An Actor-Oriented Multi-Criteria Assessment Framework to Support a Transition towards Sustainable Agricultural Systems Based on Crop Diversification
Abstract
:1. Introduction
2. Materials and Methods
2.1. Design of the Sustainability Assessment Framework of Indicators
- Relevance for crop diversification and sustainability—indicators had to be sensitive to crop diversification and consistent with the sustainability objectives of the underlying criterion;
- Non-redundancy—indicators had to supply complementary information in order to reduce their number, and the related data collection and processing cost, while being able to evaluate trade-offs;
- Scientific value—indicators had to be calculated in well-founded technical and scientific terms;
- Feasibility—indicators had to be easily measurable or calculable based on commonly available or easy to collect data on-farm;
- Indicator type—indicators were classified and selected according to their nature and structure [21]: (i) causal indicators providing insight in the causes determining an effect (proxies could be used to assess an effect) and (ii) effect indicators based on an assessment of the effect variable;
- System boundaries—for some criteria (e.g., greenhouse gas balance), indirect impacts due to input production were tackled according to the Life Cycle Assessment approach as recommended by Bockstaller et al. [21].
- The use of literature values for reference data and data gaps (e.g., harvest index used for the crop residue estimation);
- The use of causal or proxy-indicators that refer indirectly to the process of interest (e.g., the amount of the nitrogen applied on crops through mineral and organic fertilizers as a proxy of nitrous oxide emissions);
- The use of qualitative information (e.g., quality of harvest products in relation to market standards).
2.2. The Assessment Process in the Case Studies
2.2.1. Case Study 1: Pays de la Loire, France (CS PL)
- 1.
- The reference system—the rotation implemented in the field before 2016 (harvest years: 2015, 2016) characterized by common winter wheat, pea and sunflower as cash crops, and winter oats as cover crop;
- 2.
- The diversified system—rotation titled ‘After 2016’ (harvest years: 2017, 2018). Cash crops were common winter wheat, pea, hemp, spring and winter barley, and a cover crop of winter oats.
2.2.2. Case Study 2: Lower Saxony, Germany (CS LS)
- 1.
- The reference system—the current situation characterized by a four-year arable rotation representing similar common local practices (harvest years: 2019–2022; cash crops: potato, common winter wheat, forage maize and rye; cover/catch crop in intercropping: buckwheat and phacelia);
- 2.
- The diversified system—a six-year rotation (‘Planned diversified system’) combined with the introduction of legume cover and cereal catch crops (harvest years: 2019–2024; cash crops: winter barley, winter rapeseed, common winter wheat, rye and forage maize; cover/catch crops: spring oats, niger-Guizotia abyssinica; cover crop intercropping with the main crop rye: clover)
2.2.3. Case Study 3: Sicily (Italy), (CS SI)
- 1.
- The reference system was a conventional cereal cropping system implemented by the farmer before the organic conversion (harvest years: 2013–2016; Cash crops: durum winter wheat, multi-annual artichoke);
- 2.
- The diversified organic system was a ‘wheat–hemp system’ (harvest years: 2017–2018) characterized by the following cash crops: hemp, common winter wheat, durum winter wheat with three Sicilian landraces.
