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Technology Impact Assessment John M. Antle Professor of Ag Econ & Econ Montana State University Roberto Valdivia Research Associate in Ag Econ & Econ Montana.

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Presentation on theme: "Technology Impact Assessment John M. Antle Professor of Ag Econ & Econ Montana State University Roberto Valdivia Research Associate in Ag Econ & Econ Montana."— Presentation transcript:

1 Technology Impact Assessment John M. Antle Professor of Ag Econ & Econ Montana State University Roberto Valdivia Research Associate in Ag Econ & Econ Montana State University AquaFish CRSP Workshop on Investigation Discovery and Impact Assessment, San Diego, March 1, 2010

2 Objectives Motivation Impact Assessment challenges The Minimum Data approach to IA Towards AquaFish CRSP Implementation

3 Motivation The goal of the AquaFish CRSP is “…to develop more comprehensive, sustainable, ecological and socially compatible, and economically viable aquaculture systems and innovative fisheries management systems in developing countries that contribute to poverty alleviation and food security.”

4 The Assessment Challenge How to demonstrate that these goals have been met? – H. Egna: “…we are more about reducing poverty than about fish.” – How can Aquafish projects demonstrate their technologies are likely to reduce poverty and enhance sustainability of aquaculture systems? DTAP: does income generation → poverty reduction? Need to quantify actual or potential impacts on populations of farm households using the improved systems made possible by the AquaFish CRSP Need to do this – with scientific credibility – in short amount of time at feasible cost – with sufficient accuracy to support informed decision making

5 Approaches to Impact Assessment Observe actual impacts (ex post) – Pros: the real thing (?) – Cons Attribution problem Lags in diffusion & adoption Aggregate studies can’t measure many impacts Data requirements, cost Estimate (simulate) actual and potential impacts (ex ante?) – Pros Solves attribution problem: simulations as “controlled experiments” Can be applied to many populations Can assess technologies actually in use or in development Can link to “ex post” adoption & impact data – Cons Data & modeling: complex, spatially-explicit models Ignoring key constraints to adoption could over-state impacts – E.g., capital cost of ponds

6 Towards parsimonious impact assessment Minimum-data (MD) approach TOA-MD developed for analysis of ecosystem services – Soil-Management CRSP Tradeoff Analysis Project – feasible with minimal population-level data – standardized model can be adapted to most systems – software in Excel, easy to learn & use TOA-MD extended to assess economic, environmental and social outcomes associated with technology adoption – Validated with case studies in USA, Kenya, Senegal MD analysis produced results within 10% of “full data” model, led to similar policy implications

7 Implementation of TOA-MD Identify Base System and Alternative System, e.g., – Base system = current management practice for tilapia production Alternative system = improved management to reduce production cost and nutrient loadings into water Identify key indicators, e.g., – Mean Farm income, poverty (% pop. below poverty line) – Water quality: % of effluent water exceeding WQ threshold – Food security: average caloric intake; % households below nutritional threshold Gender impact assessment, e.g., – Differentiate impacts by gender of household head – Impact on incomes of women

8 MD Data requirements (by system) – Economic: Yields, yield variability in population Correlations among yields in the system Prices, Costs of production – Environmental: Mean, variance of water quality by system Correlation with returns – Social: Mean, variance of calorie intake, nutrient deficiency in children Correlation with returns

9 MD Software : www.tradeoffs.oregonstate.edu

10 Logical structure of TOA-MD: Adoption analysis                        Farm population w/base tech & base indicators (poverty, sustainability)                        Sub-populations: non-adopters (base tech & indicators) adopters (improved tech, indicators)   Result: r% adopters, (1-r)% non-adopters Adoption

11 Logical structure of TOA-MD: Impact analysis Base system income distribution (Poverty = 65%) Improved system income distribution (Poverty = 25%) Mixed income distribution (Poverty = 45% ) 1-r% non-adopters r% adopters

12 Logical structure of TOA-MD analysis

13 Water quality Poverty    100% Base system 60 % adoption of alternative system with no incentive payment or penalty 100% adoption of alternative system with pollution penalty Hypothetical TOA-MD analysis: adoption of improved nutrient management system

14 Market-level analysis Link population to market analysis MD analysis = population impacts, holding prices constant – Run scenarios with alternative price assumptions Market analysis – Aggregate output changes to market level – Obtain market demand, supply elasticities – Solve for market equilibrium price changes – Re-run MD analysis at new prices Farm population indicators Q P demand supply Market equilibrium

15 Toward AquaFish CRSP Implementation Goal: work with projects to support technology IA Afternoon session of this workshop: – Existing IA plans & activities – Identify technologies and indicators – Impact Assessment Leader for each investigation Workshop on RD & IA Data collection, preliminary analysis Support from IA team Follow-up meeting/workshop Report results


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