| Literature DB >> 34840395 |
Masoud Shayganmehr1, Shivam Gupta1, Issam Laguir2, Rebecca Stekelorum3, Ajay Kumar4.
Abstract
Unpredictable natural and man-made disasters highlight importance of humanitarian supply chain (HSC) to serve people and affected areas. The main challenges of applying effective relief operations are creating "swift trust" and "coordination" between aid organizations. Implementation of Industry 4.0 facilitates coordination and swift trust within HSC performance. The study intends to assess the readiness status of swift trust and coordination between stakeholders as well as to recommend the most suitable Industry 4.0 tools for improving relief operations. Firstly, a comprehensive set of critical success factors for implementing Industry 4.0 tools are introduced. The factors are categorized into limited groups using Exploratory Factor Analysis. In the next step, hierarchy fuzzy expert system is designed for assessing the readiness status of swift trust and coordination as well as to suggest the most suitable Industry 4.0 tool for enhancing HSC performance within given case study. The framework was applied for three aid organizations to address the pandemic disease in Iran. The outcome denotes that the organization has the highest readiness in logistic and transparency while information quality received the lowest readiness value. In addition to that, the organization should invest on the development of Industry 4.0 enablers including "Internet of Things and Big Data Analytics". The study extends organizational information process theory within HSC for reaching competitive advantage by information processing. The study suggests theoretical and practical implications by introducing a comprehensive set of critical success factors for implementation of Industry 4.0 and providing practical advice for enhancing HSC performance.Entities:
Keywords: Empirical study; Humanitarian supply chain; Organizational information processing theory; Relief operations
Year: 2021 PMID: 34840395 PMCID: PMC8611642 DOI: 10.1007/s10479-021-04430-4
Source DB: PubMed Journal: Ann Oper Res ISSN: 0254-5330 Impact factor: 4.820
Keywords searching
| Keywords | Quantity |
|---|---|
| “Humanitarian Supply chain” OR "Relief Operations" AND “Industry 4.0” | 2 Papers |
| “Humanitarian Supply chain” OR "Relief Operations" AND “Internet of things” OR “IoT’ | 8 Papers |
| “Humanitarian Supply chain” OR "Relief Operations" AND “Cyber physical system” | 1 Paper |
| “Humanitarian Supply chain” OR "Relief Operations" AND “Cloud computing” | 7 Papers |
| “Humanitarian Supply chain” OR "Relief Operations" AND “Big data” | 7 Papers |
| “Humanitarian Supply chain” OR "Relief Operations" AND “Blockchain” | 1 Paper |
| “Humanitarian Supply chain” OR "Relief Operations" AND “Industry 4.0” | 7 Papers |
| Total | 33 Papers |
Fig. 1The sequence of systematic literature review
The most relevant studies
| Reference | Description | Research methodology | Industry 4.0 pillars | Applied theory | Indicator |
|---|---|---|---|---|---|
| Kumar and Singh ( | The study investigated the important role of Industry 4.0 for improving coordination within HSC by assigning weight and ranking indicators | Hybrid multi-criteria decision-making methods | Big data IoT Cyber physical-security Cloud computing | System theory and resource-based view | System architecture Cross functional teams System integration Resource management Financial supply chain Strategic planning Mechanism for coordination Data processing and sharing Training Local communities Real-time data Traceability Swift trust Needs assessment Logistic automation |
| Sharma and Joshi ( | The study has investigated the potential risk of application of big data analytics within HSC | Systematic literature review | Big data analytics | None | None |
| Rodriguez-Espindola et al. ( | The research proposed a framework for facilitating flow of information by applications of three disruptive technologies | Case study analysis | Artificial intelligence 3D printing Blockchain | None | Information accuracy Procurement process Budget and accountability |
| Nagendra et al. ( | The research explored how satellite big data analytics improve the real-time data and accuracy of data in relief operations during disaster | Case study analysis | Big data analytics | None | None |