2.2.4. Assessment Result Presentation
3. Results
3.1. Assessment Framework of Indicators
3.1.1. Economic Sustainability
3.1.2. Environmental Sustainability
3.1.3. Social Sustainability
3.2. The Assessment Framework Applied in the Selected Case Studies
3.2.1. CS PL—Pays de la Loire (FR)
3.2.2. CS LS—Lower Saxony (DE)
3.2.3. CS SI—Sicily (IT)
4. Discussion
4.1. Indicators Framework
4.2. Results from the Case Studies
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Appendix A
CS PL (FR) | |||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|
Reference System (Ex post): Before 2016 | |||||||||||
Harvest Years | Fields | ||||||||||
7.13 ha | 4 ha | 10.47 ha | 8.03 ha | 1.93 ha | 2.21 ha | 11.8 ha | 5.13 ha | 3.33 ha | 1.09 ha | 8.59 ha | |
2015 | sunflower- grain: 1800 kg/ha (0.32 €/kg) | pea- bean: 600 kg/ha (0.19 €/kg) | sunflower-grain: 2200 kg/ha (0.32 €/kg) | soft winter wheat- grain: 7597 kg/ha (0.17 €/kg) | soft winter wheat-grain: 8031 kg/ha (0.17 €/kg) | sunflower- grain: 1799 kg/ha (0.32 €/kg) | soft winter wheat-grain: 10,929 kg/ha (0.17 €/kg) | sunflower- grain: 2200 kg/ha (0.32 €/kg) | soft winter wheat-grain: 95,040 kg/ha (0.17 €/kg) | sunflower- grain: 2600 kg/ha (0.32 €/kg) | soft winter wheat-grain: 8489 kg/ha (0.17 €/kg) |
2016 | soft winter wheat-grain: 6566 kg/ha (0.15 €/kg) | soft winter wheat-grain: 6566 kg/ha (0.15 €/kg) | soft winter wheat-grain: 6888 kg/ha (0.15 €/kg) | winter oat (cover crop)-green manure: 2500 kg/ha | soft winter wheat-grain: 3505 kg/ha (0.15 €/kg) | soft winter wheat-grain: 4478 kg/ha (0.15 €/kg) | winter oat (cover crop)--green manure: 2500 kg/ha | soft winter wheat-grain: 5377 kg/ha (0.15 €/kg) | soft winter wheat-grain: 3624 kg/ha (0.15 €/kg) | soft winter wheat-grain: 6679 kg/ha (0.15 €/kg) | s winter oat (cover crop)--green manure: 2500 kg/ha |
pea- bean: 2847 kg/ha (0.19 €/kg) | sunflower- grain: 4000 kg/ha (0.38 €/kg) | sunflower-grain: 4000 kg/ha (0.38 €/kg) | |||||||||
Diversified system (Ex post): After 2016 | |||||||||||
2017 | winter oat (cover crop)-green manure: 2500 kg/ha | winter oat (cover crop)-green manure: 2500 kg/ha | winter oat (cover crop)-green manure: 2500 kg/ha | soft winter wheat-grain: 7711 kg/ha (0.17 €/kg) | winter oat (cover crop)-green manure: 2500 kg/ha | winter oat (cover crop)-green manure: 2500 kg/ha | soft winter wheat-grain: 8861 kg/ha (0.17 €/kg) | soft winter wheat-grain: 6357 kg/ha (0.17 €/kg) | winter oat (cover crop)-green manure: 2500 kg/ha | winter oat (cover crop)-green manure: 2500 kg/ha | soft winter wheat-grain: 7208 kg/ha (0.17 €/kg) |
spring barley- grain: 5357 kg/ha (0.15 €/kg) | spring barley- grain: 4659 kg/ha (0.15 €/kg) | hemp –whole plant: 8950 kg/ha (0.11 €/kg) | pea- bean: 4166 kg/ha (0.24 €/kg) | pea- bean: 5087 kg/ha (0.24 €/kg) | spring barley- grain: 4659 kg/ha | pea- bean: 4862 kg/ha (0.24 €/kg) | |||||
2018 | soft winter wheat-grain: 6952 kg/ha (0.17 €/kg) | soft winter wheat-grain: 6952 kg/ha (0.17 €/kg) | soft winter wheat-grain: 7331 kg/ha (0.17 €/kg) | winter oat (cover crop)-green manure: 2500 kg/ha | winter oat (cover crop)-green manure: 2500 kg/ha | winter barley- grain: 6145 kg/ha (0.162 €/kg) | winter barley- grain: 6199 kg/ha (0.162 €/kg) | winter oat (cover crop)-green manure: 2500 kg/ha | winter oat (cover crop)-green manure: 2500 kg/ha | soft winter wheat-grain: 7284 kg/ha (0.17 €/kg) | winter oat (cover crop)-green manure: 2500 kg/ha |
hemp–whole plant: 8130 kg/ha (0.11 €/kg) | pea- bean: 4285 kg/ha (0.24 €/kg) | pea- bean: 4752 kg/ha (0.24 €/kg) | pea- bean: 4499 kg/ha (0.24 €/kg) | pea- bean: 4285 kg/ha (0.24 €/kg) | |||||||
CS LS (DE) | |||||||||||
Reference system (Ex ante): Current system | Diversified system (Ex ante): Planned diversified system | ||||||||||
Harvest years | 50 ha | 50 ha | |||||||||
2019 | potato- tuber: 45,000 kg/ha (0.14 €/kg) | winter barley–grain: 6000 kg/ha (0.168 €/kg) | |||||||||
