Does Precision Technologies Adoption Contribute to the Economic and Agri-Environmental Sustainability of Mediterranean Wheat Production? An Italian Case Study
Abstract
:1. Introduction
- How does the durum wheat profitability evolve if a farm adopts or does not adopt precision agriculture technologies?
- Could the application of precision agriculture technologies improve and make more efficient the nitrogen use within the context under investigation?
2. Materials and Methods
2.1. Study Area and Data Set
- Guidance systems (driver assistance, machine guidance, controlled traffic farming)
- Recording technologies (soil mapping, soil moisture mapping, canopy mapping, yield mapping)
- Reacting technologies (variable-rate irrigation and weeding and variable rate application of seeds, fertilizers, and pesticides).
- To ensure a correct management of nitrogenous inputs on durum wheat through precision agriculture technologies in order to reduce the environmental impact of cereal cropping systems
- To evaluate the economic, environmental, and social sustainability of investments in these technologies.
- The presence of a strong and real willingness to adopt the PA technologies investigated in this study
- The presence of a comparable size of the Utilized Agricultural Area (UAA) devoted to cereal farming and of a minimum total farm size of 100 ha to be defined as a large farm according to FADN statistical standards
- Farm B is a more efficient farm than the average in terms of productivity and profitability even without the implementation of PA technologies. In this regard, as it can be seen from the data (Table 2) that farm B is capable of levels of profitability almost in line to the median operating profit per hectare (calculated net of European CAP supporting payments applied to the durum wheat production) obtained by farms larger than 100 ha and specialized in cereal farming in central Italy. Furthermore, farm A and farm B are both located in the top 25%—in terms of operating profit per hectare from durum wheat farming—cereal farms in central Italy.
- Productivity: For both periods considered (2014–2018 and 2019–2022), the two case studies are both considerably more productive than the median value of productivity referred to in the sample of farms (greater than 40 ha) producing durum wheat in central Italy. Nevertheless, in the period 2019–2022, that is, the period after the acquisition of the PA technology by farm A, both farms A and B slightly lost productivity compared to their levels in the previous period.
- Price of the durum wheat produced: in the period 2014–2018, farm A proves to possess a capacity to enhance production with a notable premium price compared to central Italy (+16%) and farm B (+20%). This difference in price is due to the fact that farm A markets its product as seed wheat, a niche market in respect to the mainstream production of semolina wheat. In the period 2019–2022, post-PA adoption by farm A, the world changed drastically due to the double crisis (pandemic and the war in Ukraine) which, as we know, has led to a shock on the commodity market. Therefore, the surge in profit margins per hectare experienced by both case studies is due to the short-term economic prospects.
- Profitability (2014–2018): in the period 2014–2018, the operating income generated by every hectare of durum wheat produced by farm A was 69% higher than that of central Italy and 70% higher than that of farm B. This evidence indicates a much greater cost efficiency experienced by farm A in its PA pre-adoption period with respect both to the median context and to farm B. On the other hand, during 2019–2022, both case studies show an operating income which increased considerably because of the supply shock within the European market. In this regard, it is interesting to note that the difference in competitiveness between the two case studies observed in the previous period disappeared, as indicated by the operating income settling on the same level for both the farms.
2.2. Economic Analysis
- The profitability of durum wheat production performed by the PA-adopting case study (farm A) has been assessed by comparing how the profitability indicators evolve before and after the adoption period (2014–2018 vs. 2019–2022).
- Besides, the profitability of durum wheat production has been assessed comparing the economic indicators of the PA-adopting farm (farm A) to that of the non-adopting farm (farm B).
- Productivity
- ○
- T/ha
- Gross Profit (per hectare)
- ○
- Revenues (RV) − Variable Costs (VC)
- Gross profit Margin
- ○
- (RV − VC)/RV
- Operating profit (per hectare)
- ○
- Gross Profit − (PA capital depreciation quota − land for rent quota − administrative and general expenses quota)
- Operating profit margin
- ○
- Operating profit/RV
2.3. The Nitrogen Agronomic Efficiency Index (NAE)
3. Results and Discussion
3.1. Economic Results
- (1)
- Productivity: Land productivity is a very complex indicator that depends on many variables involved. In our case study, the data show that the most productive farm is the one that does not adopt the PA: farm B. Moreover, what is noted is also a slight declining trend in productivity for both farms, and perhaps this evidence could be related to the change in atmospheric and climatic conditions in the medium term. However, this is a hypothesis that should be verified using statistically representative samples of cultivated areas. Then, focusing the attention on the post adoption period, we note that farm A shows an increase in productivity in the 2019–2020 period followed by a decrease in productivity in the period 2021–2022. Again, the owners/managers of farm A attribute these trends as essentially linked to environmental conditions and not directly linked to the use of PATs which, among other things, should not be a factor of productivity increase but of cost optimization for any given level of productivity.
