Retrospective Assessment of Greenhouse Gas Emissions from the Beef Sector in Greece and Potential Mitigation Scenarios
Abstract
:1. Introduction
2. Materials and Methods
2.1. Area of Study
2.2. Animal Numbers
2.3. GHG Emissions Estimation Using Tier Methodologies
2.3.1. Methane (CH4) Emissions
Tier 1 Approach
- CH4 Emissions = emissions derived from enteric fermentation (Gg CH4);
- EF = defined country emission factor for the livestock population (kg CH4·head−1·yr−1);
- N = the number of heads of livestock population.
- CH4 Emissions = emissions derived from manure management (kg·CH4);
- N = the number of heads of livestock population;
- VS = the annual average Volatile Solid excretion per head of species (kg VS·animal−1·yr−1);
- AWMS = the fraction of total annual VS for livestock specie that is managed in a manure management system (dimensionless);
- EF = emission factor for direct CH4 emissions from manure management system by animal species (g CH4·kg·VS−1).
- VSrate = default VS excretion rate for the productivity system (kg VS·(1000 kg animal mass)−1·day−1);
- TAM = typical animal mass for livestock species (kg·animal−1).
Tier 2 Approach
- EF = emission factor (kg CH4·head−1·yr−1);
- GE = gross energy intake (MJ·head−1·day−1);
- Ym = methane conversion factor, percent of gross energy in feed converted to methane.
- The factor 55.65 (MJ/kg CH4) is the energy content of methane.
- GE = gross energy (MJ·day−1);
- NEm = net energy required by the animal for maintenance (MJ·day−1);
- NEa = net energy for animal activity (MJ·day−1);
- NEl = net energy for lactation (MJ·day−1);
- NEp = net energy required for pregnancy (MJ·day−1);
- REM = ratio of net energy available in a diet to maintenance of digestible energy;
- NEg = net energy needed for growth (MJ day−1);
- REG = ratio of net energy available for growth in a diet to digestible energy consumed;
- DE = digestibility of feed expressed as a fraction of gross energy.
- EF = annual CH4 emission factor for livestock population (kg CH4·animal−1·yr−1);
- VS = daily volatile solid excreted for livestock population (kg dry matter·animal−1·day−1);
- 365 = basis for calculating annual VS production (days·yr−1);
- B0 = maximum methane-producing capacity for manure produced by livestock population (m3 CH4·kg−1 of VS excreted);
- MCF = methane conversion factors for each manure management system in the climate region (percent);
- AWMS = the fraction of total annual VS for livestock species that is managed in a manure management system (dimensionless).
- VS = volatile solid excretion per day on a dry-organic matter basis (kg VS·day−1);
- GE = gross energy intake (MJ·day−1);
- DE = digestibility of the feed in percent;
- (UE × GE) = urinary energy expressed as a fraction of GE;
- ASH = the ash content of feed calculated as a fraction of the dry matter feed intake;
- 18.45 = the conversion factor for dietary GE per kg of dry matter (MJ·kg−1).
2.3.2. Estimations of Nitrous Oxide (N2O) Emissions from Manure Management
Direct Estimations (Tier 1 and 2 Methodology)
- N = the number of head of livestock species;
- Nex = the annual average N excretion per head of species (kg N·animal−1·yr−1);
- AWMS = the fraction of total annual nitrogen excretion for the livestock species that is managed in a manure management system (dimensionless);
- EF3 = the emission factor for direct N2O emissions from manure management system (kg N2O-N/kg N);
- 44/28 = factor for the conversion of N2O-N (mm) emissions to N2O (mm) emissions.
- Nrate = default N excretion rate (kg N·(1000 kg animal mass)−1·day−1);
- TAM = typical animal mass for livestock species (kg·animal−1).
- Nintake = the daily N intake per head of animal of species (kg N·animal−1·day−1);
- Nretention_frac = fraction of daily N intake that is retained by an animal of species (dimensionless);
- 365 = number of days in a year.
Indirect Estimations (Tier 1 and 2 Methodology)
- N2O = indirect N2O emissions due to volatilization of N from manure management (kg N2O·yr−1);
- EF4 = emission factor for N2O emissions from atmospheric deposition of nitrogen on soils and water surfaces (kg N2O-N·(kg NH3-N + NOx-Nvolatilised)−1);
- Nvolatilization MMS = the amount of manure nitrogen that is lost due to volatilization of NH3 and NOx, (kg N·yr−1);
- 44/28 = factor for the conversion of N2O-N (mm) emissions to N2O (mm) emissions.