spring oats (catch crop)–green manure: 1000 kg/ha | |||||||||||
2020 | soft winter wheat–grain: 7000 kg/ha (0.18 €/kg) | winter rapeseed-grain: 3500 kg/ha (0.365 €/kg) | |||||||||
buckwheat + phacelia (cover/catch crops in intercropping) - green manure: 2000 kg/ha | clover (cover crop)-green manure: 2500 kg/ha | ||||||||||
2021 | forage maize–whole plant: 45,000 kg/ha (0.029 €/kg) | soft winter wheat–grain: 7000 kg/ha (0.18 €/kg) | |||||||||
niger (Guizotia abyssinica, cover crop)-green manure: 1000 kg/ha | |||||||||||
2022 | rye–grain: 7000 kg/ha (0.166 €/kg) | rye–grain: 7000 kg/ha (0.166 €/kg) | |||||||||
buckwheat + phacelia (cover/catch crops in intercropping) - green manure: 2000 kg/ha | clover (cover crop in intercropping with main crop)-green manure: 2500 kg/ha | ||||||||||
2023 | - | forage maize–whole plant: 45,000 kg/ha (0.029 €/kg) | |||||||||
2024 | - | rye–grain: 7000 kg/ha (0.166 €/kg) | |||||||||
clover (cover crop in intercropping with main crop)-green manure: 2500 kg/ha | |||||||||||
CS SI (IT) | |||||||||||
Reference system (Ex post): Conventional durum wheat-artichoke system | |||||||||||
Harvest years | 3 ha | 7 ha | |||||||||
2013 | durum winter wheat– grain: 3800 kg/ha (0.2 €/kg); straw: 3900 kg/ha (0.027 €/kg) | artichoke-flower: 3940 kg/ha (1.4 €/kg) | |||||||||
2014 | durum winter wheat– grain: 3800 kg/ha (0.2 €/kg); straw: 3900 kg/ha (0.027 €/kg) | artichoke-flower: 5890 kg/ha (1.4 €/kg) | |||||||||
2015 | durum winter wheat– grain: 3800 kg/ha (0.2 €/kg); straw: 3900 kg/ha (0.027 €/kg) | artichoke-flower: 5890 kg/ha (1.4 €/kg) | |||||||||
2016 | durum winter wheat– grain: 3800 kg/ha (0.2 €/kg); straw: 3900 kg/ha (0.027 €/kg) | artichoke-flower: 3940 kg/ha (1.4 €/kg) | |||||||||
Diversified system (Ex post): Organic wheat- hemp system | |||||||||||
Harvest years | 1 ha | 2 ha | 1 ha | 4 ha | 2 ha | ||||||
2017 | hemp-grain: 300 kg/ha (3 €/kg); flower: 120 kg/ha (200 €/kg) | soft winter wheat-grain: 4000 kg/ha (0.6 €/kg); straw: 3857 kg/ha (0.027 €/kg) | durum winter wheat-grain: 2950 kg/ha (0.6 €/kg); straw: 3857 kg/ha (0.027 €/kg) | ||||||||
2018 | durum winter wheat-grain: 2100 kg/ha (0.6 €/kg); straw: 3660 kg/ha (0.027 €/kg) | soft winter wheat-grain: 3200 kg/ha (0.6 €/kg); straw: 3660 kg/ha (0.027 €/kg) | bare soil | hemp-grain: 220 kg/ha (3 €/kg); flower: 20 kg/ha (300 €/kg) | bare soil | ||||||
Diversified system (Ex ante): Sulla clover scenario | |||||||||||
Harvest years | 1 ha | 2 ha | 1 ha | 1 ha | 1 ha | 2 ha | 1 ha | 1 ha | |||
2020 | soft winter wheat-grain: 3600 kg/ha (0.6 €/kg); straw: 3750 kg/ha (0.027 €/kg) | durum winter wheat-grain: 2500 kg/ha (0.6 €/kg); straw: 3750 kg/ha (0.027 €/kg) | sulla clover (bean; cover crop)– bean 1500 kg/ha (0.5€/kg); green manure: 2500 kg/ha | hemp-grain: 260 kg/ha (3 €/kg); flower: 70 kg/ha (100 €/kg) | |||||||
2021 | sulla clover (bean; cover crop)– bean 1500 kg/ha (0.5 €/kg); green manure: 2500 kg/ha | hemp-grain: 260 kg/ha (3 €/kg); flower: 70 kg/ha (100 €/kg) | soft winter wheat-grain: 3600 kg/ha (0.6 €/kg); straw: 3750 kg/ha (0.027 €/kg) | durum winter wheat-grain: 2500 kg/ha (0.6 €/kg); straw: 3750 kg/ha (0.027 €/kg) | soft winter wheat-grain: 3600 kg/ha (0.6 €/kg); straw: 3750 kg/ha (0.027 €/kg) | durum winter wheat-grain: 2500 kg/ha (0.6 €/kg); straw: 3750 kg/ha (0.027 €/kg) | |||||
2022 | hemp-grain: 260 kg/ha (3 €/kg); flower: 70 kg/ha (100 €/kg) | soft winter wheat-grain: 3600 kg/ha (0.6 €/kg); straw: 3750 kg/ha (0.027 €/kg) | durum winter wheat-grain: 2500 kg/ha (0.6 €/kg); straw: 3750 kg/ha (0.027 €/kg) | sulla clover (bean; cover crop)– bean 1500 kg/ha (0.5 €/kg); green manure: 2500 kg/ha |
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SAFA Themes/Sub-Themes | Criteria | Indicators | |
---|---|---|---|
Economic Dimension | |||
