The Digital Applications of “Agriculture 4.0”: Strategic Opportunity for the Development of the Italian Citrus Chain
Abstract
:1. Introduction
- Which smart technologies are easily accessible and able to positively affect the organization and management of citrus-growing activities?
- How does smart technology facilitate connection with the market, especially in B2B and B2C relations?
- What functional role can smart technology play in the relevant supply chain?
2. Materials and Methods
- “participatory design” (constituting focus groups), which saw the involvement of different categories of stakeholders interested in the theme in question and its applications in citrus farming;
- (1)
- multicriteria analysis, which, based on the impact matrix, leads to an assessment of the scenarios, with alternative scenarios rated against specific decision criteria;
- (2)
- equity analysis, which, based on the equity matrix (criteria/alternatives matrix), analyzes possible alliances and conflicts of interest between stakeholder groups regarding the proposed scenarios, measuring their acceptability. For this matrix, it is possible to consider very different scores such as net numbers and stochastic, fuzzy, and linguistic elements (such as “very poor”, “poor”, “good”, “very good”, and “excellent”).
- the identification of stakeholders (30 qualified people who answered 30 ad hoc structured questionnaires);
- the identification of the problem, made possible by an initial analysis of the elements that emerged through the focus groups;
- the definition of three alternative scenario hypotheses (defined as “Agriculture”, “Supply Chain”, and “Market”);
- the criteria valuation;
- the construction of the impact and equity matrices, which represent, as is well known, the basis for the use of the NAIADE discrete assessment model [68];
- the classification of alternative scenarios according to the decision criteria and the possible “alliances” and “conflicts” between the stakeholder groups, thus measuring the acceptability of the proposed technological solutions [69].
- The planning of the meeting (in January 2021) was initially carried out, with a definition of the number of sessions and their duration. Eight sessions were chosen (one per category) lasting 4–8 h each; it was also decided to develop a guide to conduct the interview with and to review scientific and educational material on the technological solutions of Agriculture 4.0. Finally, the participants were selected in a stratified manner to create homogeneous groups [70];
- Survey activities were carried out (May and June 2021) via interviews. The topic was presented, and discussion and interaction between the participants were stimulated through the use of scientific publications and explanatory images. During this phase, various ideas and opinions were acquired, which represented the reactions of the participants involved in the topics discussed.
- 0 ≤ μ*(a,b) ≤ 1
- μ*(a,b) = 0 if none of the μ*(a,b)m are more than α;
- μ*(a,b) = 1 if μ*(a,b) m ≥ α ∀ m and μ*(a,b) m > α for at least one criterion.
- a is better than b;
- a and b are indifferent;
- a is worse than b.
3. Results and Discussion
3.1. Characteristics of the Citrus Industry and Agriculture 4.0 Solutions
3.2. Assessing the Acceptability of 4.0 Innovations
4. Conclusions
Author Contributions
Funding
Informed Consent Statement
Conflicts of Interest
References
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Strengths | Weaknesses |
---|---|
In the agricultural phase:
| In the agricultural phase:
|
Opportunities | Threats |
|
|
Evaluation Criteria | Scenario AGRICULTURE “A” | Scenario MARKET “M” | Scenario SUPPLY CHAIN “S” |
---|---|---|---|
Technology | Excellent | Good | Excellent |
Communication | Very Good | Excellent | Excellent |
Data | Good | Excellent | Very Good |
Internet of Things | Poor | Very Good | Excellent |
Automation | Very Good | Good | Very Good |
Networking | Good | Excellent | Very Good |
Groups and Stakeholders | Scenario AGRICULTURE “A” | Scenario MARKET “M” | Scenario SUPPLY CHAIN “S” | |
---|---|---|---|---|
A1 | Producers | 0.7387 | 0.6311 | 0.8470 |
A2 | Trade associations | 0.6732 | 0.7334 | 0.6213 |
A3 | Dealers | 0.5764 | 0.6218 | 0.6138 |
A4 | Consumer associations | 0.5216 | 0.6392 | 0.8723 |
A5 | Institutions | 0.6283 | 0.5357 | 0.8231 |
A6 | Scientific association | 0.8329 | 0.7342 | 0.6379 |
Consensus Levels | ||||
---|---|---|---|---|
Scenario classification | 0.7525 | 0.7603 | 0.7323 | 0.7863 |
S | S | M | S | |
A | A | S | A | |
M | M | A | M | |
Groups of “alliances” at each level of consensus | All groups | All groups, except A3 | All groups, except A3 and A4 | All groups, except A2–A6 |
Φ+(a) | Φ−(b) | Intersection | Scenarios | |||||
---|---|---|---|---|---|---|---|---|
0.75 | Hypothesis S | 0.21 | Hypothesis S | 1 | Scenario 1—SUPPLY CHAIN | |||
↓ | ↓ | ↓ | ||||||
0.71 | Hypothesis A | 0.27 | Hypothesis A | 2 | Scenario 2—AGRICULTURE | |||
↓ | ↓ | ↓ | ||||||
0.62 | Hypothesis M | 0.34 | Hypothesis M | 3 | Scenario 3—MARKET |
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Scuderi, A.; La Via, G.; Timpanaro, G.; Sturiale, L. The Digital Applications of “Agriculture 4.0”: Strategic Opportunity for the Development of the Italian Citrus Chain. Agriculture 2022, 12, 400. https://doi.org/10.3390/agriculture12030400
Scuderi A, La Via G, Timpanaro G, Sturiale L. The Digital Applications of “Agriculture 4.0”: Strategic Opportunity for the Development of the Italian Citrus Chain. Agriculture. 2022; 12(3):400. https://doi.org/10.3390/agriculture12030400
Chicago/Turabian StyleScuderi, Alessandro, Giovanni La Via, Giuseppe Timpanaro, and Luisa Sturiale. 2022. "The Digital Applications of “Agriculture 4.0”: Strategic Opportunity for the Development of the Italian Citrus Chain" Agriculture 12, no. 3: 400. https://doi.org/10.3390/agriculture12030400
APA StyleScuderi, A., La Via, G., Timpanaro, G., & Sturiale, L. (2022). The Digital Applications of “Agriculture 4.0”: Strategic Opportunity for the Development of the Italian Citrus Chain. Agriculture, 12(3), 400. https://doi.org/10.3390/agriculture12030400