| Literature DB >> 32837820 |
Maureen S Golan1, Laura H Jernegan1, Igor Linkov2.
Abstract
The increasingly global context in which businesses operate supports innovation, but also increases uncertainty around supply chain disruptions. The COVID-19 pandemic clearly shows the lack of resilience in supply chains and the impact that disruptions may have on a global network scale as individual supply chain connections and nodes fail. This cascading failure underscores the need for the network analysis and advanced resilience analytics we find lacking in the existing supply chain literature. This paper reviews supply chain resilience literature that focuses on resilience modeling and quantification and connects the supply chain to other networks, including transportation and command and control. We observe a fast increase in the number of relevant papers (only 47 relevant papers were published in 2007-2016, while 94 were found in 2017-2019). We observe that specific disruption scenarios are used to develop and test supply chain resilience models, while uncertainty associated with threats including consideration of "unknown unknowns" remains rare. Publications that utilize more advanced models often focus just on supply chain networks and exclude associated system components such as transportation and command and control (C2) networks, which creates a gap in the research that needs to be bridged. The common goal of supply chain modeling is to optimize efficiency and reduce costs, but trade-offs of efficiency and leanness with flexibility and resilience may not be fully addressed. We conclude that a comprehensive approach to network resilience quantification encompassing the supply chain in the context of other social and physical networks is needed to address the emerging challenges in the field. The connection to systemic threats, such as disease pandemics, is specifically discussed. © This is a U.S. Government work and not under copyright protection in the US; foreign copyright protection may apply 2020.Entities:
Keywords: COVID; Epidemics; Policy; Resilience; Risk; Supply chain
Year: 2020 PMID: 32837820 PMCID: PMC7261049 DOI: 10.1007/s10669-020-09777-w
Source DB: PubMed Journal: Environ Syst Decis ISSN: 2194-5411
Summary of reviewed supply chain resilience literature reviews
| Paper | Uses NAS definition of resilience, or equivalent | Addresses SC modeling/simulation | Addresses SC dependency on other networks | Addresses metrics for resilience | Addresses disruption modelling | Includes geographic analysis |
|---|---|---|---|---|---|---|
| Bogataj and Bogataj ( | No | Yes | Yes | No | No | No |
| Gligor et al. ( | Yes (P&H 2009) | No | No | No | No | No |
| Hosseini et al. ( | Yes/No go through resilience definition, but then make a new concept called "resilience capacity" | Yes | Yes | Yes | Yes | Yes (contributing authors/organizations) |
| Namany et al. ( | No | Yes | Yes | No | No | No |
| Oliveira et al. ( | Yes, list a lot of author definitions, including P&H, only barely say "plan" | Yes | Yes | No | No | Yes (first author/organization) |
| Panetto et al. ( | No | Yes | Yes | No | Yes | No |
| Bak ( | No | Yes | No | No | No | Yes (countries studied and authors/organizations) |
| Behzadi et al. ( | No | Yes | Yes | Yes | Yes | No |
| Ciccullo et al. ( | No | Yes | No | No | No | No |
| Deprá et al. ( | No | No | No | No | No | No |
| Dolgui ( | No | Yes | No | No | Yes | No |
| Ivanov ( | No | Yes | Yes (C2 only) | No | Yes | No |
| Pinho de Lima et al. ( | Yes (use P&H and others collectively) | No | No | No | No | Yes (regions studied and authors/organizations) |
| Ribeiro and Barbosa-Povoa ( | Yes (readiness, response, recovery, growth) | Yes | Yes (C2 only) | Yes | Yes | Yes (corresponding author/organization) |
| Stone and Rahimifard ( | Yes | Yes (very minorly) | No | Yes | No | No |
| Ali et al. ( | Yes | No | No | No | Yes | No |
| Datta ( | Yes | Yes | No | No | Yes | No |
| Fassam and Dani ( | No | No | No | No | No | No |
| Graça and Camarinha-Matos ( | No (absorb and recover only) | Yes | Yes (C2 only) | Yes | No | No |
| Ivanov ( | No | Yes | No | Yes | Yes | No |
| Linnenluecke ( | No | No | No | No | No | No |
| Rajagopal et al. ( | No | Yes | Yes (C2 only) | No | Yes | No |
| Smart et al. ( | No | No | No | No | No | Yes (first author/organization) |
Fig. 1Share of supply chain publications discussing resilience (a) and share of resilience publications discussing supply chains (b) from WOS April 30, 2020 topic searches. Data for 2019 may be incomplete
Citation requirements to ensure only significant articles included for review resulted in
| Year of publication | Number of citations required | Original WOS | Publications with citation minimum |
|---|---|---|---|
| 2019 | 2 | 220 | 53 |
| 2018 | 4 | 233 | 87 |
| 2017 | 5 | 165 | 80 |
| Total | – | 618 | 220 |
Fig. 2Search Process in Web of Science (WOS)
Fig. 3Reviewed Articles by Year (2019 may be underrepresented due to requirements of two citations per paper and incomplete paper representation given January 2020 search time)
Number of articles reviewed addressing each category
| 2017–2019 | 2007–2016 | |||
