Exploring Future Food Provision Scenarios for China

自然资源经济学 温室气体 食物垃圾 可持续发展 食物系统 业务 可持续农业 环境科学 中国 环境经济学 消费(社会学) 食品加工 自然资源 环境保护 环境资源管理 环境规划 粮食安全 持续性 农业 经济 生态学 地理 生物 考古 社会科学 食品科学 社会学
作者
Lin Ma,Zhaohai Bai,Wenqi Ma,Mengchu Guo,Rongfeng Jiang,Junguo Liu,O. Oenema,G.L. Velthof,A. P. Whitmore,John W. Crawford,Achim Dobermann,Marie Schwoob,Fusuo Zhang
出处
期刊:Environmental Science & Technology [American Chemical Society]
卷期号:53 (3): 1385-1393 被引量:81
标识
DOI:10.1021/acs.est.8b04375
摘要

Developing sustainable food systems is essential, especially for emerging economies, where food systems are changing rapidly and affect the environment and natural resources. We explored possible future pathways for a sustainable food system in China, using multiple environmental indicators linked to eight of the Sustainable Development Goals (SDGs). Forecasts for 2030 in a business as usual scenario (BAU) indicate increases in animal food consumption as well as increased shortages of the land available and the water needed to produce the required food in China. Associated greenhouse gas emissions and nitrogen and phosphorus losses could become 10–42% of global emissions in 2010. We developed three main pathways besides BAU [produce more and better food (PMB), consume and waste less food (CWL), and import more food (IMF)] and analyzed their impacts and contributions to achieving one or more of the eight SDGs. Under these scenarios, the demand for land and water and the emissions of GHG and nutrients may decrease by 7–55% compared to BAU, depending on the pathway followed. A combination of PMB and CWL was most effective, while IMF externalizes impacts to countries exporting to China. Modestly increasing feed or food imports in a selective manner could ease the pressure on natural resources. Our modeling framework allows us to analyze the effects of changes in food production–consumption systems in an integrated manner, and the results can be linked to the eight SDGs. Despite formidable technological, social, educational, and structural barriers that need to be overcome, our study indicates that the ambitious targets of China's new agricultural and environmental strategy appear to be achievable.

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