Big Data Analytics in Supply Chain Management: A Systematic Literature Review and Research Directions
Abstract
:1. Introduction
2. Methodology for Systematic Literature Review of BDA in SCM
2.1. Formation of Research Questions
- RQ1:
- What are theoretical views on the value generation mechanisms of BDA in SCM?
- RQ2.1:
- What are the impacts of BDA on organizational performances?
- RQ2.2:
- What are the impacts of BDA on sustainability?
- RQ3:
- What types of BDA applications, architecture, and infrastructure have been used for different supply chain functions?
- RQ4:
- What are the technical performances of BDA techniques and algorithms?
- RQ5:
- What are the research opportunities and directions for BDA in SCM?
2.2. Locating Studies
2.3. Study Selection and Evaluation
- -
- Relevance to BDA in SCM
- -
- Quality of paper: Theoretical foundations, research design, and implementation.
- -
- Conceptual papers, literature papers, editorials, mathematical papers, or tutorial papers were excluded.
- -
- Multiple papers with similar research models published by the same authors were excluded.
- -
- Articles, the full-text of which were not accessible from the databases, were excluded.
2.4. Analysis and Synthesis
- -
- Full reference including the title of the article, publication year, and journal name
- -
- The author(s)
- -
- Research objectives and questions
- -
- Research themes/subthemes
- -
- Research methods
- -
- Supply chain functions supported by BDA
- -
- Organizational performances/sustainability
- -
- Types of BDA
- -
- Techniques and algorithms
- -
- Architecture and infrastructure
- -
- Technical performances
3. Organizational Perspectives on BDA in SCM
3.1. Organizational Performances
3.1.1. Dynamic Capabilities View
3.1.2. Organizational Information Processing Theory (OIPT)
3.1.3. Resource-Based View
3.2. Sustainability
3.2.1. Dynamic Capabilities View
3.2.2. Stakeholder Theory
3.2.3. Other Theories/Views
3.3. Implementation Challenges
4. Technical Perspectives on BDA in SCM
4.1. Applications of BDA
4.1.1. Descriptive Analytics
4.1.2. Predictive Analytics
4.1.3. Prescriptive Analytics
4.1.4. BDA for SCOR Processes
4.2. Architecture/Infrastructure for BDA
4.2.1. Architecture/Infrastructure for Descriptive Analytics
4.2.2. Architecture/Infrastructure for Prescriptive Analytics
5. Future Research Directions
5.1. Techniques
5.2. Types of Analytics
5.3. Security and Privacy
5.4. Alternative Theoretical Perspectives
5.5. Inter-Organizational Big Data Analytics
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Paper | Topic | Source | Time Frame | Findings |
---|---|---|---|---|
Nguyen et al. [7] | BDA in the SCM | Various digital libraries (Science Direct, Emeralds, IEEE eXplore, Scopus, EBSCO) | 2011–2016 | Examining the areas where BDA is used in SCM, level of analytics used, types of BDA models used, and the techniques used. |
Tiwari et al. [8] | BDA in the SCM | Harzing Publish or Perish software relying on Google Scholar citations | 2010–2016 | Classified research in big data analytics in SCM into definition and benefit; application and exploration; technology and methods. |
Ardito et al. [9] | BDA in business areas that includes SCM using bibliometric analysis | Web of Science | 2012–2017 | Found the following clusters: theoretical development; management transition to BDA; firm resources, capabilities, and performance; and BDA for SCM. |
Chehbi-Gamoura et al. [10] | SCOR model with data analytics in SCM | Harzing Publish or Perish software relying on Google Scholar citations | 2001–2018 | SCOR processes and BDA use across different journals. |
Inamdar et al. [11] | BDA adoption | Web of Science | 2014–2018 | Seven areas of research with most in manufacturing and service. |
Kamble and Gunasekaran [12] | BDA and performance measurement | Scopus | Up to 2018 | Research classified into performance analytics capability and processes. |
Yudhistyra et al. [13] | BDA in logistics and supply chain | Scopus | 2011–2018 | Found changing role of BDA and challenges in BDA. |
Ogbuke et al. [14] | BDA in the SCM | Scopus | 2005–2020 | Qualitative review of 120 articles and identified 7 themes with 14 sub-themes. |
Aamer et al. [15] | Data analytics/machine learning in demand forecasting of SCM | Scopus and Web of Science | 2010–2019 | Identified neural networks, artificial neural networks, regression, and support vector machines as the most widely used algorithm. |
Maheshwari et al. [16] | BDA in SCM/logistics management/inventory management | Web of Science | 2015–2019 | Found various domains such as education, finance, telecom, retail, healthcare, and governance. |
Database | Query | Results |
---|---|---|