- (2)
- Cost efficiency: Regardless of the use of the PATs, looking at the trend of variable costs and the variable costs ratio, it emerges that farm A is a farm structurally more efficient than farm B, while, in terms of PA cost effectiveness, until 2021, the variable costs ratio remains substantially constant. Therefore, no signs of PA adoption efficacy are observed. Things change in 2022. Indeed, the variable costs ratio between farm A and farm B falls from 0.83–0.87 (in trend) to 0.76. Although this is an observation of only one year, so not very meaningful if seen in isolation, it still allows us to make a hypothesis: with raw material prices at the levels of 2022, the cost optimization of the production process using PATs could become significant and relevant. Obviously, this hypothesis should be tested experimentally; nevertheless, our data indicate that the farm that adopts a PAT management shows resilience in terms of increase in the production cost per hectare, which is much greater than the case study that does not adopt PAT.
- (3)
- Gross profitability: Interesting information can emerge if observing the gross profit. First, in the pre-adoption period, farm A was shown to be capable of much higher profitability than the “control” case study (farm B). Since 2018, in conjunction with the investment in the PAT package, farm A apparently loses its profitability advantage with respect to farm B. Indeed, in the period 2021–2022, the gross profit ratio between the two case studies is reversed compared to previous years—the wheat produced by farm B becomes more profitable than that produced by farm A—and this is due to three underlying forces acting simultaneously: wheat selling price, productivity, and contingency of exceptional environmental conditions.
- Selling price: Since 2018, the difference between the two case studies in terms of average revenue narrowed, until it disappeared in 2022. The exceptional increase in prices in the three-year period, 2020–2022, favored an upward squeezing of the price differentials, which was previously linked mainly to product quality.
- Productivity: Farm B remains a structurally more productive farm even in the post-adoption period of the PA package by farm A. The higher productivity of the durum wheat produced by farm B lies in the genetics of the seeds used. Farm A produces durum wheat for seed. The varieties used are generally less productive than semolina varieties, but they usually tend to have a higher market value even if, as we have seen in 2021–2022, the price of the two case studies flattens out on the same level due to the market shock.
- Environmental conditions: Although the use of PATs allows a greater timeliness of action in crop management, even without the use the technologies, farm B was able to manage the 2021 sowing period more effectively than farm A. The 2021 sowing was very difficult in the survey area due to exceptionally prolonged rain events. Farm A was unable to sow before December 2021 (two months of delay), and this strongly influenced the low productivity of the 2022 harvest, while farm B found useful windows for sowing in the right period, i.e., October 2021.
- (4)
- Operating profit: the fundamental information contained in the comparison between the two case studies, in terms of operating profit, is the incidence of the depreciation share of the PA capital invested by farm A in 2018. This factor, combined with the alignment of the prices of wheat sold starting from 2020 and the higher productivity of farm B, determines an inversion of the profitability of the two case studies in 2021–2022, when farm B becomes more profitable than farm A. The weight of the share of depreciation of the PA capital on the profitability per hectare of farm A also emerges from the joint comparison of the gross margin and the operating margin (Figure 5). In fact, the narrowing of the distance between the two indicators that can be seen when passing from the gross margin to the net margin is essentially due to the depreciation rate of the PA capital discounted by farm A.
3.2. Agronomic Results
4. Conclusions
- The depreciation share of the financial capital invested by farm A in the PA package was EUR 89.18 per hectare in 2022.
- The agricultural area on which this share of depreciation is calculated is four times higher than the agricultural area available to farm B. As mentioned by Schimmelpfennig [76], large farms may present economies of scale when adopting PATs because they have more hectares over which to spread investment costs. Moreover, large farms are also more likely to have the type of variability that makes PATs [77].