- N = number of head of livestock species;
- Nex = annual average N excretion per head of species as estimated for Tier 1 or Tier 2 methodology (kg N·animal−1·yr−1);
- AWMS = fraction of total annual nitrogen excretion for each livestock species that is managed in manure management (dimensionless);
- FracGasMS = fraction of managed manure nitrogen that volatilizes as NH3 and NOx in the manure management system.
- N2O = indirect N2O emissions due to leaching and runoff from manure management (kg N2O·yr−1);
- EF5 = emission factor for N2O emissions from nitrogen leaching and runoff, leached and runoff (kg N2O-N/kg N);
- Nleaching MMS = amount of manure nitrogen that is lost due to leaching (kg·N·yr−1);
- 44/28 = factor for the conversion of N2O-N (mm) emissions to N2O (mm) emissions.
- NleachingMMS = amount of manure nitrogen that is lost due to leaching (kg N·yr−1);
- N = number of head of livestock species;
- Nex = annual average N excretion per head of species (kg N·animal−1·yr−1);
- AWMS = fraction of total annual nitrogen excretion for livestock species (dimensionless);
- FracLeachMS = fraction of managed manure nitrogen for livestock animal category that is leached from the manure management system.
2.4. Explored Mitigation Scenarios
2.5. Data Formatting, Analysis, and Calculations
3. Results
4. Discussion
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
- Food and Agriculture Organization of the United Nations FAO. More Fuel for the Food/Feed Debate; FAO: Rome, Italy, 2022; Available online: https://www.fao.org/3/cc3134en/cc3134en.pdf (accessed on 2 May 2023).
- Gerber, P.J.; Steinfeld, H.; Henderson, B.; Mottet, A.; Opio, C.; Dijkman, J.; Falcucci, A.; Tempio, G. Tackling Climate Change through Livestock—A Global Assessment of Emissions and Mitigation Opportunities; Food and Agriculture Organization of the United Nations (FAO): Rome, Italy, 2013; ISBN 978-92-5-107920-1. [Google Scholar]
- Rojas-Downing, M.M.; Nejadhashemi, A.P.; Harrigan, T.; Woznicki, S.A. Climate change and livestock: Impacts, adaptation, and mitigation. Clim. Risk Manag. 2017, 16, 145–163. [Google Scholar] [CrossRef]
- United Nations, Department of Economic and Social Affairs, Population Division. World Population Prospects 2019: Highlights (ST/ESA/SER.A/423); United Nations: New York, NY, USA, 2019. [Google Scholar]
- OECD. Making Better Policies for Food Systems; OECD Publishing: Paris, France, 2021. [Google Scholar] [CrossRef]
- Clune, S.; Crossin, E.; Verghese, K. Systematic review of greenhouse gas emissions for different fresh food categories. J. Clean. Prod. 2017, 140, 766–783. [Google Scholar] [CrossRef] [Green Version]
- Poore, J.; Nemecek, T. Reducing food’s environmental impacts through producers and consumers. Science 2018, 360, 987. [Google Scholar] [CrossRef] [PubMed] [Green Version]
- Searchinger, T.; Waite, R.; Hanson, C.; Ranganathan, J.; Dumas, P.; Matthews, E. Creating a Sustainable Food Future: A Menu of Solutions to Feed Nearly 10 Billion People by 2050; World Resources Institute: Washington, DC, USA, 2019; ISBN 978-1-56973-963-1. [Google Scholar]
- Bustamante, M.M.C.; Nobre, C.A.; Smeraldi, R.; Aguiar, A.P.D.; Barioni, L.G.; Ferreira, L.G.; Longo, K.; May, P.; Pinto, A.S.; Ometto, J.P.H.B. Estimating greenhouse gas emissions from cattle raising in Brazil. Clim. Change 2012, 115, 559–577. [Google Scholar] [CrossRef]
- Cederberg, C.; Persson, U.M.; Neovius, K.; Molander, S.; Clift, R. Including carbon emissions from deforestation in the carbon footprint of Brazilian beef. Environ. Sci. Technol. 2011, 45, 1773–1779. [Google Scholar] [CrossRef] [PubMed]
- FAOSTAT. Food and Agricultural Organization of the United Nations. Available online: https://www.fao.org/faostat/en (accessed on 3 May 2023).