| Dubey et al. ( | The study highlighted the significant role of blockchain on enhancing swift trust and further collaboration between supply chain actors in HSC for reaching higher resilience after the outbreak of disaster | Hypothesis testing | Blockchain | OIP and relational view theory | Transparency Swift trust Collaboration Supply chain resilience |
| Bag et al., ( | The research determined the most critical barriers in implementing big data analytics system for better coordination between HSC actors. The study determined the association between the barriers | Fuzzy total interpretive structural modeling (TISM) | Big data analytics | None | Poor management Multiple formats Lack of skills Training Complexity Fear of new technology Infrastructure readiness Employee's mindsets Organization culture New employee development Modern management practices Poor infrastructure Quality information Public and private partnership Funding |
| Sinha et al. ( | The study assessed the critical role of IoT in meeting HSC requirement | Hypothesis testing | IoT | None | Situational awareness Consistency Reliability Monitoring Miscellaneous |
| Jeble et al. ( | The research determined the important role of big data analytics and social capital on the improvement of HSC | Systematic literature review | Big data analytics | Resource-based view and social capital theories | Basic resources Data Technology Tech skills Management skills Culture Organizational learning Trust Social norms Participation Network |
| Gupta et al. ( | The research conducted extensive literature review to identify relevant studies exploring the significant role of big data on HSC | Systematic literature review | Big data analytics | Organizational theory | Humanitarian logistic Remote sensing Information security Social media |
| Dubey et al. ( | The research explored the significant role of big data analytics in increasing swift trust and collaboration within HSC | Hypothesis testing | Big data analytics | OIP theory | Flexible orientation Control orientation Swift trust Collaborative performance |
| Prasad et al. ( | The research identified how big data can exert more power to responsible companies to better coordinate relief actions | Case methodology | Big data analytics | Resource dependence theory | None |
| Dubey et al. ( | The study highlighted the important role of big data analytics in improving coordination under shadow of swift trust | Hypothesis testing | Big data analytics | Contingent resource-based view theory | Basic resource Data Technology Technical skills Management skills Organizational skills Organizational learning |
| Schniederjans et al. ( | The study examined the role of cloud computing in increasing collaboration and HSC agility between suppliers | Interview and survey analysis | Cloud computing | Social capital theory Technology acceptance model | Collaboration Inter organizational trust Agility |
Fig. 2The research methodology procedure
Critical success factors for implementation of industry 4.0 tools within HSC
| Factor | Description | References |
|---|---|---|
| System Architecture | It is defined as current system architecture for supporting emerging technologies to be embedded to the current system | Kumar and Singh ( |
| Cross functional team | It is defined as employing multi-skilled people to meet the requirement of affected people in early time of disaster | Franke et al. ( |
| System integration | It is referred to vertical and horizontal integration of existing system in order to decrease delay response | Kumar and Singh ( |
| Financial Transparency | It is defined as providing the transparency of financial records within different aid organizations engaged with HSC | Baharmand et al. ( |
| Strategic planning | It is referred to monitoring the data warehouse items to make sure the traceability of all items from the origin to the destination | Agarwal et al. ( |
| The mechanism for coordination | It is defined as creating a structure and mechanism prior to outbreak of disaster to provide better coordination between stakeholders of HSC | Kumar and Singh ( |
| Effective data processing | It is defined as the ability to conduct meticulous data processing for making better decision | Dubey et al. ( |
| Training support | It is defined as providing sufficient technical and non-technical training for engaged people within relief operations | Baharmand et al. ( |
