Home-Delivery-Oriented Agri-Food Supply Chain Alliance: Framework, Management Strategies, and Cooperation Stability Control
Abstract
:1. Introduction
2. Literature Review
2.1. AE Market: Opportunities and Challenges
2.2. Strategic Supply Chain Alliance and Cooperation Instability
2.3. Summary
3. Conceptual Development of the HASC Alliance: Organizational Structure and Implementation Strategies
- Which organizational structure can maximize the competence of each entity of the HASC alliance?
- How can the existing supply chain to the end customer be physically extended in the real-world?
- How can a physical distribution system ensure that food quality and safety be established?
- How can the existing supply chain be effectively connected with the extended portion at the management level?
- How can the cooperation stability of the HASC alliance be controlled?
3.1. Organization Structure: Closer Vertical Co-Ordination
3.2. Last-Mile Chain Extension Strategy: Semi-Centralized Extension
3.3. Food Transport Strategy: MTJD Transport System
3.4. Production/Distribution Control Strategy: Hybrid Push-Pull Control
4. Cooperation Stability: Model of the HASC Alliance
4.1. System Dynamics Model
4.1.1. Model Development
4.1.2. Influence Subsystem
- Environment. Any change in the natural and social environment affects the cooperation stability of the alliance. The natural factors are those that are not intentionally created by humans but can directly or indirectly influence human life, such as natural disasters. Due to the difficulty in data collection, we did not consider natural factors in this paper. We considered the environmental factors that are related to human economic activity and society because these factors are closely related to the development of the HASC alliance and are thus deemed internal factors of the HASC cooperation system. Based on previous studies [114,115,116,117,118,119,120,121,122,123], we selected the following factors: public policy (POL), economic situation (ECO), market fluctuations, including market demand fluctuation (MDF) and market price fluctuation (MPF), regional traffic accessibility (RTA), and consumer requirement, including timeliness requirement (TR) and freshness requirement (FR).
- Membership. Zineldin and Dodourova [124] found that cooperation motivation can significantly influence the stability of membership at the early stage of cooperation. Such motivation is associated with the resistance of internal staff (RIS), leadership (LEA), and capacity structure of the company (CS) [125,126]. Moreover, the design of the cooperation contract would also affect the stability of membership among the entities of the HASC alliance. The partners may be especially concerned about rationality and equity [75,127]. Therefore, the following factors were selected: rationality of labor distribution (RLD), rationality of benefit distribution (RBD), information symmetry (IS), and individual opportunism (IO). The study also considered the previous connection (PC) and expected cost for cooperation (EC), as they significantly influence individual opportunism.
- Relationship. In an alliance, many relationships exist among different participant companies, divisions, and members with respect to information, finance, and other exchange levels [128]. The interface management approach has been put forward to analyze such complex relationships. Three principle interfaces, i.e., material interface, information interface, and management interface, were investigated [14]. According to the literature, delivery delay rate (DDR) is the most important factor that affects the stability of the material interface [129]; trust (TRU), coordinating mechanism (CM), and exchange mechanism (EM) are the main influencing factors of information interface stability [73,130]; cultural tolerance (CT) and goal congruence (GC) are the key factors of management interface stability [131,132,133]. Additionally, information symmetry (IS), rationality of labor distribution (RLD), rationality of benefit distribution (RBD), and individual opportunism (IO) all have a significant impact on the relationship stability.
