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2
Census Report Volume 4-A
This thematic report presents findings on fertility and nuptiality in Myanmar. The analysis hows that the total fertility rate is 2.5 children per woman at the Union level, 1.9 children per woman for urban areas, and 2.8 children per woman for rural areas. Total fertili ... ty for States and Regions varies from a high of 5.0 children per woman for Chin State to a low of 1.8 children per woman for Yangon Region. Total fertility appears to have declined at a rate of at least one child per woman per decade between 1970 and 2000. This relatively rapid decline apparently ceased sometime during the 1990s or 2000s. Estimates from the 2001 and 2007 surveys suggest that the level of fertility may have fluctuated between 2000 and 2014, but with no overall trend up or down. The marital status data shows an exceptionally high proportion of women remaining never married at age 50. more
This thematic report presents findings on fertility and nuptiality in Myanmar. The analysis hows that the total fertility rate is 2.5 children per woman at the Union level, 1.9 children per woman for urban areas, and 2.8 children per woman for rural areas. Total fertili ... ty for States and Regions varies from a high of 5.0 children per woman for Chin State to a low of 1.8 children per woman for Yangon Region. Total fertility appears to have declined at a rate of at least one child per woman per decade between 1970 and 2000. This relatively rapid decline apparently ceased sometime during the 1990s or 2000s. Estimates from the 2001 and 2007 surveys suggest that the level of fertility may have fluctuated between 2000 and 2014, but with no overall trend up or down. The marital status data shows an exceptionally high proportion of women remaining never married at age 50. more
Census Report Volume 4-L
Myanmar’s 2014 Census enumerated 4.5 million people aged 60 and over and by 2050 Myanmar is projected to have 13 million people in this age group.
Myanmar’s population has aged between 1973 and 2014; while the total population increased at an annual rate of 1. ... 4 per cent, the population aged 60 and over increased annually by 2.4 per cent. Within the older population, the oldest age group, those over 80 years old, has been growing much faster than those aged 60-79. In 2014, the urban population was slightly older than the rural population. This is the result of a more rapid decline in urban fertility, offset by net migration to urban areas by youth and young adults. more
Myanmar’s 2014 Census enumerated 4.5 million people aged 60 and over and by 2050 Myanmar is projected to have 13 million people in this age group.
Myanmar’s population has aged between 1973 and 2014; while the total population increased at an annual rate of 1. ... 4 per cent, the population aged 60 and over increased annually by 2.4 per cent. Within the older population, the oldest age group, those over 80 years old, has been growing much faster than those aged 60-79. In 2014, the urban population was slightly older than the rural population. This is the result of a more rapid decline in urban fertility, offset by net migration to urban areas by youth and young adults. more
Census Report Volume 4-F (Thematic report on Population Projections for the Union of Myanmar, States/Regions, Rural and Urban Areas, 2014-2050)
Key findings
- The total population of Myanmar is estimated to be 65 million by 2050. The projection is based on steadily declining population grow ... th rate over the projection period: from 0.9 per cent in 2015 to 0.3 per cent in 2050.
- The proportion of the urban population rises from 29.3 per cent in 2015 to 34.7 in 2050. The rural and urban crude birth rates both decline between 2015 and 2050, but the difference between them narrows to almost zero by the end of the period.
- The population of Yangon grows more rapidly than any other area, by 39 per cent between 2015 and 2031. Other rapidly growing areas include Kayah (37 per cent), Kachin (32 per cent), Nay Pyi Taw (27 per cent), and Shan (26 per cent). Ayeyawady, Magway and Mon lose population, mostly due to migration. more
Key findings
- The total population of Myanmar is estimated to be 65 million by 2050. The projection is based on steadily declining population grow ... th rate over the projection period: from 0.9 per cent in 2015 to 0.3 per cent in 2050.
- The proportion of the urban population rises from 29.3 per cent in 2015 to 34.7 in 2050. The rural and urban crude birth rates both decline between 2015 and 2050, but the difference between them narrows to almost zero by the end of the period.