| Availability of real-time and accurate and consistent data | It is defined as having access to the real-time data of affected areas and people during the disaster operations to make more accurate decision. Moreover, the data should be consistent and precise in order to make better decision | Nagendra et al. ( |
| Traceability | It is referred to tracking the mobility of all items from origin to destination and make sure that the items deliver to the right affected areas and people | Baharmand et al ( |
| Swift trust | It is referred to establishment of trust between stakeholders in order to enhance cooperation immediately after the outbreak of disaster | Baharmand et al ( |
| Warehouse and logistic automation | It is defined as making delivering and warehousing automatic in order to decrease the delay of delivery time to the affected areas | Ellison and Cook ( |
| Budget and accountability | It is referred as managing the stakeholders' responsibility and behavior during the disaster period in order to avoid any potential financial and accountability corruption | Alem et al. ( |
| Supply Chain resilience | It is referred as adaptive ability of supply chain to handle unpredictable disaster and provide necessary resources to the affected areas and population | Polater ( |
| Multiple formats | It is referred to different formats of collected data within the data bases of aid organization. Less variety of formats leads better data integration and better information exchange between stakeholders | Kumar and Singh ( |
| Fear of new technology | Implementation of new technology requires fundamental changes of the current system and recruiting highly skilled people which might raise the fear of employees | Jeble et al. ( |
| Coordination | It is referred as coordinating between aid organizations to have better collaboration and accelerate the services delivery to the affected people and areas | Kumar and Singh ( |
| Organizational culture | It is defined as the common organization's culture to have internal coordination and collaboration to help the affected people and areas. Moreover, it also considers employee's mindset to embrace such new technologies for improving the performance | Kumar and Singh ( |
| Infrastructure | It is defined as organization infrastructure capability to embed the industry 4.0 technologies for better delivery of services to affected area and people | Negi and Negi ( |
| Attract funding | It is referred to the allocated funding for embedding emerging technologies to the existing infrastructure to enhance the service delivery quality | Kumar and Singh ( |
| Organizational learning | Since Industry 4.0 is an emerging technology and is required to experience constant learning, organizational learning is defined as keeping the staff with all required training to enhance their skills for working with the new technologies during the outbreak | Kumar and Singh ( |
| Social Media | It is referred to the use of social media for getting more information regarding the latest status of affected areas and people. Such information is handy and accelerate the HSC performance | Gupta et al. ( |
| Information security | It is defined as keeping people's privacy and avoid abusing such private information. Moreover, data encryption avoids data leakage for further misusing | Patil et al. ( |
| Technical skills | It is referred to required skills for working with emerging technologies in order to make the most advantages of the technologies aiming at enhancing HSC performance | Franke et al. ( |
The demographic information of respondents
| Description | Number | Percentage (%) | |
|---|---|---|---|
| Organization name | A | 34 | 52 |
| B | 21 | 32 | |
| C | 10 | 16 | |
| Gender | Female | 12 | 18 |
| Male | 53 | 82 | |
| Education | Bachelor | 35 | 53 |
| Master | 26 | 40 | |
| PhD | 4 | 7 | |
| Career | Senior manager | 6 | 9 |
| Coordinator | 47 | 72 | |
| General Practitioner | 12 | 18 | |
| Work experience | Less than 5 years | 21 | 32 |
| Between 5 and 10 years | 34 | 52 | |
| More than 10 years | 10 | 16 | |
Fig. 3EFA research methodology procedures
Final results
| Construct | Factors | Loading factor | Variance |
|---|---|---|---|
Logistic (α = 0.756) | Strategic planning | 0.856 | 18.28 |
| Warehousing and logistic | 0.821 | ||
| Mechanism for coordination | 0.801 | ||
| Attract funding | 0.796 | ||
| Budget and accountability | 0.713 | ||
Learning (α = 0.824) | Organizational culture | 0.891 | 17.35 |
| Organizational learning | 0.874 | ||
| Training support | 0.852 | ||
| Cross functional team | 0.823 | ||