Scopus https://www.scopus.com Advanced search | TITLE-ABS-KEY(“supply chain” and “data analytics”) AND (LIMIT-TO (SRCTYPE, “j”)) AND (LIMIT-TO (PUBYEAR, 2021) OR LIMIT-TO (PUBYEAR, 2020) OR LIMIT-TO (PUBYEAR, 2019) OR LIMIT-TO (PUBYEAR, 2018) OR LIMIT-TO (PUBYEAR, 2017) OR LIMIT-TO (PUBYEAR, 2016) OR LIMIT-TO (PUBYEAR, 2015) OR LIMIT-TO (PUBYEAR, 2014) OR LIMIT-TO (PUBYEAR, 2013) OR LIMIT-TO (PUBYEAR, 2012) OR LIMIT-TO (PUBYEAR, 2011)) | 320 articles |
ACM Digital Library https://dl.acm.org/ Advanced search | “query”: {AllField:(“supply chain”) AND AllField:(“data analytics”)} “filter”: {ACM Pub type: Journals, Publication Date: (1 January 2011 TO 31 December 2021), ACM Content: DL} | 39 articles |
IEEE Xplore | (“All Metadata”:supply chain) AND (“All Metadata”:data analytics) Filters Applied: Journals2011–2021 | 30 articles |
Step 1 | Step 2 | Step 3 | Step 4 |
---|---|---|---|
389 articles | 378 articles | 226 articles | 60 articles |
Scopus: 320; ACM Digital Library: 39; IEE Xplore: 30 | Duplicate removal of 11 articles due to duplication among the three databases | Removal of 151 articles without focusing on big data analytics | Removal of 166 articles with inclusion and exclusion criteria; selected 35 management-focused articles and 25 technology-focused articles |
Paper | Purpose | Theories/ Views | Constructs/Sub-Constructs Relevant to the Theories and Views |
---|---|---|---|
Chen et al. [22] | Investigate the impact of organizational BDA usage on business productivity and growth and factors of organizational BDA usage. | Dynamic capabilities | Organizational use of BDA. |
Mandal [23] | Explore the impact of BDA management capabilities on supply chain resilience. | Dynamic capabilities | BDA planning capability, BDA investment decision making, BDA coordination capability, and BDA control. |
Wamba et al. [24] | Investigate the role of BDA-enabled dynamic capability on organizational performance. | Dynamic capabilities | BDA capability: sensing, seizing and reconfiguring. |
Bamel & Bamel [25] | Identify BDA-based enablers for the supply chain capability and establish a hierarchy and interrelationship among the enablers. | Dynamic capabilities | Financial support, people skills, IT infrastructure, and leadership commitment. |
Dubey et al. [26] | Examine the development of BDA capability (BDAC) to improve supply chain agility and achieve competitive advantage. | Dynamic capabilities | BDAC and supply chain agility. |
Gu et al. [27] | Examine the alignment between BDAC and a specific type of procurement strategy and its impact on firm performance. | Dynamic capabilities | BDAC |
Singh and Singh [28] | Examine how firms can develop business risk resilience from supply chain disruption events by developing BDAC. | Dynamic capabilities | IT infrastructure capabilities and BDAC. |
Srinivasan and Swink [29] | Investigate associations between visibility, analytics capability, and flexibility. | Organizational information processing theory | Analytics capability, demand visibility, supply visibility, and organizational flexibility. |
Yu et al. [30] | Investigate the roles of BDAC in hospital supply chain integration and operational flexibility. | Organizational information processing theory | BDAC and three dimensions of hospital supply chain integration (inter-functional integration, hospital–patient integration, and hospital–supplier integration). |
Roßmann et al. [31] | Investigate the impact of BDA on the development of SCM and the organizational role of supply chain managers. | Organizational information processing theory | BDA applications and supply chain transparency. |
Gunasekaran et al. [32] | Investigate the extent to which connectivity and information sharing impact acceptance of big data predictive analytics (BDPA) and assimilation capabilities and the impact of BDPA assimilation on supply chain performance and organizational performance. | Resource-based view | Connectivity and information sharing. |
Shafique et al. [33] | Investigate the relationship between big data predictive analytics (BDPA), radio frequency identification (RFID) technology, and supply chain performance. | Resource-based view | BDPA and RFID technology. |
Fernando et al. [34] | Investigate the effects of BDA, data security, and service supply chain innovation capabilities on services supply chain performance. | Resource-based view | Data security infrastructure and BDA infrastructure. |
Dennehy et al. [35] | Investigate the role of BDAC and organizational mindfulness in resilient supply chains in a disaster response context. | Organizational mindfulness | Preoccupation with failure, reluctance to simplify operations, sensitivity to operations, commitment to resilience, and deference to expertise. |
Lin and Lin [36] | Analyze how the case company develops a global logistics service value-added system. | No specific theory/view | Plan-Do-Check-Action (PDCA) cycle and strategic information systems planning. |
