人口
人口老龄化
政府(语言学)
城市规划
公司治理
独创性
城市化
代理(哲学)
经济增长
环境规划
业务
政治学
社会学
地理
工程类
经济
定性研究
土木工程
社会科学
财务
人口学
哲学
语言学
作者
Simona Azzali,André Siew Yeong Yew,Caroline Wong,Taha Chaiechi
出处
期刊:ArchNet-IJAR
[Emerald (MCB UP)]
日期:2022-04-25
卷期号:16 (2): 281-306
被引量:2
标识
DOI:10.1108/arch-09-2021-0252
摘要
Purpose This paper explores ways in which Singapore adapts its planning policy and practices to meet the needs of its growing silver population, particularly the relationship between ageing related policies and its urban development strategies. Design/methodology/approach The research assesses Singapore's urban planning policies for the ageing population against the WHO framework for age-friendly cities using Kampung Admiralty (KA) (a pioneering project of integrated housing cum community for the ageing population) as a case study for the analysis. The methodology adopted includes a post-occupancy evaluation and a walking tour of the selected case study (Kampung Admiralty), and an analysis of Singapore's ageing policies in relation to urban planning governance. Findings The study examines the role and significance of a multi-agency collaborative governance structure in ageing planning policies with diverse stakeholders in the project. The evaluation carried out on KA reveals the challenges and opportunities in urbanisation planning for the ageing population. This paper concludes by emphasising the potential of multi-collaborative governance and policymaking in creating an inclusive, liveable built environment for the ageing population in Singapore, particularly but also potential implications for other ASEAN tropical cities. Practical implications The case study identified key issues in Singapore's urban planning for betterment in ageing and highlighted the requirement for enhancing urban planning strategies. Originality/value This article fulfils an identified need for the Singapore government to address the issue of ageing by providing affordable and silver-friendly housing to its ageing population.
科研通智能强力驱动
Strongly Powered by AbleSci AI