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Human Development &
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Multi-Disciplinary and People-Centred

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  1. Latin American Network: Introduction

    …a a próxima conferência da ALCADECA, que deve ocorrer em 2021. Facilitar a comunicação entre os pesquisadores da região, compartilhar informações relevantes, organizar eventos acadêmicos e oferecer diferentes tipos de oportunidades para construir um espaço inclusivo e diversificado para a discussão de tópicos relacionados ao desenvolvimento humano são as principais atividades da rede HDCA-LA . Embora se recomende fortemente que os colegas interess…

  2. JHDC Special Issue Call for Papers – Communities and Capabilities

    …ified of the selection outcome after submission of the manuscript to an anonymous peer review process, and if the paper is selected. Complete instructions for authors can be found at the publisher’s website: The deadline for submissions is November 7, 2016. For inquiries, please contact Graciela Tonon  …

  3. Webinar Discussion: Democratising Measurement: A Case Study from Well-Being Public Policy.

    …dates, and to register, please visit our website: Upcoming Webinar Series Themes 1. Democratising Measurement: A Case Study from Well-Being Public Policy Anna Alexandra & Mark Fabian 6th April, Tuesday, 11am BST (GMT +1) 2. Conceptualizing Well-Being Ingrid Robeyns 19th April, Monday, 6.30pm BST (GMT +1) 3. Methodological Options and Challenges for Measuring Multidimensional Well-Being* 4. Participatory Approaches to…

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Land use planning for disaster risk reduction and climate change adaptation: Operationalizing policy and legislation at local levels. International Journal of Disaster Resilience in the Built Environment, 7(2), 158–172. 6) DCHB (District census Handbook) 7) Diallo, Y., Hu, G., & Wen, X. (2009). Applications of remote sensing in land use/land cover change detection in Puer and Simao Counties, Yunnan Province. Journal of American Science, 5(4), 157–166. 8) Duke, N.C., Meynecke, J.O., Dittmann, S., Ellison, A.M., Anger, K., Berger, U. (2007) “A World Without Mangroves?” Science, 317, 41–42. 9) Erener, A., Du ¨zgu ¨n, S., & Yalciner, A. C. (2012). Evaluating land use/cover change with temporal satellite data and information systems. Procedia Technology, 1, 385–389. 10) Erener, A., Du ¨zgu ¨n, S., & Yalciner, A. C. (2012). Evaluating land use/cover change with temporal satellite data and information systems. Procedia Technology, 1, 385–389. 11) Foody, G. M. (2002). 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