Investment/Profitability | 1. Productivity (Prod) | 1.1 Energy yield (EY) | EY = Yti = Yield (kg/ha d.m.) of crop i in year t; Kti = energy content (MJ/kg) in crop i in year t; Sti = area (ha) where crop i is cropped in year t; c = number of crops per year (considering all assessed fields) |
1.2 Land Equivalent Ratio (LER) | interti = intercrop yield of the crop i (kg/ha d.m.) in year t; pureti = yield of the crop i in pure stand (kg/ha d.m.) in year t; Sti = area (ha) where crop i is cropped in the year t; c = number of crops per year (considering all assessed fields) If two successive crops are in the same year in the same field, the indicator calculates first their mean values | ||
Vulnerability/Stability of Production | 2.Stability of production (Stab) | 2.1 Yield Coefficient of Variation (YCV) | YCV = CVi = coefficient of variation (standard deviation/mean) of the yield (t/ha) of crop i. The yield data (at least three values) for each crop must be referred to different harvested years; Si = area (ha) where crop i is cropped; c = number of assessed crops |
Investment/Profitability | 3. Profitability (Prof) | 3.1 Average gross margin at rotation level (RGM) | RGM = PBti = harvest yield of crop i (kg/ha d.m.) X market price (€/kg) in year t; OCti = Operational charges (€/ha) linked to inputs of seed, fertilizers, pesticides, work, irrigation for crop i in year t; Sti = area (ha) where crop i is cropped in year t; c = number of crops per year (considering all assessed fields) |
Vulnerability/Risk Management | 4. Dependency on external inputs (Dep) | 4.1 Total input/turnover (DEI) | PBti = harvest yield of crop i (kg/ha d.m.) X market price (€/kg) in year t; OCti = Operational charges (€/ha) linked to inputs of seed, fertilizers, pesticides, work, irrigation for crop i in year t; Sti = area (ha) where crop i is cropped in year t; c = number of crops per year (considering all assessed fields) |
Investment/Profitability; Product Quality and Information/Food Quality | 5. Product quality (ProdQ) | 5.1 Product standard quality required by the sector/market (PSQ) | PSQ = Qi = Quality the crop i (0—Low quality and no possibility of sale; 1—Low quality but the crop can be sold to other markets or at a lower price; 2—Requested quality achieved); c = number of the crops |
Investment/Profitability | 6. Local valorisation (LocVal) | 6.1 Proportion of short food supply chain and local distribution (PSC) | PSC = 100 − (LS + NM) LS = % of products (kg) from the assessed cropping systems sold to large scale distribution for export; NM = % of products (kg) from the assessed cropping systems sold for national market |
6.2 Supplier/customer contribution to profitability (SCCPsuppl and SCCPcust) | SCCP = (SC obtained for I Statement + SC obtained for II Statement)/2 SC = Seven-point Likert scale: 1 = completely disagree; 2 = moderately disagree; 3 = slightly unimportant; 4 = neither agree nor disagree; 5 = slightly agree; 6 = moderately agree; 7 = completely agree; I Statement: ‘Our business relationship with our suppliers or customers significantly contributes to our profitability’; II Statement: ‘Our business relationship with our suppliers or customers is very attractive because of getting fair prices’ | ||
Environmental Dimension | |||
Biodiversity/Ecosystem Diversity | 7. Ecosystem/landscape Diversity (EcosDiv) | 7.1 (8.1) Crop Diversity Index (CDI) | CDI = pi = area occupied by the crop i in the total assessed cropped area; c = number of crops |
7.2% Semi Natural Habitat (%SNH) | %SNH = ASNH = total area of the semi-natural agricultural habitats (ha); Aaa = total agricultural area (ha) | ||
Biodiversity/Species Diversity | 8. Crop diversification (CropDiv) | 8.1 (7.1) Crop Diversity Index (CDI) | see 7.1 |