Jha et al. [37] | Identify the factors that assist a company in or inhibit it from building its BDAC. | No specific theory/view | Data management and use of advanced software packages and skilled human resources and training for analytics, intra-organizational power dynamics, global connectedness, and external landscape and analytics capabilities. |
Paper | Purpose | Theories/Views | Constructs/Sub-Constructs Relevant to the Theories and Views |
---|---|---|---|
Dubey et al. [50] | Investigate the effects of BDPA on social performance and environmental performance. | Dynamic capabilities | Technical skills, management skills, organizational learning, and data-driven decision making. |
Bag et al. [51] | Evaluate the role of BDA capability in improving sustainable supply chain performance. | Dynamic capabilities | Talent capabilities and management capabilities. |
Singh and El-Kassar [52] | Investigate the impact of green human resource management practices on the integration of big data technologies with processes. | Dynamic capabilities | Corporate commitment |
Stekelorum et al. [53] | Investigate the impacts of the supplier’s supply chain ambidexterity and BDAC on responsible governance and circular economy practices. | Dynamic capabilities | Supply chain ambidexterity and BDAC. |
Wang et al. [54] | Explore the relationship between corporate social responsibility (CSR), green SCM, and firm performance in the context of BDAC. | Stakeholder theory | Internal CSR and external CSR. |
Gupta et al. [55] | Investigate the impact of BDA on the adoption of the circular economy paradigm. | Stakeholder theory | Mutual support, coordination, and holistic information processing and sharing. |
Bag et al. [56] | Examine the impacts of institutional forces on tangible resources and workforce skills in the development of BDA-artificial intelligence and on sustainable manufacturing practices and circular economy capabilities. | Institutional theory/resource -based view | Institutional pressures (e.g., coercive pressures, normative pressures, and mimetic pressures) and resources (tangible resources and workforce skills). |
AlNuaimi et al. [57] | Investigate the effects of BDAC on e-procurement and environmental performance. | Resource orchestration theory | E-procurement, technological capabilities (data availability and technological infrastructure), and human capabilities (managerial experience and employee skills). |
Mani et al. [58] | Explore the application of BDA in mitigating supply chain social risk. | Knowledge-based View | BDA as a knowledge base |
Benzidia et al. [59] | Evaluate the benefits of BDA-artificial intelligence in the supply chain integration process and its impact on environmental performance. | Organizational information processing theory | BDA-AI technology, green digital learning orientation, environmental process integration, and green supply chain collaboration. |
Raut et al. [60] | Investigate whether BDA acts as a mediator to influence the business performance of a sustainable supply chain when considering lean, agile, resilient, and green aspects. | No specific theory/view | Organizational practices, lean management practices, SCM practices, social practices in supply chain, environmental practices, financial practices, and total quality management. |
Kazancoglu et al. [61] | Evaluate drivers of BDA in the context of food supply chains for transition to a circular economy and sustainable operations management. | No specific theory/view | Drivers of BDA: governmental incentives, information management and technology, management team capability, collaborations between supply chain partners, supply chain visibility, talent management, and data-driven innovation. |
Bag et al. [62] | Identify barriers to BDA in sustainable humanitarian SCM and understand the interrelationships among the barriers. | No specific theory/view | Fifteen barriers to BDA in sustainable humanitarian SCM |
Paper | Purpose | Theories/Views | Constructs/Sub-Constructs Relevant to the Theories and Views |
---|---|---|---|
Lai et al. [67] | Identify factors affecting firms’ intention to adopt BDA. | Diffusion of innovation theory (DOI) and technology–organization–environment (TOE) framework. | Perceived benefits, technology complexity, data quality, IT infrastructure/capabilities, financial readiness, and top management support |
Khan [68] | Propose a framework to address challenges in employing BDA for service supply chains. | The stakeholder theory, resource-based view, transaction cost economics, and systems theory. | The technical, cultural, ethical, operational, tactical, procedural, functional, and organizational challenge. |
Kusi-Sarpong et al. [69] | Propose a framework of risks to implementing BDA within sustainable supply chains. | TOE framework and human–organizational–technological (HOT) framework. | Technological risks. Institutional risks, human risks, and organizational risks |
