Montenegrin FADN FAO project Szilárd Keszthelyi, PhD.

Slides:



Advertisements
Similar presentations
RELATIONSHIP BETWEEN THE MANAGING AUTHORITIES AND THE PAYING AGENCIES IN THE MANAGEMENT OF RURAL DEVELOPMENT PROGRAMMES Felix Lozano, Head of.
Advertisements

The Role of Data analysis for M& E in the context of ABRDP By: Faye Ensermu Chemeda Data Analysis Expert Ethio-Italian Development Co-operation Asella.
The European Railway Agency in development
Trade Facilitation Self-Assessment: Guide and Process WTO Negotiations on Trade Facilitation.
Understanding Territorial Impacts: Tool for Territorial Impact Assessment Bernd Schuh (ÖIR) Karkow, Nov
The ‘INCA KIP’: Knowledge Innovation Project for an Integrated system for Natural Capital and ecosystem services Accounting UNCEEA June 2015 Anton.
SEILA Program and the Role of Commune Database Information System (CDIS) Poverty and Economic Policy (PEP) Research Network Meeting June 2004, Dakar,
Marina Signore Head of Service “Audit for Quality Istat Assessing Quality through Auditing and Self-Assessment Signore M., Carbini R., D’Orazio M., Brancato.
Peter HinrichsEconomic Questions and Data Needs1 ELPEN. European Livestock Policy Evaluation Network.
Global Strategy: Implementation Plan for Africa Meeting on Country Needs Assessment Addis Ababa, Ethiopia August 2012 Background to Country Assessment.
EUROMONTANA Presentation and potential contributions E-tourism pre-consortium meeting, Turin 1 March 2011.
The New Role and New Mission of Cooperative Auditing Department in Thailand. Assist. Prof. Dr. Ratana Pothisuwan Assoc. Prof. Dr. Prasert Janyasupab Department.
GLOBAL ASSESSMENT OF STATISTICAL SYSTEM OF KAZAKHSTAN ZHASLAN OMAROV DEPUTY CHAIRMAN, STATISTICS AGENCY OF REPUBLIC OF KAZAKHSTAN. 4.3.
BUILDING THE FOUNDATIONS FOR A STATE M&E SYSTEM Information for M&E in the State of Yucatán 1.
WP8 – Innovation Support Kelly Vavasi General Secretariat for Research and Technology (GSRT) 1 st Innovation Dialogue Forum Becici, 8-9 November 2010.
EVALUATION OF HRD PROGRAMS Jayendra Rimal. The Purpose of HRD Evaluation HRD Evaluation – the systematic collection of descriptive and judgmental information.
Science, research and development European Commission DG RTD A-2/Peter Härtwich 09/2001 Associated candidate countries in the 5th Framework Programme Associated.
Teagasc: National Farm Survey An Overview Agricultural Statistics Liaison Group (ASLG) Date: Wednesday October 12th, 2011 Time: 1.30pm Venue: Department.
Task NumberHarmonise, develop & implement capacity building Performance Indicators CB-07-01c Harmonise efforts by Tasks, in particular those related with.
Implementation of the European Statistics Code of Practice Yalta September 2009 Pieter Everaers, Eurostat.
FOOD AND AGRICULTURE ORGANIZATION OF THE UNITED NATIONS Collecting and Compiling Food and Agricultural Prices in Latin America and the Caribbean: Current.
Ⓒ Olof S. Communication on the future of the CAP “The CAP towards 2020: meeting the food, natural resources and territorial challenges of the future” DG.
Nataliya Skachek, Scientific and Technical Complex of Statistical Research, Ukraine EU Farm Accountancy Data Network (EU FADN) and Ukraine.
Needs on input use Guido Castellano, DG AGRI L2, Economic Analysis of EU Agriculture FSS working party meeting February 2010, Luxembourg.
1Your reference The Menu of Indicators and the Core Set from the South African Point of View Moses Mnyaka 13/08/2009.
2nd Joint Workshop on Pesticide Indicators Pesticide Usage Survey on Wheat in Hungary Zsuzsanna Szabó Hungarian Central Statistical Office September.
5 Project funded by the Euro- Mediterranean Regional Programme for Local Water Management of the European Union DEVELOPMENT OF TOOLS AND GUIDELINES FOR.
M O N T E N E G R O Negotiating Team for the Accession of Montenegro to the European Union Working Group for Chapter 11 – Agriculture and Rural Development.
REPUBLIC OF BULGARIA MINISTRY OF FINANCE CURRENT CHALLENGES IN BUDGET REFORM SOFIAMR. LYUBOMIR DATZOV 03 DECEMBER 2004DEPUTY MINISTER
Incentives and monitoring the AKIS in Hungary Andrew Fieldsend Research Institute of Agricultural Economics, Budapest
Evaluation Experts Meeting, DG AGRI L4, Brüssel, The Monitoring- and Evaluation System of the Austrian RDP Karl M. Ortner (AWI) Otto.
1 INCENTIVES AND MONITORING THE AKIS IN FLANDERS Anne Vuylsteke.
Moving away from the fish-eye view Integrating Surveys for the Ecosystem Approach 29 May 2013, Ingeborg de Boois (WGISUR)
Planning, preparation and conducting TQS in Tajikistan Agency on statistics under the President of Tajikistan.
An Evaluation of AgroForestry Farms in Limpopo Province, South Africa
Monitoring and Evaluating Rural Advisory Services
INSPIRE and the role of Spatial Data Interest Communities (SDIC)
Proposed Outline of Volume 2
How to improve FADN efficiency in the field of economic analysis
TRANSPORT SCIENCE: INNOVATIVE BUSINESS SOLUTIONS
TAIEX Workshop: Improving data collection and the Use of the Farm Accountancy Data Network (FADN) Communication in process of data collection and data.
Monitoring and Evaluation Systems for NARS Organisations in Papua New Guinea Day 3. Session 9. Periodic data collection methods.
Priorities and coordination of capacity building in Azerbaijan
University of agribusiness and rural development
Quality assurance in official statistics
Implementation of the Sustainable Development Goals (SDG) in the Republic of Uzbekistan Geneva, April 12, 2017.
Implementing the ESS Vision 2020
The "snapshot tool": an assessment of strengths and weaknesses of the National Statistical System of developing countries XV meeting of the Management.
LIVESTOCK PRODUCTION AND PRODUCTIVITY
EU Reference Centres for Animal Welfare
A GLANCE AT THE POLISH FADN
ESF Evaluations by MS Antonella Schulte-Braucks
Preparatory Action 2011 European Voluntary Humanitarian Aid Corps Call for proposal
IPA 2008 FF RAC FADN project (TWL) Zagreb, July 2012
Policy developments and the use of statistical data
Introduction to the training
European Commission - Directorate General for Agriculture - A2
Albania 2021 Population and Housing Census - Plans
Draft Methodology for impact analysis of ESS.VIP Projects
New EU Data Collection Multi-Annual Programme (EU DC-MAP)
Objectives, Scope and Structure of Country Reports
LIFE and the implementation of the Water Framework Directive
Policy needs for rural development statistics and data analysis
European Commission, DG Environment Air & Industrial Emissions Unit
The CAP post-2013: statistical needs in the field of rural development
Transformation of the National Statistical System: Experience
AEI where DG AGRI is in the lead
National level Objective:
Presentation transcript:

Montenegrin FADN FAO project Szilárd Keszthelyi, PhD

What is the FADN? – Farm Accountacy Data Network Informs about the economic situation of the farmers; Most data are based on accountancy records; Data are confidential; Voluntary participation; 5 million observed farms in the EU; sample farms; Variables described in a specific questionnaire (Farm return);

Utilisation of FADN data Agricultural policy (EU and national); Economic research; Extension services; Input of other statistics; Timeliness Ex-Post Ex-Ante

FADN on EU level In-depth monitoring of farm income Impact assessments Policy evaluations Assessments of potential effects of changed market conditions Budget planning Modelling: from ex-post analyses (feeding evaluations) to ex-ante analyses (feeding impact assessments) Ad-hoc requests (e.g., in crisis situations) Research projects Source: based on DG Agri

Role of FADN in evaluations 61 out of the 89 evaluations carried out by DG AGRI since the year 2000 were dependent on information from FADN. Source: Yves Plees, DG AGRI Evaluation and Studies unit

FADN at a glance Strengths Unique source of harmonised farm data level economic data representing 90% of EU farming Established methodology, long time series, strong network Intensive use of data for policy purposes Weaknesses Limited sample size Voluntary participation of farmers (possible selection bias) Delay of data availability Opportunities Structural change in agriculture fewer, bigger farms (more likely to keep accounts) Technological innovations potential for better integration of different data sources Further developments in variables and indicators (e.g., FLINT) Threats Declining willingness of farmers to participate Budget cuts at EU and MS level Greater policy focus on non income related factors Source: Gesa Wesseler, DG AGRI E.3,

Montenegrin project (TCP/MNE/3501) Start over Limited sources (70 days) - need for results Less development - more adaptation

Setting up the Institutional framework of FADN Proposal for Liaison Agency Setting up national FADN Management Committee Proposal for FADN legislation Vocational training of FADN experts

Implementing the data collection and processing framework Develop a data entry form in Excel sheet with manual. Training the data collectors Farm selection plan for 30 farms Typology software Identify farms for the FADN pilot project Running the first data collection. Development an IT infrastructure for data quality checks Training on RICA-1 checks

Output of the project Trained FADN staff Data collection forms with instruction FADN data for 30 farms organised in an FADN database Preliminary open source FADN software with specification

Thank you for your attention!