8.2% Legume in rotation (LEG) | LEG = ALti = area (ha) covered by legume crop i (considering both cash and cover crops) in year t; ACti = area (ha) covered by the crop i in year t; l = number of the legume crop per year (considering all assessed fields); c = number of crops per year (considering all assessed fields) | ||
Biodiversity/Genetic Diversity | 9. Genetic diversification (GenDiv) | 9.1 Crop-cultivar diversity (CCD) | CCD = CN = number of crop cultivars and/or heterogeneous genetic materials in the assessed cropping systems; CS = number of crop species present in the assessed cropping systems |
9.2 Number of crop in the rotation with cultivar mixture (CCM) | CCM = CM = number of crops with mixed cultivars in the assessed cropping systems; CT = number of the crops in the assessed cropping systems | ||
Land/Land Degradation | 10. Soil degradation (compaction, erosion) (SoilDeg) | 10.1 Proportion of crops harvested in wet conditions (NWHC) | NWHC = WHSti = area (ha) where crop i is harvested in wet conditions in year t; SHti = area (ha) covered by the harvested crop i in year t; w = number of the crops harvested in wet conditions per year (considering all assessed fields); c = number of the harvested crops per year (considering all assessed fields) |
10.2 Bare soil during erosion risk (intensive rainfall) period (BSOeros) | BSOeros = 100 The computation is performed only if the area presents potential run-off or erosion problems. m = number of main crops per year (considering all assessed fields); Sti = area (ha) of the main crop i in year t; Cti = management factor of the area i in year t = Cfactor from USLE [22] X C-tillage X Ccovercrop X Cintercropping Cfactor, C-Tillage and Ccovercrop are derived from Paganos et al. [23]; Cintercropping = 0.9 to be applied to the main crop if it is intercropped | ||
Land/Soil Quality | 11.Soil quality (SoilQ) | 11.1 (16.4) Carbon input during the rotation (ACI) | Cti = amount of the component j (i.e., crop residues, crop roots and extra roots, manure, slurry, etc.) (t/ha) for the considered crop i in year t; Fti = Fraction of the carbon of component i for the considered crop i in year t; Isohumi = Isohumic coefficient of component i for the considered crop i in year t; Stij = area (ha) where the component i for the considered crop i is provided to the soil in year t; m = number of the components provided to the soil per crop; c = number of crops per year (considering all assessed fields) |
Fresh water/Water withdrawal | 12. Water withdrawal (WatWit) | 12.1 Pressure on local water resources (PLWR) | PLWR = Ictij = Water used for irrigation in month j on crop i (m3/ha) in year t; CFmj = characterization factor for month j (m3/m3); Stij = area (ha) where the water in month j is provided to crop i in year t; m = number of months; c = number of crops per year (considering all assessed fields) |
Fresh water/Water Quality | 13. Water quality (nutrient) (WatQualNut) | 13.1 Surface nutrient balances (Nitrogen-NBAL and Phosphorus-PBAL) | N and PBAL = inputtij: amount of input j X nutrient content in input (kg N or P2O5/ha) removed during the cycle of crop i in year t; outputtik: amount of output k X nutrient content in output (kg N or P2O5/ha) provided during the cycle of crop i in year t; Sti = area (ha) where crop i is cropped in year t; c = number of crops per year (considering all assessed fields); m = number of inputs per crop; f = number of outputs per crop |
13.2 (10.2) Bare soil during drainage periods (BSOleach) | BSOleach = 100 m = number of main crops per year (considering all assessed fields); Sti = area (ha) of the main crop i in year t; Cti = management factor of the area i in year t = C X Correction factor where C derived from FLINT project: C = 0 if alfalfa, temporary grassland; C = 0.25 if winter rapeseed; C = 0.75 if other winter crop, artichoke; C = 1 if spring crop, bare soil; if the main crop is in intercropping, the identify C has to be reduced by 0.10 Correction factors to use if the main crop is preceded by a cover/catch crop: 0.30 if long (more than 2 months) catch crop; 0.70 if short (less or equal than 2 months) catch crop; 0.40 if long legume cover crop; 0.80 if short legume cover crop; 0.35 if long mix cover crops (legume + others); 0.75 if short mix cover crops (legume + others); | ||