- General Secretariat of Research and Technology. Agri-Food Platform Description of ETAK Strategic Actions in Animal Production for the Years 2016–2017. Available online: http://www.gsrt.gr/Financing/Files/ProPeFiles161/%CE%96%CF%89%CE%B9%CE%BA%CE%AE%20%CF%80%CE%B1%CF%81%CE%B1%CE%B3%CF%89%CE%B3%CE%AE.pdf (accessed on 30 April 2023).
- Zervas, G. Quantifying and optimizing grazing regimes in Greek mountain systems. J. Appl. Ecol. 1998, 35, 983–986. [Google Scholar] [CrossRef]
- Nikolaou, K.; Koutsouli, P.; Bizelis, I. Evaluation of Greek Cattle Carcass Characteristics (Carcass Weight and Age of Slaughter) Based on SEUROP Classification System. Foods 2020, 9, 1764. [Google Scholar] [CrossRef]
- Masouras, P.K.; Nikolaou, K.; Laliotis, G.P.; Koutsouli, P.; Bizelis, I. Relationship between meat quality characteristics, intramuscular fat and marbling in Greek cattle carcasses. Adv. Anim. Vet. Sci. 2022, 10, 506–513. [Google Scholar] [CrossRef]
- Cusack, D.F.; Kazanski, C.E.; Hedgpeth, A.; Chow, K.; Cordeiro, A.L.; Karpman, J.; Ryals, R. Reducing climate impacts of beef production: A synthesis of life cycle assessments across management systems and global regions. Glob. Change Biol. 2021, 27, 1721–1736. [Google Scholar] [CrossRef]
- IPCC. Guidelines for National Greenhouse Gas Inventories: Agriculture, Forestry and Other Land Use; Eggleston, H.S., Buendia, L., Miwa, K., Ngara, T., Tanabe, K., Eds.; IGES: Hayama, Japan, 2006; ISBN 4-88788-032-4. [Google Scholar]
- IPCC. Refinement to the 2006 IPCC Guidelines for National Greenhouse Gas Inventories: Agriculture, Forestry and Other Land Use; Eggleston, H.S., Buendia, L., Miwa, K., Ngara, T., Tanabe, K., Eds.; IGES: Hayama, Japan, 2019; ISBN 978-4-88788-032-4. [Google Scholar]
- Greek Payment Authority of Common Agricultural Policy (C.A.P.) Aid Schemes (OPEKEPE). Available online: https://www.opekepe.gr/en/ (accessed on 18 March 2023).
- FAO. Global Livestock Environmental Assessment Model, Version 2.0. In Model Description; Food and Agriculture Organization of the United Nations: Rome, Italy, 2018. [Google Scholar]
- IBM Corp. IBM SPSS Statistics for Windows, Version 26.0; IBM Corp.: Armonk, NY, USA, 2019. [Google Scholar]
- Alexandratos, N.; Bruinsma, J. World Agriculture towards 2030/2050: The 2012 Revision. In ESA Working Paper 2012, No. 12-03; FAO: Rome, Italy, 2012. [Google Scholar]
- Wilkes, A.; Reisinger, A.; Wollenberg, E.; Van Dijk, S. Measurement. Reporting and Verification of Livestock GHG Emissions by Developing Countries in the UNFCCC: Current Practices and Opportunities for Improvement. In CCAFS Report No. 17, CGIAR Research Program on Climate Change; Agriculture and Food Security (CCAFS) and Global Research Alliance for Agricultural Greenhouse Gases (GRA): Wageningen, The Netherlands, 2017. [Google Scholar]
- Moore, D.S.; Notz, W.I.; Flinger, M.A. The Basic Practice of Statistics, 6th ed.; W.H. Freeman and Company: New York, NY, USA, 2013; p. 138. [Google Scholar]
- Atzori, A.S.; Lunesu, M.F.; Correddu, F.; Sau, P.; Cannas, A. Carbon footprint of dairy sheep and goat farms in Mediterranean areas. In Proceedings of the 8th IDF International Symposium on Sheep, Goat and Other Non-Cow Milk, Virtual, 4–6 June 2020. [Google Scholar]
- Atzori, A.S.; Lunesu, M.F.; Sau, P.; Pill, D.; Pacchioli, M.T.; Cannas, A. Carbonsheep: AGIS tool based on simplified Life Cycle Assesment to benchmark and spatialize the carbon footprint of sheep farms. In Proceedings of the 72nd Annual Meeting of the European Federation of Animal Science, Davos, Switzerland, 30 August–3 September 2021. [Google Scholar]