4.1.3. Performance Appraisal Subsystem
4.1.4. Stability Control Subsystem (Strategies)
4.1.5. Total System Model
4.2. Data Preparation
4.3. Simulation Results
4.3.1. Stability Tendency of Cooperation System
4.3.2. Effectiveness Analysis of Control Strategies
4.3.3. Impact of Change in Factors on Cooperation Stability
4.3.4. Sensitivity Analysis of Control Strategies Cost
5. Implications and Discussion
6. Conclusions
Author Contributions
Funding
Conflicts of Interest
Appendix A
No. | Equations |
---|---|
1 | Environmental stability = INTEG (Control Rate1-Unblance Rate1, 0) |
2 | Unbalance Rate1 = RTA × 0.1424 + Costumer Requirement × 0.2848 + Market Fluctuation × 0.2992 + ECO × 0.1344 + POL × 0.1392 |
3 | Control Rate1 = DELAY3I (CMS × 0.6 + EFCS × 0.4, 3, 0) |
4 | Market Fluctuation = MPF × 0.4 + MDF × 0.6 |
5 | Costumer Requirement = (TR + FR)/2 |
6 | MDF = PULSE TRAIN (0, 0.3, 1.5, 60) |
7 | TR = WITH LOOKUP (Time, [(0, 0) − (60, 1)], (0, 0.8), (3, 0.79), (6, 0.78), (12, 0.76), (18, 0.73), (30, 0.7), (60, 0.7)) |
8 | Membership Stability = INTEG (Control Rate2-Unblance Rate2, 0) |
9 | Unbalance Rate2 = RIS × 0.1064 + IO × 0.2482 + CS × 0.1182 + LEA × 0.1359 + RBD × 0.1477 + IS × 0.1211 + RLD × 0.1226 |
10 | Control Rate2 = DELAY3I (MMS × 0.5 + PMS × 0.3333 + RMS × 0.1667, 3, 0) |
11 | IO = 0.3333 × PC × (0.5 − RAMP (0.008, 0, 60)) + EC × 0.6667 × (RAMP (0.008, 0, 60)) |
12 | RIS = WITH LOOKUP (Time, ([(0, 0) − (60, 1)], (0, 0.5), (3, 0.495), (6, 0.48), (9, 0.45), (12, 0.41), (15, 0.4), (18, 0.39), (21, 0.385), (24, 0.38), (60, 0.35)) |
13 | IS = WITH LOOKUP (Time, ([(0, 0) − (60, 1)], (0, 0.15), (7, 0.17), (15, 0.2), (23, 0.25), (30, 0.34), (37, 0.46), (45, 0.55), (52, 0.6), (60, 0.63)) |
14 | Relationship Stability = INTEG (Control Rate3-Unblance Rate3, 0) |
15 | Unbalance Rate3 = TRU × 0.0902 + CT × 0.0708 + CM × 0.1247 + GC × 0.0892 + RLD × 0.0789 + DDR × 0.0844 + IO × 0.1629 + IS × 0.0795 + RBD × 0.096 + EM × 0.1236 |
16 | Control Rate3 = DELAY3I (MMS × 0.1667 + PMS × 0.3333 + RMS × 0.5, 3, 0) |
17 | EM = WITH LOOKUP(Time, ([(0, 0.4) − (60, 1)], (0, 0.5), (3, 0.45), (6, 0.43), (9, 0.46), (12, 0.482), (15, 0.5), (18, 0.482), (21, 0.478), (24, 0.48), (27, 0.53), (30, 0.561), (33, 0.583), (36, 0.574), (39, 0.587), (42, 0.579), (45, 0.592), (48, 0.618), (51, 0.61), (54, 0.632), (57, 0.661), (60, 0.682)) |
18 | DDR = WITH LOOKUP (Time, ([(0, 0) − (60, 1)], (0, 0.5), (1, 0.49), (2, 0.485), (3, 0.47), (6, 0.45), (9, 0.42), (13, 0.4), (18, 0.39), (24, 0.38), (31, 0.37), (60, 0.35)) |
19 | TRU = WITH LOOKUP (Time, ([(0, 0) − (60, 1)], (0, 0.2), (6, 0.21), (12, 0.23), (18, 0.26), (24, 0.29), (30, 0.33), (36, 0.36), (42, 0.38), (60, 0.45)) |
20 | CM = WITH LOOKUP (Time, ([(0, 0.4) − (60, 1)], (0, 0.5), (3, 0.45), (6, 0.43), (9, 0.461), (12, 0.482), (15, 0.5), (18, 0.482), (21, 0.478), (24, 0.48), (27, 0.531), (30, 0.561), (33, 0.583), (36, 0.575), (39, 0.587), (42, 0.579), (45, 0.592), (48, 0.618), (51, 0.611), (54, 0.632), (57, 0.661), (60, 0.682)) |
21 | EFCS = RANDOM NORMAL (0.3, 1, 1, 1, 1) × The Gap with Expected Performance |
22 | CMS = RANDOM NORMAL (0.9, 1, 1) × (The Gap with Expected Performance ^ (0.8) + 0.4) |
23 | MMS = RANDOM NORMAL (0.8, 1.2, 4) × (The Gap with Expected Performance ^ (0.7) + 0.3) |
24 | PMS = RANDOM NORMAL (0, 0.8, 0.4, 1, 0) × The Gap with Expected Performance |
25 | RMS = RANDOM NORMAL (0.2, 0.8, 1) × (The Gap with Expected Performance ^ (0.7) + 0.3) |
26 | The Gap with Expected Performance = Expected Performance–Performance of HASC Alliance |
27 | Performance of HASC Alliance = ((BEN + SQ + SAI + HDOP)/4) + Cooperation Stability of HASC Alliance × 0.2 − Cost of Control Strategies |
