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Publication Years
1
3440
7196
988
59
4
1
2
1
Category
4625
727
726
611
521
259
56
3
Toolboxes
1056
990
627
624
507
425
394
356
320
272
268
230
190
186
174
164
123
121
103
103
87
75
66
58
42
15
3
Torrential rains and the onset of Cyclone Komen triggered severe and widespread floods and landslides in July and August 2015 across 12 out of 14 states and regions in Myanmar. An estimated 1.6 million individuals were recorded as having been temporarily displaced from their homes by the disaster, a
...
nd 132 lost their lives. Up to 5.2 million people were exposed to the floods and landslides in the 40 most heavily affected townships. Within the 40 most-affected townships, 775,810 individuals have been displaced, accounting for approximately half of the total displaced population.
The Project recognizes that although the major target disaster is cyclones, the methodology of the Project activities to enhance the capacity of EWS, HRD and CBDRM is also applicable to mitigate the damage of floods. By analyzing the results of a survey based on the experience of the Project activities, the Project can contribute to describe tangible lessons learned and future recommendations for the counterpart agencies and disaster management related agencies of the Government of Myanmar. more
The Project recognizes that although the major target disaster is cyclones, the methodology of the Project activities to enhance the capacity of EWS, HRD and CBDRM is also applicable to mitigate the damage of floods. By analyzing the results of a survey based on the experience of the Project activities, the Project can contribute to describe tangible lessons learned and future recommendations for the counterpart agencies and disaster management related agencies of the Government of Myanmar. more
Guideline on Inclusive Disaster Risk Reduction: Early Warning and Accessible Broadcasting
Dion, Betty; Qureshi, Aqeel
Global Alliance on Accessible Technologies and Environments (GAATES), Asia Pacific Broadcasting Union, Asia Disaster Preparedness Center
(2014)
C1
- Build community resilience to coastal hazards by improving capacity of inclusive disaster management systems.
- Reduce the mortality rate of persons with disabilities in situations of risk.
- Raise awareness about inclusive policies, practices and disaster risk reduction strategies that address
...
the accessibility of communication, shelter, transportation and early warning systems.
- Foster collaboration between disaster preparedness organizations, broadcasters and organizations of persons with disabilities to mainstreaming disability issues in disaster risk reduction strategies.
- Build the capacity of disaster management organizations, governments, broadcasters and built environment practitioners by providing technical specifications on accessible communications and the design of accessible shelters and the built environment.
more
Green Climate Fund Proposal Toolkit 2017: Toolkit to develop a project proposal for the GCF
Fayolle, Virginie; Odianose, Serena
Acclimatise, Climate and Development Knowledge Network (CDKN)
(2017)
C1
The GCF aims to support developing countries in achieving a paradigm shift to low-emission and climate-resilient pathways. This is achieved by funding innovative and transformative lowemission (mitigation) and climate-resilient (adaptation) projects and programmes developed by the public and private
...
sectors to contribute to the implementation of national climate change priorities in developing countries. While it is relatively easy to tell what a mitigation project or programme is (i.e. its contribution to the reduction of greenhouse gases in the atmosphere, and/or whether it increases the capacity of an ecosystem to absorb them), the blurred line between a general development project and an adaptation project has been a contentious issue in the international climate finance debate. The relevant question is not whether a project is (also) a development project, but whether the project contributes to adaptation (i.e. what the adaptation/additionality argument is).
This toolkit helps governments and project developers understand how to fulfil the Green Climate Fund’s requirements when developing a fully-fledged funding proposal. more
This toolkit helps governments and project developers understand how to fulfil the Green Climate Fund’s requirements when developing a fully-fledged funding proposal. more
The BRACED Myanmar Alliance was a three-year project aiming to ‘build the resilience of 350,000 people across Myanmar to climate extremes’. The project worked in 7 states, 8 townships and 155 communities. The main impact for project populations was intended to be ‘improved well-being and reduc
...
ed loss and damage despite climate shocks’, and the project sought to do this by addressing immediate hazard-related needs at community level while encouraging longer-term solutions driven and delivered by communities and subnational and national government.