- The research project from which this article derives involved an agronomic experimentation in the case study farms, and it would have been beyond the possibilities of the project to develop this experimentation in more than two farms (farm A and B).
- Therefore, the first issue was to identify a “control” farm (case study B) available to host the agronomic experimentation for the participation in the comparative study. This farm should have been available to provide all its economic and accounting data. In this regard, it should also be clarified that farms in Italy in many cases do not keep detailed analytical accounting relating to long historical series in their archives. For this reason, even working with just one farm, it was not easy to reconstruct the analytical accounting data set necessary for carrying out this study [80]. On the other hand, there were no difficulties with farm A, since it keeps track of its own detailed analytical accounting using advanced management software (as Geofolia, Isagri).
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Equipment | Type of Technology | Price (EUR) |
---|---|---|
AGCO challenger ISOBUS-ready tractor | Guidance system | 200,000 |
Mazzotti MAF 5400 self-propelled sprayer with GPS guidance system | Guidance system and reacting technology | 200,000 |
Seletron system | Variable distribution of pesticides | 20,000 |
Jhon Deere ISOBUS-ready no till seeder | Guidance system | 67,000 |
Sulki ISOBUS-ready fertilizer sprayer | Reacting technology | 24,000 |
Parrot drone + software | Recording technology | 5000 (+150 annual subscription) |
Trimble in-cab terminal and satellite receiver combination for GPS guidance system and variable and rate distribution system Vantage Trimble | Guidance system and reacting technology | 15,000 (+150 annual subscription) |
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Farm | Sand | Silt | Clay | pH | Organic Matter | Total Nitrogen |
---|---|---|---|---|---|---|
A | 224.00 | 450.00 | 326.00 | 8.70 | 15.30 | 1.30 |
B | 142.00 | 462.00 | 396.00 | 8.13 | 14.50 | 1.07 |
UAA Durum Wheat | Average Yield | Average Yield Index | Average Durum Wheat Price | Average Durum Wheat Price Index | Gross Profit | Gross Profit Index | Operating Profit | Operating Profit Index | |
---|---|---|---|---|---|---|---|---|---|
ha | t/ha | €/t | €/ha | €/ha | |||||
Central Italy farms > 40 ha (2010–2018) | 15.2 | 4.7 | 1.00 | 222 | 1.00 | 478 | 1.00 | 295 | 1.00 |
Farm A (2014–2018) | 87.6 | 5.66 | 1.18 | 257 | 1.16 | 776 | 1.62 | 498 | 1.69 |
Farm B (2014–2018) | 54.2 | 6.2 | 1.31 | 213 | 0.96 | 494 | 1.03 | 294 | 0.99 |
Farm A (2019–2022) | 103.0 | 5.4 | 1.14 | 392 | 1.76 | 1401 | 2.93 | 1019 | 3.45 |
Farm B (2018–2022) | 57.0 | 5.9 | 1.26 | 369 | 1.66 | 1275 | 2.67 | 1075 | 3.64 |
Farm A | |
---|---|
Field Activities | Period |
Ploughing (40 cm) | October |
Harrowing | November |
Sowing | November |
Pest control: Azoxystrobin, Cyproconazole | March |
1st N fertilization—VRT 1 | March |
2nd N fertilization—VRT 1 | April |
Harvest | July |
Farm B | |
Field Activities | Period |
Chisel (25 cm) | October |
Harrowing | November |
Sowing | November |
Pest control: Azoxystrobin, Cyproconazole | March |
1st N fertilization | March |
2nd N fertilization | April |
Harvest | July |