- Andretta, I.; Hickmann, F.M.W.; Remus, A.; Franceschi, C.H.; Mariani, A.B.; Orso, C.; Kipper, M.; Létourneau-Montminy, M.-P.; Pomar, C. Environmental Impacts of Pig and Poultry Production: Insights From a Systematic Review. Front. Vet. Sci. 2021, 8, 750733. [Google Scholar] [CrossRef]
- Akamati, K.; Laliotis, G.P.; Bizelis, I. Comparative Assessment of Greenhouse Gas Emissions in Pig Farming Using Tier Inventories. Environments 2022, 9, 59. [Google Scholar] [CrossRef]
- Johnson, D.E.; Phetteplace, H.W.; Seidl, A.F.; Schneider, U.A.; McCarl, B.A. Management variations for US beef production systems: Effects on greenhouse gas emissions and profitability. In Proceedings of the 3rd International Methane and Nitrous Oxide Mitigation Conference, Beijing, China, 17–21 November 2003; Coal Information Institute: Beijing, China; pp. 953–961. [Google Scholar]
- Casey, J.W.; Holden, N.M. Analysis of greenhouse gas emissions from the average Irish milk production system. Agric. Syst. 2005, 86, 97–114. [Google Scholar] [CrossRef]
- Ogino, A.; Orito, H.; Shimada, K.; Hirooka, H. Evaluating environmental impacts of the Japanese beef cow–calf system by the life cycle assessment method. Anim. Sci. J. 2007, 78, 424–432. [Google Scholar] [CrossRef]
- Vergé, X.P.C.; Dyer, J.A.; Desjardins, R.L.; Worth, D. Greenhouse gas emissions from the Canadian beef industry. Agr. Syst. 2008, 98, 126–134. [Google Scholar] [CrossRef]
- Beauchemin, K.A.; Janzen, H.H.; Little, S.M.; McAllister, T.A.; McGinn, S.M. Life cycle assessment of greenhouse gas emissions from beef production in western Canada: A case study. Agric. Syst. 2010, 103, 371–379. [Google Scholar] [CrossRef]
- Nguyen, T.L.T.; Hermansen, J.E.; Mogensen, L. Environmental consequences of different beef production systems in the EU. J. Clean. Prod. 2010, 18, 756–766. [Google Scholar] [CrossRef]
- DAD-IS. Domestic Animal Diversity Information System. Available online: https://www.fao.org/dad-is/en/ (accessed on 12 July 2023).
- Casey, J.W.; Holden, N.M. Quantification of GHG emissions from sucker-beef production in Ireland. Agricultural Systems 2006, 90, 79–98. [Google Scholar] [CrossRef]
- Lynch, J.; Pierrehumbert, R. Climate Impacts of Cultured Meat and Beef Cattle. Front. Sustain. Food Syst. 2019, 3, 2019. [Google Scholar] [CrossRef] [PubMed] [Green Version]
- Sonesson, U.; Cederberg, C.; Berglund, M. Greenhouse Gas Emissions in Beef Production. Decision Support for Climate Certification. Klimatmarkning for Mat. Report 2009:4. Available online: https://www.klimatmarkningen.se/wp-content/uploads/2009/12/2009-4-beef.pdf (accessed on 15 May 2023).
- Casey, J.W.; Holden, N.M. GHG emissions from conventional, agri-environmental and organic Irish suckler beef units. J. Environ. Qual. 2006, 35, 231–239. [Google Scholar] [CrossRef]
- Gao, Z.; Zhi, L.; Yang, Y.; Ma, W.; Liao, W.; Li, J.; Roelcke, M. Greenhouse gas emissions from the enteric fermentation and manure storage of dairy and beef cattle in China during 1961–2010. Environ. Res. 2014, 135, 111–119. [Google Scholar] [CrossRef]
- EPA 2022. Inventory of U.S. Greenhouse Gas Emissions and Sinks: 1990–2020. U.S. Environmental Protection Agency, EPA 430-R-22-003. Available online: https://www.epa.gov/ghgemissions/draft-inventory-us-greenhouse-gas-emissions-and-sinks-1990-2020 (accessed on 21 May 2023).