Community Resilience Assessments (CRAs) were the first activities delivered as part of the project, and the list of community-identified needs became the basis from which local-level project interventions were selected. The selection typically involved an infrastructure requirement (linked to addressing a natural hazard, and sometimes shared between communities); a package of livelihood support (assets and trainings); capacity-building on climate change/resilience topics; and village savings and loans association (VSLA) support. A particular emphasis was placed on women’s empowerment, and leadership trainings and support to women’s self-help groups were provided. more
Community Resilience Assessments (CRAs) were the first activities delivered as part of the project, and the list of community-identified needs became the basis from which local-level project interventions were selected. The selection typically involved an infrastructure requirement (linked to addressing a natural hazard, and sometimes shared between communities); a package of livelihood support (assets and trainings); capacity-building on climate change/resilience topics; and village savings and loans association (VSLA) support. A particular emphasis was placed on women’s empowerment, and leadership trainings and support to women’s self-help groups were provided. more
The purpose of this document is to provide a comprehensive overview of existing institutional arrangement for disaster management in Myanmar at all levels with an aim to make information available to all stakeholders involved in disaster risk management in Myanmar.
The guidance aspires
• To emphasize the 'need' to mainstream disaster risk reduction (DRR) in the health sector initiatives.
• To identify key approaches for mainstreaming DRR in the health sector in Myanmar, particularly in rural areas, based on the good practices, innovative approach ... es and lessons learned of Government, UN agencies, NGOs and others involved in the Cyclone Nargis recovery.
• Identify key ‘vulnerabilities and opportunities’ for creating a ‘safer health system’ in Myanmar.
No publication year indicated. more
• To emphasize the 'need' to mainstream disaster risk reduction (DRR) in the health sector initiatives.
• To identify key approaches for mainstreaming DRR in the health sector in Myanmar, particularly in rural areas, based on the good practices, innovative approach ... es and lessons learned of Government, UN agencies, NGOs and others involved in the Cyclone Nargis recovery.
• Identify key ‘vulnerabilities and opportunities’ for creating a ‘safer health system’ in Myanmar.
No publication year indicated. more
Lack of satisfactory progress in mainstreaming disaster risk reduction within development is attributed to various factors. One of the important factor that is often not much appreciated is the inadequate comprehension of mainstreaming and the absence of clear, cogent and practical guidelines, tools
...
and techniques for mainstreaming DRR within development. This Guidebook helps to tackle this challenge by providing strategic and practical guidelines on how to mainstream disaster risk reduction into their policies plans and programmes across key sectors. It discusses strategic approaches towards risk resilient development in the Asia-Pacific region and demonstrates how to operationalize them using examples from various countries in the region. These guidelines can be adopted by countries according to their specific contexts, resources and capacities.
more
The Strategic Framework for Emergency Preparedness is a unifying framework which identifies the principles and elements of effective country health emergency preparedness. It adopts the major lessons of previous initiatives and lays out the planning and implementation process by which countries can
...
determine their priorities and develop or strengthen their operational capacities. The framework capitalizes on the strengths of current initiatives and pushes for more integrated action at a time when there is both increased political will and increased funding available to support preparedness efforts.
more
The “Case Study: CDI2WASH Program” depicts the benefits and lessons learnt by the beneficiaries and change agents in CDI2WASH program during the last 4 years. The document has contained the success of the project and accumulated learning have been documented in the publication. It upholds the ac
...
hievement of the process and will remain as the supportive document help while taking any types of WASH development interventions by any stakeholders.