28 | Cost of Control Strategies = (EXP ((Control Rate1 + Control Rate2 + Control Rate3)/3)) × 0.36 |
29 | Cooperation Stability of HASC Alliance = (Environmental stability × 0.25 + Membership Stability × 0.3 + Relationship Stability × 0.3) − Cost of Control Strategies × 0.15 |
30 | BEN = (TC + PR)/2 |
31 | SQ = (SR + CT + NC)/3 |
32 | SAI = (KSR + PPI)/2 |
33 | HDOP = (TRH + IR + EVR + FDR + OFR)/5 |
Subsystem | Factor | Description | Weight | Initial Value |
---|---|---|---|---|
Cooperative environment | POL | Public Policy | 0.139 | 0.6 |
ECO | Economic Situation | 0.134 | 0.3 | |
MF | Market Fluctuation | 0.299 | - | |
MDF | Market Demand Fluctuation | 0.6 | 0.79 | |
MPF | Market Price Fluctuation | 0.4 | 0.3 | |
RTA | Regional Traffic Accessibility | 0.142 | 0.9 | |
CR | Consumer Requirements | 0.285 | - | |
TR | Timeliness Requirement | 0.5 | - | |
FR | Freshness Requirement | 0.5 | 0.9 | |
Membership factor | IO | Individual Opportunism | 0.248 | - |
EC | Expected Cost | 0.667 | 0.85 | |
PC | Previous Contraction | 0.333 | 0.85 | |
RLD | Rationality of Labor Distribution | 0.123 | 0.78 | |
IS | Information Symmetry | 0.121 | - | |
RBD | Rationality of Benefit Distribution | 0.148 | 0.84 | |
CS | Capacity Structure | 0.118 | 0.67 | |
LEA | Leadership | 0.136 | 0.75 | |
Relationship factor | RIS | Resistance of Internal Staff | 0.106 | - |
IO | Individual Opportunism | 0.163 | - | |
EC | Expected Cost | 0.667 | 0.85 | |
PC | Previous Contraction | 0.333 | 0.85 | |
RLD | Rationality of Labor Distribution | 0.079 | 0.78 | |
IS | Information Symmetry | 0.08 | - | |
RBD | Rationality of Benefit Distribution | 0.096 | 0.84 | |
DDR | Delivery Delay Rate | 0.084 | - | |
CT | Cultural Tolerance | 0.071 | 0.79 | |
GC | Goal Congruence | 0.089 | 0.85 | |
TRU | Trust | 0.09 | - | |
CM | Coordinating Mechanism | 0.125 | - | |
EM | Exchange Mechanism | 0.124 | - |
Appendix B
Score | 1 | 2 | 3 | 4 | 5 | ||||
Magnitude | Very slight | Slight | Average | Heavy | Very important | ||||
Factors | Meaning | Category | Level | ||||||
1 | 2 | 3 | 4 | 5 | |||||
Policy | The policies promulgated by the government for promoting the development of agri-food e-commerce and supporting the business of related enterprises. | Environment | |||||||
Economy | Local macroeconomic conditions and average household economic state. | ||||||||
Accessibility | The accessibility of local traffic network (including spatial and temporal accessibility). | ||||||||
Market | The conditions of the whole agri-food market, including price, demand, competition, and so on. | ||||||||
Customer | The customer’s demand and acceptance of the services that are provided by e-business. | ||||||||
Price fluctuation | The fluctuation of agri-food price. | Environment (Market) | |||||||
Demand fluctuation | The fluctuation of agri-food demand. | ||||||||
Timeliness requirement | Customer’s requirement for timeliness. | Environment (Customer) | |||||||
Freshness requirement | Customer’s requirement for food freshness. | ||||||||
Resistance from internal staff | Whether the internal staff of a company has opposite opinions on the decision to join the alliance. | Membership | |||||||
Capacity structure (structure of ability) | The elements that constitute the capability of the company and how they are related to each other. | ||||||||
Leadership | The abilities or qualities the leaders of each member company have, especially in the aspect of making decisions related to alliance business. | ||||||||
Individual (company’s) opportunism | The behaviors of a company that takes advantage of any situation, often with no regard for principles or consequences | Membership/Relationship | |||||||