- The population of Yangon grows more rapidly than any other area, by 39 per cent between 2015 and 2031. Other rapidly growing areas include Kayah (37 per cent), Kachin (32 per cent), Nay Pyi Taw (27 per cent), and Shan (26 per cent). Ayeyawady, Magway and Mon lose population, mostly due to migration. more
Report on Main Findings
The review encompasses three complementary components: 1) a review of published literature 2000-2015 on NCDs and their risk factors; 2) qualitative interviews with key actors engaged in NCD research in Myanmar; and 3) additional reviews of Myanmar ethical committee inqui ... ries and postgraduate research on NCDs in Myanmar. This report outlines the key findings from the three components including a synthesis of the key outcomes from the literature review and qualitative interviews, and an assessment of the gaps in the evidence against a framework of evidence needs. more
The review encompasses three complementary components: 1) a review of published literature 2000-2015 on NCDs and their risk factors; 2) qualitative interviews with key actors engaged in NCD research in Myanmar; and 3) additional reviews of Myanmar ethical committee inqui ... ries and postgraduate research on NCDs in Myanmar. This report outlines the key findings from the three components including a synthesis of the key outcomes from the literature review and qualitative interviews, and an assessment of the gaps in the evidence against a framework of evidence needs. more
(Health Systems in Transition, Vol. 4, No. 3, 2014)
Background Paper prepared for the 2015 Global Assessment Report on Disaster Risk Reduction
The aim of this paper is to help bring voluntary standards into the toolbox of disaster risk reduction, including both by encouraging their use by business and by enhancing their role in legislation and ... regulatory practice.
- Authorities can build awareness for standards in Disaster Risk Reduction (DRR), by facilitating access to relevant standards, encouraging education on DRR-related standards and involving the standardization community.
- Standards need to be sustained by a powerful infrastructure that allows for reliable inspections, audits and precise measurements to be conducted by skilled professionals.
- Risk management best practice needs to embed, as emdodies in standards, more fully in regulatory frameworks in sectors that are relevant. more
The aim of this paper is to help bring voluntary standards into the toolbox of disaster risk reduction, including both by encouraging their use by business and by enhancing their role in legislation and ... regulatory practice.
- Authorities can build awareness for standards in Disaster Risk Reduction (DRR), by facilitating access to relevant standards, encouraging education on DRR-related standards and involving the standardization community.
- Standards need to be sustained by a powerful infrastructure that allows for reliable inspections, audits and precise measurements to be conducted by skilled professionals.
- Risk management best practice needs to embed, as emdodies in standards, more fully in regulatory frameworks in sectors that are relevant. more
Стандарты для сокращения риска бедствий
The National Integrated Comprehensive Cholera Prevention and Control Plan (2017-2022) outlines Uganda's strategy to reduce cholera cases and mortality by 50% by 2022. The plan focuses on improving access to clean water, sanitation, and hygiene (WASH), strengthening disease surveillance, enhancing ca
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se management, and implementing oral cholera vaccination (OCV) in high-risk areas. It emphasizes multi-sectoral collaboration, involving government agencies, NGOs, and local communities to ensure a sustainable response. Key interventions include community engagement, improved health services, and better outbreak preparedness, aiming for long-term cholera elimination in Uganda.
more
The guidelines are presented in the form of the following chapters:
Chapter 1: Floods status and context
Chapter 2: Institutional framework and financial arrangements
Chapter 3: Flood prevention, preparedness and mitigation
Chapter 4: Flood forecasting and warning in India
C ... hapter 5: Dams, reservoirs and other water shortages
Chapter 6: Regulation and enforcement
Chapter 7: Capacity development
Chapter 8: Flood response
Chapter 9: Implementation of guidelines: preparation of flood management plans
Chapter 10: Summary of action points more
Chapter 1: Floods status and context
Chapter 2: Institutional framework and financial arrangements
Chapter 3: Flood prevention, preparedness and mitigation
Chapter 4: Flood forecasting and warning in India
C ... hapter 5: Dams, reservoirs and other water shortages
Chapter 6: Regulation and enforcement
Chapter 7: Capacity development
Chapter 8: Flood response
Chapter 9: Implementation of guidelines: preparation of flood management plans
Chapter 10: Summary of action points more
Flood Disaster Risk Management - Hydrological Forecasts: Requirements and Best Practices (Training Module)
Vogelbacher, A.
National Institute of Disaster Management (NIDM), Deutsche Gesellschaft für Internationale Zusammenarbeit (GIZ)
(2013)
C1
This Case Study explores flood forecasting systems from the perspective of its position within the flood warning process. A method for classifying the different approaches taken in flood forecasting is introduced before the elements of a present-day flood forecasting system are discussed in detail.
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Finally, the state of the art in developing flood forecasting systems is addressed including how to deal with specific challenges posed.
The target group of this case study are decision makers in disaster risk management and/or water management. The case study should help to understand some hydrologic basics of the flood forecast and assist in the administration and implementation of an appropriate flood warning system in a specific environment, to find the best solution for a region.
Best solutions depend mainly on quality and availability of data, the areas and/or points of interest, catchment properties, cross border catchments, and financial capabilities with special consideration of flood forecast. more
The target group of this case study are decision makers in disaster risk management and/or water management. The case study should help to understand some hydrologic basics of the flood forecast and assist in the administration and implementation of an appropriate flood warning system in a specific environment, to find the best solution for a region.
