Introducing Risk Considerations into the Supply Chain Network Design
Abstract
:1. Introduction
- RQ1: What type of risks should be considered when designing an SCN?
- RQ2: What decisions can be made in the SCND to (attempt to) avoid the effects of SC disruptions?
2. Supply Chain Risk: Definition and Classifications
- Sources of risk: elements which have the potential to generate risk, such as natural disasters or man-made events.
- Drivers or triggering events: events whose occurrence can change a particular set of circumstances, e.g., earthquake and labour strikes.
- Consequences: the outcome of an event, e.g., damaged facilities and infrastructure or manufacturing stoppages.
- Probability of occurrence: chance of something happening.
2.1. Risk Sources
2.2. Risk Consequences
3. The SC Network Design Framework with Risk Consideration
3.1. Stage 1: Object, Environment, and Objectives
3.2. Stage 2: Macrostructure
3.3. Stage 3: Mesostructure
3.3.1. Procurement and Production Activities
- P1: Make. Some risks associated with the decision of manufacturing the product in-house are related to:
- ○
- Operational disruptions due to natural or man-made events (HILF risks)
- ○
- Capacity issues
- ○
- Technological obsolescence
- ○
- Design changes
- P2: Suppliers relationships. Supply risk (supplier selection and assessment) should likely be considered as one of the most prolific topics of research in SCRM. For the purpose of this research, regardless of the type of such relationships (number of suppliers, long-term or short-term relationships, etc.), this procurement option can be linked to several risks:
- ○
- Supply disruptions: supplier failure, supplier reliability, supplier quality issues, etc.
- ○
- Knowledge dissemination and intellectual property.
- ○
- Outsourcing risks: supplier reliability, transportation risk, country risk, exchange rate risk, etc.
- P3: Spot markets. When the product acquisition is made in spot markets, several risks might occur:
- ○
- Market shortages and availability of quality supply
- ○
- Price volatility
3.3.2. Distribution Activity
- D1: Drop-shipping strategies. These can be identified as a manufacturer storage with direct shipping and/or in-transit merge. This option provides several benefits (high level of product availability with a lower level of inventory because of inventory centralisation at the manufacturer’s premises and lower inventory needs can be obtained by postponing customisation), however, it also has some drawbacks (higher transport costs, high response times, poor customer service, and difficulty in handling returns), which can generate operational risks such as:
- ○
- Transportation issues related to parcel carriers
- ○
- Centralisation of inventories at the manufacturer can be a risk
- D2: Distributor storage strategies. These require a higher level of inventory (risks related to obsolescence, natural, or man-made events) and generate a higher transportation cost, especially in low population density areas, due to the use of last mile deliveries (although customer pick-up can also be considered). In regard to the operational risks associated with this option, we can highlight:
- ○
- Inventory risks (obsolescence, natural, or man-made events)
- ○
- Transportation issues due to last mile deliveries
- D3: Retail storage with customer pick-up. In this option, inventory is stored locally at retail stores, and customers either walk into the retail store or place an order and pick it up at the retail store. Some risks associated with this option are:
- ○
- Product availability
- ○
- Inventory risks.
3.3.3. Collection and Reprocessing Activities
- C1: OEM collection system. In this option, the collection is made directly by the manufacturer. The risks associated with this option are of the same type as those in the P1 option, i.e., Make of the Procurement and Production Activities:
- ○
- Operational disruptions due to natural or man-made events (HILF risks)
- ○
- Capacity issues
- ○
- Technological obsolescence
- C2: Distributor and retailer collection systems. With this option, the risks identified in the previous option are mitigated by being shared among the components of the distribution network. However, the risk of increased costs may appear due to the lack of economies of scale in the implementation and management of the collection system.
- C3: 3PL providers. In this case, the risks of outsourcing the activity must be evaluated, as mentioned in the P3 option, i.e., identify markets in the Procurement and Production activities.
- R1: Recycling. This option consists of disassembling the collected product, obtaining one or more components that become part of other products (not necessarily of the same type), and depositing the rest in the environment. Exploiting economies of scale is indispensable in making recycling activities economically viable, so uncertainty concerning the supply volume is identified as a major risk [45].