Rationality of benefit distribution | Whether the alliance fairly distributes benefits to each member company in accordance with its contribution. | ||||||||
Rationality of labor distribution | Whether the alliance reasonably assigns the work to each member company according to its competence. | ||||||||
Information symmetry | Whether the companies are able to obtain the same information about any activities of the alliance and market. | ||||||||
Delivery delay rate | The rate at which the downstream companies in the chain unsuccessfully deliver the goods in time (schedule) to their upstream partners. | Relationship | |||||||
Cultural tolerance | How much the participant companies are willing to accept or tolerate each other, especially when encountering opinions or behaviors that may not be shared by the others. | ||||||||
Goal congruence | Whether the goals of companies in the alliance are similar or fit together well. | ||||||||
Coordinating mechanism | Given the complex relationship between members of an alliance, a series of regulations, rules, and provisions are made to coordinate the relations of member companies. | ||||||||
Exchange mechanism | To ensure the unhindered communication within the alliance, a series of regulations, rules, and provisions are made. | ||||||||
Trust | How much do the member companies trust each other? | ||||||||
Expected cost | The cost that the company expected for joining the alliance. | Membership/Relationship (Individual opportunism) | |||||||
Previous connection | The degree to which partners know each other before forming a cooperative alliance. |
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Variable | Description | Frequency | Percentage |
---|---|---|---|
Gender | Male | 155 | 52.01% |
Female | 143 | 47.99% | |
Age | 18–30 | 161 | 54.03% |
30–39 | 42 | 14.09% | |
40–49 | 42 | 14.09% | |
50–59 | 38 | 12.75% | |
≥60 | 15 | 5.03% | |
Education | Below high school degree | 54 | 18.12% |
High school degree | 39 | 13.09% | |
Bachelor’s degree | 113 | 37.92% | |
Graduate degree | 38 | 12.75% | |
Post-graduate degree | 54 | 18.12% | |
Employment | Workers | 108 | 36.24% |
Students | 91 | 30.54% | |
Part-time | 20 | 6.71% | |
Self-employed | 34 | 11.41% | |
Retired | 33 | 11.07% | |
Other | 12 | 4.03% | |
Family status | Live alone | 110 | 36.91% |
Couple without children | 73 | 24.50% | |
Couple with children | 81 | 27.18% | |
Other | 34 | 11.41% | |
Income (RMB per month) | Low (<3000) | 139 | 46.64% |
Low to mid (3000–6000) | 107 | 35.91% | |
Mid (6000–9000) | 32 | 10.74% | |
Mid to high (9000–12,000) | 15 | 5.03% | |
High (>12,000) | 5 | 1.68% |
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Han, C.; Pervez, A.; Wu, J.; Shen, X.; Zhang, D. Home-Delivery-Oriented Agri-Food Supply Chain Alliance: Framework, Management Strategies, and Cooperation Stability Control. Sustainability 2020, 12, 6547. https://doi.org/10.3390/su12166547
Han C, Pervez A, Wu J, Shen X, Zhang D. Home-Delivery-Oriented Agri-Food Supply Chain Alliance: Framework, Management Strategies, and Cooperation Stability Control. Sustainability. 2020; 12(16):6547. https://doi.org/10.3390/su12166547
Chicago/Turabian StyleHan, Chunyang, Amjad Pervez, Jingqiong Wu, Xiaojing Shen, and Dezhi Zhang. 2020. "Home-Delivery-Oriented Agri-Food Supply Chain Alliance: Framework, Management Strategies, and Cooperation Stability Control" Sustainability 12, no. 16: 6547. https://doi.org/10.3390/su12166547
APA StyleHan, C., Pervez, A., Wu, J., Shen, X., & Zhang, D. (2020). Home-Delivery-Oriented Agri-Food Supply Chain Alliance: Framework, Management Strategies, and Cooperation Stability Control. Sustainability, 12(16), 6547. https://doi.org/10.3390/su12166547