Section for Ecoinformatics and Biodiversity, Center for Biodiversity Dynamics in a Changing World, Department of Bioscience, Aarhus University, 8000 Aarhus, Denmark;
School of Geosciences, University of Edinburgh, EH8 9XP Edinburgh, United Kingdom.
Proc Natl Acad Sci U S A. 2019 Jan 22;116(4):1213-1218. doi: 10.1073/pnas.1812969116. Epub 2019 Jan 7.
Tracking the progress of the Sustainable Development Goals (SDGs) and targeting interventions requires frequent, up-to-date data on social, economic, and ecosystem conditions. Monitoring socioeconomic targets using household survey data would require census enumeration combined with annual sample surveys on consumption and socioeconomic trends. Such surveys could cost up to $253 billion globally during the lifetime of the SDGs, almost double the global development assistance budget for 2013. We examine the role that satellite data could have in monitoring progress toward reducing poverty in rural areas by asking two questions: () Can household wealth be predicted from satellite data? () Can a socioecologically informed multilevel treatment of the satellite data increase the ability to explain variance in household wealth? We found that satellite data explained up to 62% of the variation in household level wealth in a rural area of western Kenya when using a multilevel approach. This was a 10% increase compared with previously used single-level methods, which do not consider details of spatial landscape use. The size of buildings within a family compound (homestead), amount of bare agricultural land surrounding a homestead, amount of bare ground inside the homestead, and the length of growing season were important predictor variables. Our results show that a multilevel approach linking satellite and household data allows improved mapping of homestead characteristics, local land uses, and agricultural productivity, illustrating that satellite data can support the data revolution required for monitoring SDGs, especially those related to poverty and leaving no one behind.
跟踪可持续发展目标(SDGs)的进展并针对干预措施进行定位需要经常获取最新的社会、经济和生态条件数据。使用家庭调查数据监测社会经济目标,需要普查登记和年度消费及社会经济趋势抽样调查相结合。在 SDGs 的整个生命周期内,这种调查的全球费用可能高达 2530 亿美元,几乎是 2013 年全球发展援助预算的两倍。我们通过询问两个问题来探讨卫星数据在监测农村地区减贫进展方面可以发挥的作用:(1)能否根据卫星数据预测家庭财富?(2)能否通过对卫星数据进行社会生态知情的多层次处理来提高解释家庭财富差异的能力?我们发现,在肯尼亚西部一个农村地区,使用多层次方法,卫星数据可以解释高达 62%的家庭财富水平的差异。与以前使用的不考虑空间景观使用细节的单一层次方法相比,这一比例提高了 10%。家庭大院(宅基地)内建筑物的大小、宅基地周围裸露的农业用地面积、宅基地内裸露的土地面积以及生长季节的长度是重要的预测变量。我们的研究结果表明,将卫星数据与家庭数据联系起来的多层次方法可以改进宅基地特征、当地土地利用和农业生产力的绘制,表明卫星数据可以支持监测 SDGs 所需的数据革命,尤其是那些与贫困和不落下任何人有关的目标。