Best solutions depend mainly on quality and availability of data, the areas and/or points of interest, catchment properties, cross border catchments, and financial capabilities with special consideration of flood forecast. more
The National Disaster Management Plan (NDMP) provides a framework and direction to the government agencies for all phases of disaster management cycle. The NDMP is a “dynamic document” in the sense that it will be periodically improved keeping up with the emerging global best practices and knowl
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edge base in disaster management. It is in accordance with the provisions of the Disaster Management Act, 2005, the guidance given in the National Policy on Disaster Management, 2009 (NPDM), and the established national practices.
more
Myanmar is prone to various natural hazards that include earthquakes, floods, cyclones, droughts, fires, tsunamis, some of whichhave the potential to impact large numbers of people. In the event that large numbers of people are affected(such as was the case in 2008 following cyclone Nargis), the gov
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ernment may decide to request international assistance to respond to the disaster.
The overall goal of the ERPP is to mitigate the impact of disasters and save as many lives as possible from preventable causes. It aims to ensure that effective and timely assistance is provided to people in need through effective coordination and communication on emergency preparedness and humanitarian response between members of the HCTin Myanmar. The approach has been developed in collaboration with the Government, to facilitate a coordinated and effective support to people affected by humanitarian crises.
more
This study aimed to understand the patterns of HIV drug resistance in pregnant women in Mozambique. This might help in tailoring optimal regimens for prevention of mother to child transmission of HIV (pMTCT) and antenatal care.
Disability Inclusion in Disaster Risk Management: Promising practices and opportunities for enhanced engagement
Guernsey, Katherine; Scherrer, Valérie
Global Facility for Disaster Reduction and Recovery (GFDRR), World Bank
(2018)
C1
This paper provides information to assist World Bank and GFDRR staff in affecting disability-inclusive DRM. It is based upon desk reviews of existing practice, as well as consultations with experts in the field of disability-inclusive DRM. The paper:
- Illustrates promising practices related to ... disability-inclusive DRM;
- Identifies key gaps in knowledge and practices;
- Identifies value-added areas for GFDRR and the World Bank, including specific actions they can take to advance the disability and social inclusion agenda in DRM;
It includess:
- Relevant guiding international policy frameworks;
- Disability inclusion in the priorities of the Sendai Framework for Disaster Risk Reduction; - Illustrations of promising practices in disability-inclusive DRM;
- An annex of resources related to disability and DRM. more
- Illustrates promising practices related to ... disability-inclusive DRM;
- Identifies key gaps in knowledge and practices;
- Identifies value-added areas for GFDRR and the World Bank, including specific actions they can take to advance the disability and social inclusion agenda in DRM;
It includess:
- Relevant guiding international policy frameworks;
- Disability inclusion in the priorities of the Sendai Framework for Disaster Risk Reduction; - Illustrations of promising practices in disability-inclusive DRM;
- An annex of resources related to disability and DRM. more
This Manual is primarily intended for community level volunteers trained in Community Based Disaster Risk Management (CBDRM) and CBDRM Practitioners and Professionals.
The year of publication is not specified in the document.
The year of publication is not specified in the document.
This handbook presents basic content and tips for implementing a school-based risk reduction programme. It is organised into five modules: its importance; approach and process; activities to benefit children up to five years old; activities for students aged 5–17; and activities for young people a
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nd volunteers aged 17–24.
A generic framework for school-based risk reduction initiatives is illustrated in a diagram on p.10. The Comprehensive School Safety framework suggests a series of continuing activities that include: identifying the hazards in and around a school; conducting drills; preparing contingency and disaster management plans by involving parents, teachers and students; and building on the capacities of an institution and individuals to cope with the challenges during an unforeseen event. It also consists of three pillars: safe learning facilities; school disaster management; and risk reduction and resilience education. more
A generic framework for school-based risk reduction initiatives is illustrated in a diagram on p.10. The Comprehensive School Safety framework suggests a series of continuing activities that include: identifying the hazards in and around a school; conducting drills; preparing contingency and disaster management plans by involving parents, teachers and students; and building on the capacities of an institution and individuals to cope with the challenges during an unforeseen event. It also consists of three pillars: safe learning facilities; school disaster management; and risk reduction and resilience education. 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
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
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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 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
This book contains the findings of technical reviews of eight transitional shelter designs. It is divided into sections:
- Section A discusses transitional shelter design briefs, includes a programming checklist and explains how the shelters in this book were reviewed.
- Section B contains ... summary findings of the technical reviews for the eight shelters.
- Section C contains design details for foundations, walls and roofs.
- Annexes contain details of materials, a template design brief, conversion tables, a glossary, and references. more
- Section A discusses transitional shelter design briefs, includes a programming checklist and explains how the shelters in this book were reviewed.
- Section B contains ... summary findings of the technical reviews for the eight shelters.
- Section C contains design details for foundations, walls and roofs.
- Annexes contain details of materials, a template design brief, conversion tables, a glossary, and references. more