Harvest Year | Productivity (t/ha) | Durum Wheat Price (€/t) | Variable Costs (€/ha) | Variable Cost Ratio (A/B) | Gross Profit (€/ha) | Gross Profit Ratio (A/B) | Operating Profit (€/ha) | |||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
A | B | A | B | A | B | A | B | A | B | |||
2014 | 6.40 | 6.20 | 287.30 | 230.00 | 580.40 | 702.50 | 0.83 | 1183.32 | 598.50 | 1.98 | 889.89 | 398.50 |
2015 | 4.90 | 5.80 | 306.40 | 240.00 | 600.50 | 712.50 | 0.84 | 817.86 | 554.50 | 1.47 | 511.60 | 354.50 |
2016 | 5.70 | 5.80 | 213.00 | 180.00 | 588.80 | 672.50 | 0.88 | 576.30 | 246.50 | 2.34 | 409.28 | 46.50 |
2017 | 5.60 | 6.00 | 245.00 | 200.00 | 564.85 | 677.50 | 0.83 | 753.84 | 397.50 | 1.90 | 377.41 | 197.50 |
2018 | 5.20 | 7.00 | 234.00 | 215.00 | 600.55 | 709.50 | 0.85 | 548.99 | 670.50 | 0.82 | 300.90 | 470.50 |
2019 | 5.60 | 5.50 | 270.00 | 245.00 | 572.80 | 662.50 | 0.86 | 898.87 | 560.00 | 1.61 | 410.22 | 360.00 |
2020 | 5.90 | 6.50 | 326.60 | 270.00 | 592.58 | 698.50 | 0.85 | 1296.09 | 93.50 | 1.39 | 965.21 | 731.50 |
2021 | 5.30 | 5.80 | 480.00 | 470.00 | 605.00 | 692.50 | 0.87 | 1879.00 | 1908.50 | 0.98 | 1528.29 | 1708.50 |
2022 | 4.70 | 5.50 | 490.00 | 490.00 | 771.40 | 1017.50 | 0.76 | 1531.60 | 1699.50 | 0.90 | 1170.97 | 1499.50 |
Year | Average Yield (t/ha) | Durum Wheat Price (€/t) | Variable Costs (€/ha) | Operating Profit (€/ha) | Operating Margin |
---|---|---|---|---|---|
2020 | 6.50 | 270.00 | 698.50 | 444.77 | 0.25 |
2021 | 5.80 | 470.00 | 692.50 | 1416.56 | 0.52 |
2022 | 6.00 | 490.00 | 1017.50 | 1202.24 | 0.42 |
Year | Farm | N Provided (kg N/ha) | Tot. Yield 1 (kg/ha) | NAE 2 |
---|---|---|---|---|
2017 | A | 136 | 5600 | 0.41 |
2018 | A | 129 | 5200 | 0.40 |
2019 | A | 114 | 5600 | 0.49 |
2020 | A | 177 | 5900 | 0.33 |
2021 | A | 125 | 5300 | 0.42 |
Mean A | 136 | 5520 | 0.41 | |
2017 | B | 210 | 6000 | 0.29 |
2018 | B | 230 | 7000 | 0.30 |
2019 | B | 215 | 5500 | 0.26 |
2020 | B | 223 | 6500 | 0.29 |
2021 | B | 208 | 5800 | 0.28 |
Mean B | 217 | 6160 | 0.28 | |
Mean (A vs. B) differences (%) | −63 | −10 | +47 |
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Finco, A.; Bentivoglio, D.; Belletti, M.; Chiaraluce, G.; Fiorentini, M.; Ledda, L.; Orsini, R. Does Precision Technologies Adoption Contribute to the Economic and Agri-Environmental Sustainability of Mediterranean Wheat Production? An Italian Case Study. Agronomy 2023, 13, 1818. https://doi.org/10.3390/agronomy13071818
Finco A, Bentivoglio D, Belletti M, Chiaraluce G, Fiorentini M, Ledda L, Orsini R. Does Precision Technologies Adoption Contribute to the Economic and Agri-Environmental Sustainability of Mediterranean Wheat Production? An Italian Case Study. Agronomy. 2023; 13(7):1818. https://doi.org/10.3390/agronomy13071818
Chicago/Turabian StyleFinco, Adele, Deborah Bentivoglio, Matteo Belletti, Giulia Chiaraluce, Marco Fiorentini, Luigi Ledda, and Roberto Orsini. 2023. "Does Precision Technologies Adoption Contribute to the Economic and Agri-Environmental Sustainability of Mediterranean Wheat Production? An Italian Case Study" Agronomy 13, no. 7: 1818. https://doi.org/10.3390/agronomy13071818
APA StyleFinco, A., Bentivoglio, D., Belletti, M., Chiaraluce, G., Fiorentini, M., Ledda, L., & Orsini, R. (2023). Does Precision Technologies Adoption Contribute to the Economic and Agri-Environmental Sustainability of Mediterranean Wheat Production? An Italian Case Study. Agronomy, 13(7), 1818. https://doi.org/10.3390/agronomy13071818