2018- CSA Monitoring: Khulna Climate-Smart Village (Bangladesh)

This dataset contains the files produced in the implementation of the “Integrated Monitoring Framework for Climate-Smart Agriculture” in the Barisal Climate Smart Village (Bangladesh) in December 2018. This monitoring framework developed by CCAFS is meant to be deployed annually across the global ne...

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Hauptverfasser: Bonilla-Findji, Osana, Eitzinger, Anton, Andrieu, Nadine, Jarvis, Andy, Khatri-Chhetri, Arun, Nagpal, Mansi, Hossain, Emdad, Rashid, Harun Or
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creator Bonilla-Findji, Osana
Eitzinger, Anton
Andrieu, Nadine
Jarvis, Andy
Khatri-Chhetri, Arun
Nagpal, Mansi
Hossain, Emdad
Rashid, Harun Or
description This dataset contains the files produced in the implementation of the “Integrated Monitoring Framework for Climate-Smart Agriculture” in the Barisal Climate Smart Village (Bangladesh) in December 2018. This monitoring framework developed by CCAFS is meant to be deployed annually across the global network of Climate-Smart Villages to gather field-based evidence by tracking the progress on: adoption of CSA practices and technologies, as well as access to climate information services and their related impacts at household level and farm level This framework proposes standard Descriptive Indicators to track changes in: 5 enabling dimensions that might affect adoption patterns, a set of 5 CORE indicators at Household level to assess perceived effects of CSA practices on Food Security, Productivity, Income and Climate vulnerability and 4 CORE indicators on Gender aspects (Participation in decision making, Participation in implementation, Access/control over Resources and work time). At farm level, 7 CORE indicators are suggested to determine farms CSA performance, as well as synergies and trade-offs among the three pillars. This integrated framework is associated with a cost-effective data collection App (Geofarmer) that allowed capturing information in almost real time. The framework responds to three main research questions: Within each CSV community, who adopts which CSA technologies and practices and what are their motivations, enabling/constraining factors? What are the gender-disaggregated perceived effects of CSA options on farmers’ livelihood (agricultural production, income, food security, food diversity and adaptive capacity) and on key gender dimensions (participation in decision-making, participation in CSA implementation and dis-adoption, control and access over resources and labour)? How does CSA perform at farm level, and what synergies and trade-offs exist (whole farm model analysis)? The survey questionnaire is structured around different thematic modules (Demographic, Livelihoods, Food Security, Climate events, Climate Services, CSA practices, Financial Services) whose questions allow assessing standard CSA metrics and the specific indicators associated with the research questions 1 and 2. In this 2018 Monitoring, data collection to address research question #3 was not carried out.
doi_str_mv 10.7910/dvn/9lgiku
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identifier DOI: 10.7910/dvn/9lgiku
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subjects Adaptation
Agricultural Sciences
Climate Shocks
Climate Smart Agriculture
Earth and Environmental Sciences
Farm
Farmers
Food Security
Households
Livelihoods
Monitoring
title 2018- CSA Monitoring: Khulna Climate-Smart Village (Bangladesh)
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