Kache and Seuring [70] | Identify the potential challenges and opportunities related to BDA at a corporate and supply chain level. | No specific theory | Opportunity constructs: “supply chain visibility and transparency” and “operations efficiency and maintenance” Challenge constructs: “IT capabilities and infrastructure” and “information and cyber security” Opportunity and challenge construct: “integration and collaboration”. |
Moktadir et al. [71] | Identify the critical barriers to the adoption of BDA. | No specific theory | Five most important sub-barriers among 15 identified sub-barriers: (1) lack of infrastructural facility, (2) complexity of data integration, (3) data privacy, (4) lack of availability of BDA tools, and (5) high cost of investment. |
Raut et al. [72] | Identify the obstacles to BDA implementation in the context of the Indian manufacturing supply chain. | No specific theory | Top 4 most critical barriers: “lack of top management support”, “lack of financial support”, “lack of skill”, and “lack of techniques or procedures”. |
Paper | Purpose | SCOR Process | Types of Analytics | Techniques/ Algorithms |
---|---|---|---|---|
Brandtner et al. [73] | Investigate the impact of COVID-19 on the customer end of retail supply chains in physical grocery shopping in Austria. | Deliver | Descriptive analytics | Descriptive statistics and categorization techniques with text mining. |
Egilmez et al. [74] | Develop an analytical sustainability assessment framework to assess the carbon footprint of US economic supply chains. | Source, make, and deliver | Descriptive analytics | Data visualization, I-O analysis and lifecycle assessment (LCA), and statistical approaches. |
Chae [75] | Explore the use of Twitter for supply chain practices. | All processes of SCOR | Descriptive analytics | Text analysis, sentiment analysis, descriptive statistics, network analysis, and visualization. |
Keller et al. [76] | Investigate the use of data mining techniques for filtering and aggregating raw RFID data. | Deliver | Predictive analytics | Logistic regression, decision trees, artificial neural networks, and rule-based classifier. |
Kinra et al. [77] | Explore the potential for the development of an automated textual BDA approach that can provide country logistics performance assessments. | Deliver | Predictive analytics | A mix of supervised keyword analysis, unsupervised word frequency analysis, and collocation analysis, and naive Bayes classifier for text classification. |
Wang et al. [78] | Develop an online supply chain financial credit risk assessment index system for a commercial bank to evaluate supply chain financial risk. | Enable | Predictive analytics | Nonlinear least-squares support vector machines (LS-SVM) model and logistic regression model. |
Yeboah-Ofori et al. [79] | Integrate cyber threat intelligence and machine learning techniques to predict cyberattack patterns on cyber supply chain systems. | Enable | Predictive analytics | Logistic regression, support vector machine, random forest, and decision tree. |
Scheidt and Chung [80] | Evaluated the efficacy of a customer service quality improvement program that used speech analytics tools at a call center. | Enable | Prescriptive analytics | Statistical analysis and speech recognition. |
Leung et al. [81] | Develop predictive analytics for forecasting near-real-time e-commerce order arrivals at distribution centers. | Deliver | Predictive analytics | An adaptive neuro-fuzzy inference system. |
Iftikhar and Khan [82] | Improve demand forecasting in a supply chain using social media data from Twitter and Facebook. | Plan | Predictive analytics; descriptive analytics | Word analysis, topic modeling using Latent Dirichlet Allocation, Naïve Bayes (NB) algorithm, and support vector machine (SVM) for sentiment analysis. |
Singh et al. [83] | Propose BDA for social media data for the identification of SCM issues in food industries. | Enable | Predictive analytics; descriptive analytics | Sentiment analysis based on SVM, word and hashtag analysis, and hierarchical clustering with p-values using multiscale bootstrap resampling. |
Sathyan et al. [84] | Analyze vehicle attributes and develop a model to forecast the demand. | Plan | Predictive analytics; descriptive analytics | Sentiment analysis and artificial neural network. |
Chang et al. [85] | Develop a predictive model for the efficient detection of environmental violators. | Enable | Predictive analytics; descriptive analytics | Machine learning (clustering algorithm-based), positive and unlabeled learning, long short-term memory, logistic regression, AdaBoost, etc. for comparison purpose. |
Wang et al. [86] | Explore BDA tools for B2B e-commerce customer segmentation. | Plan | Predictive analytics; descriptive analytics | A hybrid model combining recency, frequency, and monetary value (RFM) model, k-means clustering, Naïve Bayes algorithm, and linked Bloom filters. |
