H. Fung
(The Hong Kong University of Science and Technology
The Hong Kong University of Science and Technology)
- Anping Chen
(Colorado State University)
- Zhenzhong Zeng
(Southern University of Science and Technology)
- Huizhong Shen
(Southern University of Science and Technology)
- Min Hu
(Peking University)
- Jiafu Mao
(Oak Ridge National Laboratory)
- Yan Zheng
(Southern University of Science and Technology)
- Xiaoqing Cui
(Beijing Forestry University)
- Zhilin Guo
(Southern University of Science and Technology)
- Yilin Chen
(Southern University of Science and Technology)
- Lian Feng
(Southern University of Science and Technology)
- Shaokun He
(Southern University of Science and Technology)
- Xuguo Zhang
(The Hong Kong University of Science and Technology)
- Alexis K. H. Lau
(The Hong Kong University of Science and Technology
The Hong Kong University of Science and Technology)
- Shu Tao
(Southern University of Science and Technology
Peking University)
- Benjamin Z. Houlton
(Cornell University)
Abstract
Crop production is a large source of atmospheric ammonia (NH3), which poses risks to air quality, human health and ecosystems1–5. However, estimating global NH3 emissions from croplands is subject to uncertainties because of data limitations, thereby limiting the accurate identification of mitigation options and efficacy4,5. Here we develop a machine learning model for generating crop-specific and spatially explicit NH3 emission factors globally (5-arcmin resolution) based on a compiled dataset of field observations. We show that global NH3 emissions from rice, wheat and maize fields in 2018 were 4.3 ± 1.0 Tg N yr−1, lower than previous estimates that did not fully consider fertilizer management practices6–9. Furthermore, spatially optimizing fertilizer management, as guided by the machine learning model, has the potential to reduce the NH3 emissions by about 38% (1.6 ± 0.4 Tg N yr−1) without altering total fertilizer nitrogen inputs. Specifically, we estimate potential NH3 emissions reductions of 47% (44–56%) for rice, 27% (24–28%) for maize and 26% (20–28%) for wheat cultivation, respectively. Under future climate change scenarios, we estimate that NH3 emissions could increase by 4.0 ± 2.7% under SSP1–2.6 and 5.5 ± 5.7% under SSP5–8.5 by 2030–2060. However, targeted fertilizer management has the potential to mitigate these increases.
Suggested Citation
Peng Xu & Geng Li & Yi Zheng & Jimmy C. H. Fung & Anping Chen & Zhenzhong Zeng & Huizhong Shen & Min Hu & Jiafu Mao & Yan Zheng & Xiaoqing Cui & Zhilin Guo & Yilin Chen & Lian Feng & Shaokun He & Xugu, 2024.
"Fertilizer management for global ammonia emission reduction,"
Nature, Nature, vol. 626(8000), pages 792-798, February.
Handle:
RePEc:nat:nature:v:626:y:2024:i:8000:d:10.1038_s41586-024-07020-z
DOI: 10.1038/s41586-024-07020-z
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