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Publication Years
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Category
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Toolboxes
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1
Census Report Volume 4-C
The 2014 Myanmar Census provided the opportunity to measure maternal mortality. The questions on deaths in households during the twelve months prior to the Census were included in the questionnaire, as well as questions necessary to estimate maternal mortality indicator ... s. more
The 2014 Myanmar Census provided the opportunity to measure maternal mortality. The questions on deaths in households during the twelve months prior to the Census were included in the questionnaire, as well as questions necessary to estimate maternal mortality indicator ... s. 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
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
Sectors in which Priority Adaptation Projects should be implemented first include:
- 1) Agriculture, Early Warning Systems and Forest (First Priority Level Sectors). This is followed by:
- 2) Public Health and Water Resources (Second Priority Level Sectors);
- 3) Coastal Zone (Thir ... d Priority Level Sector); and
- 4) Energy and Industry, and Biodiversity (Fourth Priority Level Sectors). more
- 1) Agriculture, Early Warning Systems and Forest (First Priority Level Sectors). This is followed by:
- 2) Public Health and Water Resources (Second Priority Level Sectors);
- 3) Coastal Zone (Thir ... d Priority Level Sector); and
- 4) Energy and Industry, and Biodiversity (Fourth Priority Level Sectors). more
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
...
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
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
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 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
This guide provides national stakeholders and advocates with information and guidance to update the national essential medicines list to include a new commodity, a new indication, or a new formulation based on the available evidence and based on country need and disease burden. While the actors, tim
...
eline, and process may vary from country to country, this guide presents the broad steps involved in revising an EML for any health commodity. Additional resources and a glossary are included to provide supplemental information and to clarify key terms.
more
The objectives of this guidance document are to:
1. Strengthen the capacity of country teams to effectively scale up and manage programmes to address severe acute malnutrition
2. Extend the geographic reach of quality treatment for SAM to all vulnerable communities in need
3. Maximize ... access to appropriate and quality treatment for SAM among all eligible children in the community at all times
4. Aid the formulation and implementation of national policies and strategies that support objectives 1 to 3
5. Aid the creation of an enabling environment that supports objectives 1 to 3 through advocacy, documentation of successful practices, support for operational research, mobilization of resources and collaboration with partners more
1. Strengthen the capacity of country teams to effectively scale up and manage programmes to address severe acute malnutrition
2. Extend the geographic reach of quality treatment for SAM to all vulnerable communities in need
3. Maximize ... access to appropriate and quality treatment for SAM among all eligible children in the community at all times
4. Aid the formulation and implementation of national policies and strategies that support objectives 1 to 3
5. Aid the creation of an enabling environment that supports objectives 1 to 3 through advocacy, documentation of successful practices, support for operational research, mobilization of resources and collaboration with partners more
The survey is representative of the Union Territory, its states and regions and urban and rural areas. It was conducted in all the districts and in 296 of the 330 townships of Myanmar. A total of 13,730 households were interviewed. It collects data on the occupations of people, how much income they
...
earn, and how they use this to meet the food, housing, health, education and other needs of their families. The main focus of the survey is to produce estimates of poverty and living conditions, to provide core data inputs into the System of National Accounts and the Consumer Price Index and to support monitoring of the Sustainable Development Goals.
more
No publication year indicated
Based on the Vulnerability Index developed in this review, an estimated 22.7 million persons in Myanmar, or 44% of the population, were found to have some form of vulnerability related to human development and/or exposure to active conflict/violence. These people experience varying combinations of p
...
oor housing, lack of education, poor educational attainment, lack of access to safe sanitation and improved drinking water, and direct exposure to conflict.
Shan and Ayeyarwady have the largest populations of vulnerable persons, a function of both their size and relative vulnerability in comparison to other States and Regions. Yangon and Shan show the widest variation in vulnerability across townships (in terms of the number of vulnerable persons and their level of vulnerability), followed by Mandalay, Chin and Rakhine.
Original file: 15 MB more
Shan and Ayeyarwady have the largest populations of vulnerable persons, a function of both their size and relative vulnerability in comparison to other States and Regions. Yangon and Shan show the widest variation in vulnerability across townships (in terms of the number of vulnerable persons and their level of vulnerability), followed by Mandalay, Chin and Rakhine.
Original file: 15 MB more
The first important change is a new priority ranking of the available medicines for MDR-TB treatment, based on a careful balance between expected benefits and harms. Treatment success for MDR-TB is currently low in many countries. This could be increased by improving access to the highest-ranked med
...
icines for all patients with MDR-TB.
more