濒危物种
生物多样性
生态系统
环境资源管理
保护
生态系统服务
生态系统健康
引爆点(物理)
气候变化
环境规划
生态学
地理
环境科学
生物
栖息地
工程类
医学
电气工程
护理部
作者
Emily Nicholson,Kate E. Watermeyer,Jessica A. Rowland,Chloe F. Sato,Simone Stevenson,Ángela Andrade,Thomas M. Brooks,Neil Burgess,Su‐Ting Cheng,Hedley S. Grantham,Samantha L. L. Hill,David A. Keith,Martine Maron,Daniel Metzke,Nicholas Murray,Cara R. Nelson,David Obura,Andy Plumptre,Andrew Skowno,James E. M. Watson
标识
DOI:10.1038/s41559-021-01538-5
摘要
Despite substantial conservation efforts, the loss of ecosystems continues globally, along with related declines in species and nature’s contributions to people. An effective ecosystem goal, supported by clear milestones, targets and indicators, is urgently needed for the post-2020 global biodiversity framework and beyond to support biodiversity conservation, the UN Sustainable Development Goals and efforts to abate climate change. Here, we describe the scientific foundations for an ecosystem goal and milestones, founded on a theory of change, and review available indicators to measure progress. An ecosystem goal should include three core components: area, integrity and risk of collapse. Targets—the actions that are necessary for the goals to be met—should address the pathways to ecosystem loss and recovery, including safeguarding remnants of threatened ecosystems, restoring their area and integrity to reduce risk of collapse and retaining intact areas. Multiple indicators are needed to capture the different dimensions of ecosystem area, integrity and risk of collapse across all ecosystem types, and should be selected for their fitness for purpose and relevance to goal components. Science-based goals, supported by well-formulated action targets and fit-for-purpose indicators, will provide the best foundation for reversing biodiversity loss and sustaining human well-being. Sustaining ecosystems is essential for biodiversity conservation and human well-being. This Perspective synthesizes the scientific basis for an effective goal for ecosystem conservation, and associated indicators of progress, that can be applied from global to local scales.
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