- R2: Remanufacturing. This option consists of disassembling the product and replacing and rebuilding its components at least to the current specification [46]. Issues regarding remanufacturing capacity and quality uncertainties for the collected products can be identified as SC risks.
- R3: Reuse. This option consists of cleaning and commissioning the collected product for reuse. In this option, quality uncertainty and risks involved with storage problems in terms of space, storage conditions, damaged products, and damage in storage (inventory risks) can be identified as potential SC risks [41].
3.4. Stage 4: Microstructure
4. Illustrative Case Study
4.1. Stage 1: Object, Environment, and Objectives
4.1.1. Definition of the Object, Environment, and SC Objectives
4.1.2. Scenario Identification
4.1.3. Risk Identification
4.1.4. Risk Assessment
4.1.5. Redefinition of the Object, Environment, and Objectives
4.2. Stage 2: Macrostructure
4.2.1. Definition of the Macrostructure
4.2.2. Scenario Identification
4.2.3. Risks Identification
4.2.4. Risks Assessment
4.3. Stage 3: Mesostructure
4.3.1. Definition of the Mesostructure
4.3.2. Scenario Identification
4.3.3. Risks Identification
4.3.4. Risks Assessment
4.4. Stage 4: Microstructure
5. Conclusions and Further Research
Author Contributions
Funding
Conflicts of Interest
References
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Category | Criteria | Risks | References |
---|---|---|---|
Risk Resources | SC vulnerability:
|
| [4,13,14,24] |
Entity level and uncertainty:
|
| [2,8,25] | |
Dimensions:
|
| [5] | |
Risk Consequences | Type of consequence:
|
| [12,22,25,29] |
Type of uncertainty:
|
| [14,24,28] | |
Impact and frequency:
|
| [21,26,27,30] |
Risk Description | Risk Sources Criteria | ||
---|---|---|---|
SC Vulnerability | Entity Level | Dimension | |
Failure service level provided by raw material suppliers | External | Organisation | Product |
Contamination and safety of raw material | External | Industry | Environment |
Weather conditions and natural disasters | External | Environment | Environment |
Price of the raw material | External | Environment | Product |
Risk Description | Risk Sources Criteria | ||
---|---|---|---|
SC Vulnerability | Entity Level | Dimension | |
Deficient raw materials quality | External | Organisation | Product/processes |
Inventory contamination | Internal | Organisation/environment | Infrastructure/environment |
Product perishability and damage during distribution | Internal/external | Organisation/environment | Infrastructure/environment |
Market shortages | External | Organisation | Product |
Increase in material costs | External | Environment | Product |
Delivery delays | Internal/external | Organisation | Infrastructure |
Risk Description | Risk Sources Criteria | ||
---|---|---|---|
SC Vulnerability | Entity Level | Dimension | |
Production equipment failures | Internal | Organisation | Infrastructure |
Production staff lack of skills | Internal | Organisation | Human resources |
Noncompliance of service level agreements by providers | External | Organisation | Product |
Market competitor’s growth | External | Industry | Environment |
Lack of knowledge of production processes | Internal | Organisation | Processes |
Product deterioration | Internal/external | Organisation/environment | Infrastructure/environment |
Delivery delays | Internal/external | Organisation | Infrastructure |
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Benedito, E.; Martínez-Costa, C.; Rubio, S. Introducing Risk Considerations into the Supply Chain Network Design. Processes 2020, 8, 743. https://doi.org/10.3390/pr8060743
Benedito E, Martínez-Costa C, Rubio S. Introducing Risk Considerations into the Supply Chain Network Design. Processes. 2020; 8(6):743. https://doi.org/10.3390/pr8060743
Chicago/Turabian StyleBenedito, Ernest, Carme Martínez-Costa, and Sergio Rubio. 2020. "Introducing Risk Considerations into the Supply Chain Network Design" Processes 8, no. 6: 743. https://doi.org/10.3390/pr8060743
APA StyleBenedito, E., Martínez-Costa, C., & Rubio, S. (2020). Introducing Risk Considerations into the Supply Chain Network Design. Processes, 8(6), 743. https://doi.org/10.3390/pr8060743