Fresh water/Water Quality | 14. Water quality (pesticide) (WatQualPes) | 14.1 Leaching risk of active ingredient (LeachAI) | LeachAI = f() = aggregation function of risk and amount of active ingredient derived from Lindahl and Bockstaller [24]; QAItij = Amount of sprayed active ingredient j (g/ha) on crop i in year t = VAItik X CAItijk where VAItik = volume of sprayed pesticide k (commercial product) on crop i in year t and CAItijk = concentration of active ingredient j in pesticide k sprayed on crop i in year t; LRtij = Risk factor of leaching for the active ingredient j on crop i (between 0 and 1) in year t calculated with help of the groundwater component of the I-Phy2 indicator [25] for standard conditions; Stij = area (ha) where the active ingredient j is applied on crop i in year t; m = number of active ingredients per crop; c = number of crops per year (considering all assessed fields) |
14.2 (15.2) Amount of active ingredients (QAI) | QAItij = amount of sprayed active ingredient j (g/ha) on crop i in year t = VAItik X CAItijk where VAItik = volume of sprayed pesticide k (commercial product) on crop i in year t and CAItijk = concentration of active ingredient j in pesticide k sprayed on crop i in year t; Stij = area (ha) where the active ingredient j is applied on crop i in year t; m = number of active ingredients per crop; c = number of crops per year (considering all assessed fields) | ||
Atmosphere/Air Quality | 15. Air quality (AirQual) | 15.1 Volatilization risk of active ingredients (VolAI) | f() = aggregation function of risk and amount of active ingredient derived from Lindahl and Bockstaller [24]; QAItij = Amount of sprayed active ingredient j (g/ha) on crop i in year t = VAItik X CAItijk where VAItik = volume of sprayed pesticide k (commercial product) on crop i in year t and CAItijk = concentration of active ingredient j in pesticide k sprayed on crop i in year t; VRtij = Risk factor of volatilisation for the active ingredient j on crop i (between 0 and 1) in year t calculated with help of the groundwater component of the I-Phy2 indicator [25] for standard conditions; Stij = area (ha) where the active ingredient j is applied on crop i in year t; m = number of active ingredients per crop; c = number of crops per year (considering all assessed fields) |
15.2 (14.2) Amount of active ingredients (QAI) | see 14.2 | ||
Atmosphere/Greenhouse gases | 16. GHG balance (GHGB) | 16.1 Mineral Nitrogen Use for GHG balance calculation (MNUGHG) | MNUGHG = Nmintij = total mineral (= synthetic) nitrogen applied on crop i, in the form of fertilizer j (kg N/ha) in year t; GWPFj = global warming potential for fertilizer j production (kg CO2eq./kg N); Stij = area (ha) where the mineral nitrogen fertilizer j is applied on crop i in year t; m = number of mineral nitrogen fertilizers per crop; c = number of crops per year (considering all assessed fields) |
16.2 Nitrogen Use (NU) | Nti = amount of mineral + organic nitrogen (kg N/ha) applied on crop i in year t; Sti = area (ha) where crop i is cropped in year t; c = number of crops per year (considering all assessed fields) | ||
16.3 Total fuel consumption for global warming potential calculation (FCFGHG) | FCFGHG = CFUtij = total consumption of fuel j(kg/ha) for the crop i in year t; GWPPj = global warming potential for fuel j production (kg CO2eq./kg fuel j); GWPEj = global warming potential from fuel j combustion (kg CO2eq./kg fuel j); Stij = area (ha) where crop i is cropped in year t; m = number of fuel types per crop; c = number of crops per year (considering all assessed fields) | ||
