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Who owns groundwater? Climate Information contributes to better water management. Ramasamy Selvaraju. Tamil Nadu Agricultural University, Coimbatore, Tamil Nadu, INDIA. Smallholder farming systems.
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Who owns groundwater?Climate Information contributes to better water management Ramasamy Selvaraju Tamil Nadu Agricultural University, Coimbatore, Tamil Nadu, INDIA
Smallholder farming systems • Smallholder farms have undergone substantial changes in the last century increasing their exposure to climate variability • 78% of total operational holdings occupies 32% of total agricultural area • The number of shallow tube wells and deep tube wells has increased by about 100% over the last 10 years
Lorenz curves and Gini coefficients for the distributions of total farm income (FI) and agricultural income (AI) under various irrigated cropping systems
What needs to be done? • Climate is one of the many factors influencing agriculture • Make the farmers to understand the climatic risks / opportunities • Help to manage the system through local knowledge and scientific tools
To utilize the ability to predict climate variability and change on range of scales to improve decision making using climatic risk management strategies in agriculture at farm, regional and national scales for enhancing resilience and sustainability. AIM
Overall aim of the project To assess and manage the impact of climate variability on the irrigated crop production systems to improve smallholder food security in a highly vulnerable semi-arid India.
Specific objectives • To document the information on climate and its predictability, water resources and water need of the irrigated crop production systems. • To assess the impact of El-Niño Southern Oscillation (ENSO) on water availability and on crop yield through system simulation approaches. • To develop a ENSO based resource allocation and cropping decision framework for the smallholder situations. • To demonstrate the benefit of seasonal climate forecasting to the smallholding farmers, extension and PWD workers of irrigated cropping systems to manage climatic risks.
Correlation between monthly SOI values and seasonal rainfall
The spatial pattern of correlation coefficient between JJA SST anomalies and (a) summer and (b) winter monsoon rainfall
Observed and hindcast station rainfall and simulated groundnut yields based on transformed, cross-validated ECHAM predictions.
Spatial variation in ground water table (depth from surface in meters)
The average monthly rainfall and potential evapotranspiration (PET) under ENSO phases
Decadal water requirement of irrigated maize (120 days duration) under various ENSO phases
Water balance components for irrigated maize (June-September) under ENSO composites
Irrigation water requirement (mm) of crops conditioned on ENSO phases
Monthly irrigation requirement of crops (banana, vegetable-1, summer maize, vegetable -2 and winter maize)
Farm level water availability scenario under various ENSO phases
Area under irrigation for various crops conditioned by ENSO phases and price scenarios
Gross margin (Rs.) from irrigated area of a 3 ha farm under ENSO phases and produce price scenarios
Are simulation models useful for smallholder farmers? • Impacts conditioned on forecasts • Management responses to seasonal climate forecasts (developing the options) • Converting climate forecasts into management options to satisfy the diverse requirements of smallholder farmers
Media for climate information • Climate workshops – “Farmer groups” • We learned to • Skip the mass media (message distortion) • Use generic methods with slight modifications for different target groups
Can farmers understand probabilistic climate forecasts? • Yes, but … • Tried to convert the probabilities in to deterministic forecasts (320 x 0.65 = 208 mm) • Tried to convert into subjective and convenient categories Good rainfall / Low rainfall • Seems to understand the probabilistic forecasts, but ignores the probability and remembers only the rainfall quantity Frequent contacts and gambling analogies
Improving the knowledge and decision capacity • Awareness is the first step for successful implementation of climate and agriculture programmes • Decision capacity of the farmers can be improved through climate education programmes at different levels
Challenges • Spatial variability in rainfall needs to be better addressed • Climate knowledge is more than just providing a forecast • Message distortion and artificial skill Farmer ‘feel’ that a forecast is “right” in neighboring village although there is no “right” or “wrong” in probabilistic forecasting We need to understand that climate greatly affect the performance of technology Many pseudo forecasters and forecasts without understanding of the physical mechanisms are emerging The information provider needs to understand possible consequences of options • How can we combine and evaluate the local indigenous knowledge with the scientific technologies? Wrong interpretation may lead to conflicts • Climate communication – Capacity building at various levels • Ownership of the climate information, options and decisions by the end users • Improving the predictability
Participatory farmer interactions We engaged with local farmer groups to understand their agricultural system and their needs We considered their practices and rules of thumb and considered those as part of our system analysis framework We developed options and discussed risks and opportunities as well as consequences of management alternatives through simulation modelling We encouraged farmers to make informed decision after understanding the risk and consequences We solicited feed back and responses from farmers and reconsidered options
How demand-driven research helps for participatory co-learnig? Focus group meetings On-farm varietal evaluation On-farm experiments on varietal response to drought New insights into system analysis Analysing the options
AWARENESS ON WATER RESOURCE MANAGEMENT • Public Works Department • Water Technology Centre • Geology Department • Ground Water Board • Local Political presidents • State Agricultural Extension • Farmers organizations • NGOs
CAPACITY BUILDING ACTIVITIES National level training workshop on“Systems Approach for Climatic Risk management in Agriculture”
Training Curriculum • system analysis and modeling • assessment of impacts of climate variability and change on agricultural systems • climate forecasting methods • use of climate forecasts in farm decision making • linking climate and bio-physical models to explore management options and outcomes • management of risks in agriculture associated with drought, floods and cyclones. • application of remote sensing in climate risk management