|---|---|---|---|---|
| Resilience characteristics | Plan | Uses NAS phase of resilience | 65 | |
| Absorb | Uses NAS phase of resilience | 67 | ||
| Recover | Uses NAS phase of resilience | 72 | ||
| Adapt | Uses NAS phase of resilience | 54 | ||
| Resilience Metric or “Proxy” | Numeric measure of resilience, separate from network characteristica | 45 | ||
| Supply chain model representation | Linear | Unidirectional and no path options | 10 | |
| Branching | Unidirectional with path options | 29 | ||
| Graph | Multi-directional with path options | 38 | ||
| Otherb | Different enough to not classify as the others | 17 | ||
| Transportation model representation | None | Disruptions only within SC nodes | 50 | |
| Same as SC | SC links can be disrupted | 10 | ||
| Independent Links | Independent network for each SC link | 28 | ||
| Graph | Can be adjusted dynamically—SC nodes placed on a single transportation network | 5 | ||
| Other | Different enough to not classify as the others | 2 | ||
| Command and control representation | None/Pre-determined | Decisions on production and movement will not change | 20 | |
| If–then/Heuristic | Discrete, deterministic and simple rules for decision at each SC node; explicit guidance for managerial implications presented | 18 | ||
| Agent Based | Probabilistic and/or complex made by multiple independent actors | 13 | ||
| Optimization | Optimization algorithm employed to ensure "best" decisions made | 38 | ||
| Other | Different enough to not classify as the others | 6 | ||
| Disruption representation | Case Study | Real world circumstances used to model disturbances | 44 | |
| Set List | Pre-determined list of disturbances generated | 10 | ||
| Monte Carlo | Disturbances randomly generated | 11 | ||
| Targeted | Adversarial algorithm used to generate disturbances | 5 | ||
| None/Other | Different enough to not classify as the others | 25 | ||
aIn the 2017–2019 review, “proxy” was added as a way to differentiate between the numeric measure of supply chain resilience and other factors being used to measure supply chain resilience (e.g., disruption cost, product depreciation, time to receive a good, etc.). Of the 45 publications shown to contain a metric, 24 are considered proxy
bIn the 2017–2019 review, “other” encompasses supply chain models that focus more on resilience of the network within external contexts, as opposed to strict definitions and traditional graphic models of supply chains. Of the 17 publications considered other, 9 are considered to model supply chain resilience in relation to other networks, rather than within itself
Fig. 4a Percentage of reviewed publications within each category compared across three time periods (blue = 2007–2016 normalized by 47 (Mersky et al 2020), red = 2017–2019 normalized by 94, and orange = 2007–2019 normalized by 141). b Percentage of reviewed publications that reverence all 4 characteristics, 3, 2, 1, or 0 characteristics defined by NAS (blue = 2007–2016 normalized by 47 (Mersky et al 2020), red = 2017–2019 normalized by 94, and orange = 2007–2019 normalized by 141)
Fig. 5Percentage of reviewed publications within each category compared across three time periods (blue = 2007–2016 normalized by 47 (Mersky et al 2020), red = 2017–2019 normalized by 94, and orange = 2007–2019 normalized by 141)
Fig. 6Percentage of reviewed publications within each category compared across three time periods (blue = 2007–2016 normalized by 47 (Mersky et al 2020), red = 2017–2019 normalized by 94, and orange = 2007–-2019 normalized by 141)
Fig. 7Percentage of reviewed publications within each category compared across three time periods (blue = 2007–2016 normalized by 47 (Mersky et al 2020), red = 2017–2019 normalized by 94, and orange = 2007–2019 normalized by 141)
Fig. 8Percentage of reviewed publications within each category compared across three time periods (blue = 2007–2016 normalized by 47 (Mersky et al. 2020), red = 2017–2019 normalized by 94, and orange = 2007–2019 normalized by 141)
Fig. 9Share of Supply Network Publications Discussing Resilience from WOS April 30, 2020 topic searches. Data for 2019 may be incomplete
Fig. 10Geo-economic representation of supply chain resilience papers by industry
Examples of sub-industries examined within each primary industry
| # of Publications | Primary industry | Sub-industries |
|---|---|---|
| 23 | Manufacturing | Chemicals, electronics, electric & combustion vehicles, glass, wood and paper, mining equipment, aerospace, telecommunications |
| 10 | Food & Agriculture | Citrus, kiwifruits, fisheries, dairy, tomato sauce, wine, spirit drinks, parmesan cheese, meat, rice |
| 7 | Energy | Liquified petroleum gas, transportation energy, motor fuel, biofuel, crude oil |
| 4 | Logistics | Port and maritime management, port-hinterland container transport, shipping, indigenous land, third party |
| 2 | Health Care | Pharmaceuticals, blood |
| 2 | Utilities | Solar PV, gas, water, electric |
| 2 | Metals & Mining | Rare earth metals, tantalum |
| 1 | Disaster Relief | N/A |
| 1 | Textiles | Apparel |
| 6 | Multiple | N/A (papers examined more than one of the industries discussed above) |