16.4 (11.1) C input during the rotation (ACI) | see 11.1 | ||
Materials and Energy/Energy use and Material use | 17. Non-renewable resources (NRRes) | 17.1 Total fuel consumption for fossil energy use calculation (FCFNRJ) | FCFNRJ = . CFtij = total consumption of fuel j (kg/ha) for the crop i in year t; FEDj = fossil energy demand for fuel j production (MJ/kg); Stij = area (ha) where crop i is cropped in year t; m = number of fuel types per crop; c = number of crops per year (considering all assessed fields) |
17.2 Mineral Nitrogen Use for fossil energy use calculation (MNUNRJ) | Nmintij = total mineral (=synthetic) nitrogen applied on crop i, in the form of fertilizer j (kg N/ha) in year t; FEDFj = fossil energy demand for fertilizer j production (MJ/kgN); Stij = area (ha) where the mineral nitrogen fertilizer j is applied on crop i in year t; m = number of mineral nitrogen fertilizers per crop; c = number of crops per year (considering all assessed fields) | ||
17.3 Mineral Phosphorus use (MPU) | Pminti = Total mineral (=synthetic) P applied on crop i (kg P/ha) in year t; Sti = area (ha) where crop i is cropped in year t; c = number of crops per year (considering all assessed fields) | ||
Social Dimension | |||
Human Safety and Health/Public Health | 18. Farmer and public health (Health) | 18.1 Treatment frequency index (TFI) | TFI = ADtij = applied dose of the pesticide j (accounting for insecticides, fungicides, herbicides, acaricides and other plant production) applied on crop i in year t; DHj = registered dose of the pesticide j; Stij = area (ha) where the pesticide j is applied on crop i in year t; k = number of pesticides per crop; c = number of crops per year (considering all assessed fields)If two successive crops or mixtures are in the same year in the same field, the indicator calculates first their mean values |
Decent Livelihood/Quality of Life | 19. Farmers’ quality of life (LifeQual) | 19.1 Work overload (WOL) | WOL = 100 WOLti: work overload for month i in year t expressed on a scale between 0 (low) and 3 (very high); Sti = area (ha) where the work for month i is applied in year t; m = number of months |
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Share and Cite
Iocola, I.; Angevin, F.; Bockstaller, C.; Catarino, R.; Curran, M.; Messéan, A.; Schader, C.; Stilmant, D.; Van Stappen, F.; Vanhove, P.; et al. An Actor-Oriented Multi-Criteria Assessment Framework to Support a Transition towards Sustainable Agricultural Systems Based on Crop Diversification. Sustainability 2020, 12, 5434. https://doi.org/10.3390/su12135434
Iocola I, Angevin F, Bockstaller C, Catarino R, Curran M, Messéan A, Schader C, Stilmant D, Van Stappen F, Vanhove P, et al. An Actor-Oriented Multi-Criteria Assessment Framework to Support a Transition towards Sustainable Agricultural Systems Based on Crop Diversification. Sustainability. 2020; 12(13):5434. https://doi.org/10.3390/su12135434
Chicago/Turabian StyleIocola, Ileana, Frederique Angevin, Christian Bockstaller, Rui Catarino, Michael Curran, Antoine Messéan, Christian Schader, Didier Stilmant, Florence Van Stappen, Paul Vanhove, and et al. 2020. "An Actor-Oriented Multi-Criteria Assessment Framework to Support a Transition towards Sustainable Agricultural Systems Based on Crop Diversification" Sustainability 12, no. 13: 5434. https://doi.org/10.3390/su12135434
APA StyleIocola, I., Angevin, F., Bockstaller, C., Catarino, R., Curran, M., Messéan, A., Schader, C., Stilmant, D., Van Stappen, F., Vanhove, P., Ahnemann, H., Berthomier, J., Colombo, L., Dara Guccione, G., Mérot, E., Palumbo, M., Virzì, N., & Canali, S. (2020). An Actor-Oriented Multi-Criteria Assessment Framework to Support a Transition towards Sustainable Agricultural Systems Based on Crop Diversification. Sustainability, 12(13), 5434. https://doi.org/10.3390/su12135434