| Technical skills | 0.789 | ||
Transparency (α = 0.796) | Traceability | 0.865 | 14.32 |
| Financial transparency | 0.841 | ||
| Social media | 0.823 | ||
Information Quality (α = 0.874) | Availability data processing | 0.836 | 13.63 |
| Information reliability and consistency | 0.811 | ||
| Effective data processing | 0.803 | ||
| Information security | 0.783 | ||
Infrastructure (α = 0.721) | System architecture | 0.897 | 12.32 |
| System integration | 0.856 | ||
| Technical infrastructure | 0.803 | ||
| Cumulative variance |
Fig. 4Fuzzy expert system modules
Fig. 5Hierarchy fuzzy expert systems
The input and output of fuzzy expert systems
| Construct | Input | Output |
|---|---|---|
| Logistics fuzzy expert system | Strategic planning Mechanism for coordination Budget and accountability | Swift trust Coordination Strategic planning Attract funding |
| Learning fuzzy expert system | Training support organizations learning Technical skills Organizational culture | Swift trust Coordination Organization learning Cross functional team |
| Transparency fuzzy expert system | Financial transparency Traceability Social Media | Swift trust Coordination Tracking system |
| Information quality fuzzy expert system | Effective data processing Availability of data processing Information security Information reliability and consistency | Swift trust Coordination Decreasing data format |
| Infrastructure fuzzy expert system | System architecture System integration Technical infrastructure | Swift trust Coordination Integrating between databases |
Fig. 6Membership function of system integration
Readiness value
| Construct | Swift Trust | Linguistic variables | Coordination | Linguistic variables |
|---|---|---|---|---|
| Logistic | (3.8, 4.6,5.4) | High | (3.12, 3.6, 4.2) | High |
| Infrastructure | (0.8, 1.26, 2.3) | Low | (2.2, 2.9, 3.4) | Medium |
| Transparency | (3.4, 4.2, 4.8) | High | (3.2,4.3,5.2) | High |
| Information quality | (0.2, 1.2, 2.3) | Very low | (0.4, 0.8, 2.3) | Very low |
| Learning | (1.8, 3.2, 4.1) | Medium | (2.3, 3.2, 4.6) | Medium |
Fig. 7The readiness status of swift trust and coordination
Practical advice for improving HSC performance
| Construct | Recommended advice |
|---|---|
| Logistic | There is a dire need to attract more funding to improve mechanism coordination for better recognition of responsible aid organizations within relief operations |
| Infrastructure | The aid organizations are required to create integrated databases to improve more data integrity between stakeholders |
| Transparency | The aid organizations should apply tracking system in order to better envision the traceability of items within HSC network as well as online tracking of items from the origin to the destination in order to avoid any potential abuse |
| Information quality | It is highly recommended for the aid organization to work on the data formats and try to provide a single data format in order to provide more compatibility between databases and allowing faster information sharing between stakeholders during the disaster period |
| Learning | It is recommended for the aid organization to work on the organizational learning through equipping the staff and employees with practical workshops aiming at exposing them with the most cutting-edge technologies and decrease the fear of new technologies |
The final outcome of the second layer of hierarchy fuzzy expert system
| Industry 4.0 tools | Fuzzy number | Crisp number | Priority number | Linguistic variable |
|---|---|---|---|---|
| Cloud computing | (1.7, 2.8, 3.9) | 2.76 | 4 | Medium |
| IoT | (5.7, 6.2, 6.9) | 6.31 | 1 | Strongly important |
| Blockchain | (4.1, 5.1, 5.9) | 5.12 | 3 | Important |
| Big data analytics | (5.3, 6.3, 6.7) | 6.11 | 2 | Strongly important |
| Cyber physical system | (0.2, 1.2, 2.9) | 1.29 | 5 | Not strongly important |
Average satisfaction rate
| Construct (first layer) | Average satisfaction (%) | Industry 4.0 tools (second layer) | Average satisfaction (%) |
|---|---|---|---|
| Logistic | 92 | Big data analytics | 88 |
| Infrastructure | 91 | Cloud computing | 86 |
| Transparency | 88 | IoT | 92 |
| Information quality | 96 | Cyber physical system | 90 |
| Learning | 84 | Blockchain | 93 |
Mathematical operations
| No | Operation | Outcome |
|---|---|---|
| 1 | Sum | |
| 2 | Subtraction | |
| 3 | Multiplication | |
| 4 | Positive crisp number (p) multiplication | |
| 5 | Negative crisp number (p) multiplication |