No publication year indicated. more
No publication year indicated. more
The Look Back Study (LBS) focuses on the water and sanitation and hygiene (WASH) component of the project but some additional information was collected along side the WASH data. This data has been compared to the baseline survey data that was reported at start of the project (see tables in annex D t
...
o this report).
more
Integrated Water Resources Management in Myanmar: Water usage and introduction to water quality criteria for lakes and rivers in Myanmar. Preliminary report
Mjelde, Marit; Ballot, Andreas; Swe, Thida; Eriksen, Tor Erik; Nesheim, Ingrid; Aung, Toe Toe
Norsk institutt for vannforskning (NIVA)
(2017)
C1
The purpose of the report is to present some first recommendation for the development of Myanmar ecological quality criteria using the system of the EU Water Framework Directive (EU WFD) as baseline, with main focus on the characterization and classification processes. As background for the recommen
...
dations we first give an overview of the main water use categories in Myanmar. We then provide preliminary suggestions for typology criteria and indices for assessing ecological status in lakes and rivers in Myanmar. The typology factors and physico-chemical parameters are based on common used factors in the EU countries. The biological elements include phytoplankton and aquatic macrophytes for lakes, and benthic invertebrates for rivers.
more
CBDRR Practice. Case Studies 2
No publication year indicated.
No publication year indicated.
The strategic priorities of the CCS 2014–2018 are:
(1) Strengthening the health system.
(2) Enhancing the achievement of communicable disease control targets.
(3) Controlling the growth of the noncommunicable disease burden.
(4) Promoting health throughout the life course.
... (5) Strengthening capacity for emergency risk management and surveillance systems for various health threats. more
(1) Strengthening the health system.
(2) Enhancing the achievement of communicable disease control targets.
(3) Controlling the growth of the noncommunicable disease burden.
(4) Promoting health throughout the life course.
... (5) Strengthening capacity for emergency risk management and surveillance systems for various health threats. more
Full eHandbook under: http://www.msh.org/resources/health-systems-in-action-an-ehandbook-for-leaders-and-managers
Effective supply management has the potential to make a powerful contribution to the reliable availability of essential medicines, which are a crucial part of the delivery of highqualit
...
y health care services. Because medicines are costly and poor management so often results in waste, good supply management is also crucial to the cost-effectiveness of providing medicines.
more
The USAID | DELIVER PROJECT, Task Order 4, developed this guide for quantifying health commodities; it will assist technical advisors, program managers, warehouse managers, procurement officers, and service providers in (1) estimating the total commodity needs and costs for successful implementation
...
of national health program strategies and goals, (2) identifying the funding needs and gaps for procuring the required commodities, and (3) planning procurements and shipment delivery schedules to ensure a sustained and effective supply of health commodities.
The step-by-step approach to quantification presented in this guide is complemented by a set of product-specific companion pieces that include detailed instructions for forecasting consumption of antiretroviral drugs, HIV test kits, antimalarial drugs, and laboratory supplies.
more
Quantification des intrants de santé : supplément SRMNI - Prévision de la consommation de produits sélectionnés pour la santé reproductive, maternelle, néonatale et infantile
JSI Research & Training Institute, Inc., et Management Sciences for Health
JSI Research & Training Institute, Inc., et Management Sciences for Health
(2016)
C1
Soumis à l’Agence des États-Unis pour le développement international par le programme SIAPS (Systems for Improved Access to Pharmaceuticals and Services ou Programme des systèmes pour l’amélioration de l’accès aux produits et services pharmaceutiques). Arlington, VA : Management Sciences
...
for Health. Soumis à l’UNICEF par JSI, Arlington, VA : JSI Research & Training Institute, Inc.
Ce guide aidera les gestionnaires de programmes, les prestataires de service et les experts techniques lorsqu'ils réaliseront une quantification des besoins en intrants pour les 13 produits indispensables à la santé reproductive, maternelle, néonatale et infantile, dont la priorité a été établie par la Commission des Nations Unies pour les produits qui sauvent la vie des femmes et des enfants. Ce supplément à la quantification ne saurait être utilisé sans son guide principal – Quantification of Health Commodities: A Guide to Forecasting and Supply Planning for Procurement (Quantification des intrants de santé : un guide pour la prévision des achats et la planification des approvisionnements). * Ce supplément décrit les étapes à suivre pour la prévision de la consommation de ces intrants, en l’absence de données sur la consommation ou les services. Ensuite, afin de compléter la quantification, les utilisateurs doivent se référer au guide principal de quantification pour l’étape de planification de l’approvisionnement.
more