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Sustainable Cities Survey, Maputo 2019 - Mozambique

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www.datafirst.uct.ac.za2024-08-23 更新2025-01-22 收录
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Abstract --------------------------- The data was collected by the Project “Co-producing urban knowledge in Angola and Mozambique through community-led data collection: towards meeting SDG 11” based in the African Centre for Cities, at the University of Cape Town. The Project aimed to collect data on cities in the two Lusophone African countries to inform their national governments' attempts to achieve Sustainable Development Goals related to cities. The Project collected data from 1282 households in six neighbourhoods in the cities of Maputo and Luanda. Interviews and focus groups were also held in each of the neighbourhoods before (in the case of Maputo) and after (in the case of Luanda) the completion of the survey to collect qualitative data about the settlements. The survey findings were presented and discussed with local administrations and survey participants to triangulate and validate the results. The findings were then made available to national governments and other relevant stakeholders. The Project was funded by the International Science Council research funding programme, Leading Integrated Research for Agenda 2030 in Africa (LIRA 2030 AFRICA). Geographic coverage --------------------------- The data was collected from settlements within each city. In Luanda these settlements were: Km 12A in the district of Viana (n=310), Nova Urbaniza 2 in Panguila (n=148), and Cariango in Cazenga (n=224). In Maputo these were Luis Cabral (n=200), Hulene B (n=200) and Chamanculo C (n=200). These together represent a total of 1282 households. Analysis unit --------------------------- Households and individuals Kind of data --------------------------- Sample survey data Sampling procedure --------------------------- In both cities, three self-built settlements were selected for the surveys. These settlement types are home to the majority of, mostly low income, urban dwellers in both cities, as opposed to wealthier households who live in planned and formally laid-out houses and apartment buildings Self-built settlements vary by location. built environment, and levels of access to basic services. The research sample was stratified to reflect this variation through the selection of three settlements with similar typologies in each city: an old settlement from colonial times, a more recently built or expanded settlement, and a settlement that had undergone urban upgrading. Mode of data collection --------------------------- Face-to-face [f2f] Response rate --------------------------- Few participants declined to be interviewed. The enumerators would record the number of households they attempted to interview before completing a questionnaire (on average one house in Luanda and less than one In Maputo), but the data does not distinguish between refusal to participate or no one being at home.

摘要 --------------------------- 本数据集由非洲城市中心(位于开普敦大学)的“通过社区主导数据收集在安哥拉和莫桑比克共同生产城市知识:迈向实现城市相关可持续发展目标11”项目收集。该项目旨在收集两个葡语非洲国家城市的数据,以供其国家政府参考,以实现与城市相关的可持续发展目标。项目从马普托和罗安达六个社区中的1282户家庭收集数据。在调查前后(在马普托的情况下)和调查后(在罗安达的情况下),每个社区都进行了访谈和焦点小组讨论,以收集关于定居点的定性数据。调查结果与当地政府和调查参与者进行了展示和讨论,以三角测量和验证结果。随后,这些结果被提供给国家政府和其他相关利益相关者。该项目由国际科学理事会研究资助计划“引领非洲2030议程综合研究”(LIRA 2030 AFRICA)资助。 地理覆盖范围 --------------------------- 数据收集自每个城市内的定居点。在罗安达,这些定居点包括:维尼亚区的Km 12A(n=310)、潘吉拉的Nova Urbaniza 2(n=148)和卡曾加区的Cariango(n=224)。在马普托,这些定居点包括Luis Cabral(n=200)、Hulene B(n=200)和Chamanculo C(n=200)。这些定居点共同代表1282户家庭。 分析单元 --------------------------- 家庭和个人 数据类型 --------------------------- 样本调查数据 抽样程序 --------------------------- 在两个城市中,选择了三个自建定居点进行调查。这些定居点类型是两个城市中大多数、主要是低收入的城市居民的居住地,与居住在规划且有正式布局的房屋和公寓楼的富裕家庭形成对比。自建定居点因地理位置、建成环境和基本服务获取水平的不同而有所差异。研究样本分层,以通过在每个城市中选择具有相似类型的三个定居点来反映这种差异:一个殖民时期的旧定居点、一个较新建或扩建的定居点以及一个经历过城市升级的定居点。 数据收集方式 --------------------------- 面对面[f2f] 应答率 --------------------------- 少数参与者拒绝了访谈。调查员会在完成问卷(在罗安达平均每户一户,在马普托不到一户)之前记录他们试图访谈的家庭数量,但数据无法区分拒绝参与或家中无人这两种情况。
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