- Grossi, G.; Goglio, P.; Vitali, A.; Williams, A.G. Livestock and climate change: Impact of livestock on climate and mitigation strategies. Anim. Front. 2019, 9, 69–76. [Google Scholar] [CrossRef] [PubMed] [Green Version]
- Eugène, M.; Sauvant, D.; Nozière, P.; Viallard, D.; Oueslati, K.; Lherm, M.; Mathias, E.; Doreau, M. A new Tier 3 method to calculate methane emission inventory for ruminants. J. Environ. Manag. 2019, 231, 982–988. [Google Scholar] [CrossRef] [PubMed]
Parameter | Methodology | Value | Equation |
---|---|---|---|
EFCH4-enteric | Tier 1 | 52 kg CH4·head−1·yr−1 | (1) |
AWMS | Tier 1/2 | 26% (solid storage); 48% pasture/range | (2)/(5)/(7)/(11)/(13) |
EFCH4-manure | Tier 1 | 4.8 g CH4·kg VS−1 | (2) |
VSrate | Tier 1 | 5.7 (kg VS·(1000 kg animal mass)−1·day−1) | (3) |
TAM | Tier 1/2 | 405 kg·animal−1 | (3)/(8) |
Ym | Tier 2 | 6.3 (dimensionless; for the intensive system) 7.0 (dimensionless; for the (semi-)extensive system) | (4) |
Bo | Tier 2 | 0.18 m3 CH4·kg−1 of VS excreted | (5) |
MCF | Tier 2 | 4% (solid storage) or 0.47% (pasture/range) | (5) |
DE | Tier 2 | Intensive: 66.5%; semi-extensive: 62% | (6) |
UE | Tier 2 | 0.04 × E | (6) |
ASH | Tier 2 | 0.08 | (6) |
EF3 | Tier 1 | 0.01 kg N2O-N/kg N | (7) |
Nrate | Tier 1 | 0.42 kg N·(1000 kg animal mass)−1·day−1 | (8) |
Nretention_frac | Tier 2 | Mature females (pasture): 0.08; mature males (pasture): 0; replacement/growing (pasture) = 0.04; calves on milk (stall): 0.10; other: 0.11 (dimensionless) | (9) |
CP% | Tier2 | Mature animals (pasture): 14.7%; replacing/growing (pasture): 16.5%; calves on milk (stall): 17.1%; other: 16.1% | (10) |
EF4 | Tier 1/2 | 0.01 kg N2O-N/kg N | (11) |
FracGasMS | Tier 1/2 | 0.45 (dimensionless) | (12) |
EF5 | Tier 1/2 | 0.011 kg N2O-N/kg N | (13) |
FracLeachMS | Tier 1/2 | 0.02 (dimensionless) | (14) |
Year | CH4 Enteric Fermentation | CH4 Manure Management | Direct N2O Manure Management | Indirect N2O Manure Management |
---|---|---|---|---|
Kg CH4/Year | Kg N/Year | |||
2011 | 18,079,815.2 (451.99 Gg CO2-eq) | 365,618.3 (9.14 Gg CO2-eq) | 88,197.4 (26.28 Gg CO2-eq) | 41,629.2 (12.40 Gg CO2-eq) |
2012 | 16,204,212.8 (405.10 Gg CO2-eq) | 327,689.04 (8.19 Gg CO2-eq) | 79,047.8 (23.55 Gg CO2-eq) | 37,310.55 (11.11 Gg CO2-eq) |
2013 | 18,520,002.8 (463 Gg CO2-eq) | 374,520.0 (9.63 Gg CO2-eq) | 90,344.7 (29.92 Gg CO2-eq) | 40,805.4 (12.16 Gg CO2-eq) |
2014 | 19,483,424.4 (487.09 Gg CO2-eq) | 394,002.8 (9.85 x Gg CO2-eq) | 95,044.5 (28.32 Gg CO2-eq) | 42,929.9 (12.79 Gg CO2-eq) |
2015 | 20,631,421.1 (515.79 × 106 Gg CO2-eq) | 417,218.1 (10.43 × 106 Gg CO2-eq) | 100,644.7 (29.99 × 106 Gg CO2-eq) | 45,477.9 (13.55 Gg CO2-eq) |
2016 | 21,820,497.8 (545.51 Gg CO2-eq) | 441,264.1 (11.03 Gg CO2-eq) | 106,445.3 (31.72 Gg CO2-eq) | 48,101.8 (14.33 Gg CO2-eq) |
2017 | 21,401,827.3 (535.04 Gg CO2-eq) | 432,797.6 (10.81 Gg CO2-eq) | 104,402.9 (31.11 Gg CO2-eq) | 49,278.2 (14.68 Gg CO2-eq) |