Lau et al. [87] | Design a BDA methodology for sentiment analysis to improve sales forecasting. | Plan | Predictive analytics; descriptive analytics | Parallel aspect-oriented sentiment analysis, topic model; sentiment-based sales forecasting linear regression, support vector regression, and the parallel co-evolutionary extreme learning machine. |
Lee [88] | Predict a customer’s purchase time and ship the product to the nearest distribution centers before the customer places the orders online. | Deliver | Prescriptive analytics; predictive analytics | Cluster-based association rule mining and genetic algorithm. |
Zhong et al. [89] | Explore the use of BDA to analyze RFID logistics data and understand behaviors of smart manufacturing objects. | Make | Prescriptive analytics; predictive analytics | Descriptive statistics, and data visualization for trend analysis and key performance. |
Paper | Purpose | SCOR Process | Types of Analytics | Features |
---|---|---|---|---|
Venkatesh et al. [97] | Develop a system architecture that integrates blockchain, internet-of-things (IoT), and BDA to allow sellers to monitor their supply chain social sustainability. | Enable | Descriptive analytics | Five layers of system architecture: smart objects, communication channels, data analysis, blockchain network, and applications. |
Molka-Danielsen et al. [98] | Present a case study on air quality monitoring at two workshops of an on-shore logistics base. | Enable | Descriptive analytics | Smart closed-loop system for work space safety data analytics integrated with wireless sensor network (WSN) technologies. |
Fernández-Caramés et al. [99] | Present an unmanned aerial vehicle (UAV)-based system aimed at automating inventory management and keeping the traceability of industrial items attached to radio-frequency identification (RFID) tags. | Deliver | Descriptive analytics | A UAV with a single-board computer (SBC) and a tag reader, wireless communications interface to a ground station, internal software modules to send the collected information to a decentralized remote storage network or a blockchain. |
Giannakis and Louis [100] | Develop a multi-agent-based supply chain management system that incorporates BDA that can exert autonomous corrective control actions. | Enable | Prescriptive analytics; descriptive analytics; predictive analytics | 5-layered architecture, a multitude of software agents responsible for production processes, a module of agents responsible for supply chain event management, and a module of agents responsible for disruption risk management processes. |
Ivanov and Dolgui [101] | Explore the conditions surrounding the design and implementation of the digital twins for managing disruption risks in supply chains. | Enable | Prescriptive analytics; descriptive analytics; predictive analytics | Disruption data as inputs, reactive recovery plan, and proactive resilient supply chain design. |
Zhan and Tan [102] | Propose an integrated infrastructure for breaking down the information silos. | Enable | Prescriptive analytics; descriptive analytics; predictive analytics | Five main stages: • Stage one: data capture and management • Stage two: data cleaning and integration • Stage three: data analytics • Stage four: competence set analysis—deduction graph • Stage five: information interpretation and decision making. |
Kim et al. [103] | Introduce a PRocess ANAlytics System (PRANAS) which was developed to evaluate the operational performance of supply chain operations. | Enable | Prescriptive analytics; descriptive analytics; predictive analytics | Process warehouse and process cube. |
Er Kara et al. [104] | Develop a data mining-based framework for the identification, assessment, and mitigation of different types of risks in supply chains. | Enable | Prescriptive analytics | Risk data warehouse and data mining module. |
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Lee, I.; Mangalaraj, G. Big Data Analytics in Supply Chain Management: A Systematic Literature Review and Research Directions. Big Data Cogn. Comput. 2022, 6, 17. https://doi.org/10.3390/bdcc6010017
Lee I, Mangalaraj G. Big Data Analytics in Supply Chain Management: A Systematic Literature Review and Research Directions. Big Data and Cognitive Computing. 2022; 6(1):17. https://doi.org/10.3390/bdcc6010017
Chicago/Turabian StyleLee, In, and George Mangalaraj. 2022. "Big Data Analytics in Supply Chain Management: A Systematic Literature Review and Research Directions" Big Data and Cognitive Computing 6, no. 1: 17. https://doi.org/10.3390/bdcc6010017
APA StyleLee, I., & Mangalaraj, G. (2022). Big Data Analytics in Supply Chain Management: A Systematic Literature Review and Research Directions. Big Data and Cognitive Computing, 6(1), 17. https://doi.org/10.3390/bdcc6010017