Modelling geographic access and school catchment areas across public primary schools to support subnational planning in Kenya

Peter M. Macharia, Angela K. Moturi, Eda Mumo, E. Giorgi, E. Okiro, R. Snow, N. Ray
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引用次数: 1

Abstract

ABSTRACT Understanding the location of schools relative to the population they serve is important to contextualise the time, students must travel and to define school catchment areas (SCAs) for planning. We assembled a spatio-temporal database of public primary schools (PPS), population density of school-going children (SGC), and factors affecting travel in 2009 and 2020 in Kenya. We combined the assembled datasets within cost distance and cost allocation algorithms to compute travel time to the nearest PPS and define SCAs. We elucidated travel time and marginalised SGC living outside 24-minutes, government's threshold at sub-county level (decision-making units). Weassembled 2170 PPS in 2009 and 4682 in 2020, an increase of 115.8%, while the average travel time reduced from 28 to 17 minutes between 2009 and 2020. Nationally, 65% of SGC were within 24-minutes’ catchment in 2009, which increased to 89% in 2020. Subnationally, 19 and 61 out of 62 sub-counties had over 75% of SGC within the same threshold, in 2009 and 2020, respectively. Findings can be used to target the marginalised SGC, and monitor progress towards attainment of national and Sustainable Development Goals. The framework can be applied in other contexts to assemble geocoded school lists, characterise travel time and model SCA.
对肯尼亚公立小学的地理可及性和学校集水区进行建模,以支持肯尼亚的地方规划
了解学校相对于其所服务的人口的位置对于将时间背景化,学生必须旅行和定义学校集水区(SCAs)进行规划非常重要。我们构建了肯尼亚2009年和2020年公立小学(PPS)、学龄儿童人口密度(SGC)和影响旅游因素的时空数据库。我们在成本距离和成本分配算法中结合了组装的数据集,以计算到最近的PPS的旅行时间并定义sca。我们阐明了出行时间,并边缘化了24分钟以外的SGC,这是县级以下(决策单位)政府的门槛。我们在2009年组装了2170台PPS,到2020年组装了4682台,增长了115.8%,而2009年至2020年的平均出行时间从28分钟减少到17分钟。在全国范围内,2009年65%的SGC在24分钟的集水区内,到2020年这一比例增加到89%。在全国范围内,2009年和2020年,62个县中分别有19个和61个县的SGC在同一阈值内超过75%。调查结果可用于针对被边缘化的SGC群体,并监测实现国家和可持续发展目标的进展情况。该框架可以应用于其他环境中,以组合地理编码的学校列表、描述旅行时间和建模SCA。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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