2018 | 21,402,604.7 (535.07 Gg CO2-eq) | 432,813.3 (10.82 Gg CO2-eq) | 104,406.7 (31.11 Gg CO2-eq) | 47,144.4 (14.05 Gg CO2-eq) |
2019 | 21,121,435.2 (528.04 × 106 Gg CO2-eq) | 427,127.4 (10.68 × 106 Gg CO2-eq) | 103,035.1 (30.70 × 106 Gg CO2-eq) | 46,541.7 (13.87 × 106 Gg CO2-eq) |
2020 | 23,895,637.5 (597.39 Gg CO2-eq) | 483,228.6 (12.08 Gg CO2-eq) | 116,568.3 (34.74 Gg CO2-eq) | 52,649.4 (15.69 Gg CO2-eq) |
2021 | 26,050,751.9 (651.27 Gg CO2-eq) | 526,810.3 (13.17 Gg CO2-eq) | 127,081.4 (37.87 Gg CO2-eq) | 57,406.3 (17.11 Gg CO2-eq) |
Year | Total GHG Emissions (Gg CO2-eq) | Total GHG Emissions Change between Years | Tier 2 vs. Tier 1 (Difference in Each Year) | CH4 Emissions (Gg CO2-eq) | NO2 Emissions (Gg CO2-eq) |
---|---|---|---|---|---|
2011 | 460.5 | - | −7.9% | 450.8 | 9.7 |
2012 | 394.5 | −14.3% | −11.9% | 386.1 | 8.4 |
2013 | 480.5 | 21.8% | −6.2% | 470.4 | 10.1 |
2014 | 508.1 | 5.7% | −5.7% | 497.5 | 10.6 |
2015 | 536.7 | 5.6% | −5.9% | 525.5 | 11.2 |
2016 | 567.2 | 5.7% | −6.0% | 555.3 | 11.9 |
2017 | 550.6 | −2.9% | −6.9% | 539.0 | 11.6 |
2018 | 545.5 | −0.9% | −7.8% | 534.0 | 11.5 |
2019 | 532.0 | −2.5% | −8.9% | 520.8 | 11.2 |
2020 | 605.6 | 13.8% | −8.3% | 592.8 | 12.8 |
2021 | 658.6 | 8.8% | −8.6% | 644.7 | 13.9 |
Average | 530.9 | - | - | 519.7 | 11.2 |
Scenario | Total GHG Emissions (Tier 2; Gg CO2-eq) | Difference |
---|---|---|
Baseline (year: 2021) | 658.6 | --- |
S_I (an increase of 25% in fattening animals) | 668.1 | 1.4% |
S_II (total population: 60% intensively/40% semi-extensively) | 606.0 | −7.9% |
S_III (total population: 10% intensively/90% semi-extensively) | 693.7 | 5.3% |
S_IV (change in fattening period: two-month increase) | 690.3 | 4.8% |
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content. |
© 2023 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
Share and Cite
Azoukis, S.; Akamati, K.; Bizelis, I.; Laliotis, G.P. Retrospective Assessment of Greenhouse Gas Emissions from the Beef Sector in Greece and Potential Mitigation Scenarios. Environments 2023, 10, 144. https://doi.org/10.3390/environments10080144
Azoukis S, Akamati K, Bizelis I, Laliotis GP. Retrospective Assessment of Greenhouse Gas Emissions from the Beef Sector in Greece and Potential Mitigation Scenarios. Environments. 2023; 10(8):144. https://doi.org/10.3390/environments10080144
Chicago/Turabian StyleAzoukis, Stephanos, Konstantina Akamati, Iosif Bizelis, and George P. Laliotis. 2023. "Retrospective Assessment of Greenhouse Gas Emissions from the Beef Sector in Greece and Potential Mitigation Scenarios" Environments 10, no. 8: 144. https://doi.org/10.3390/environments10080144
APA StyleAzoukis, S., Akamati, K., Bizelis, I., & Laliotis, G. P. (2023). Retrospective Assessment of Greenhouse Gas Emissions from the Beef Sector in Greece and Potential Mitigation Scenarios. Environments, 10(8), 144. https://doi.org/10.3390/environments10080144