9,216
Views
143
CrossRef citations to date
0
Altmetric
Reviews

Big data-driven supply chain performance measurement system: a review and framework for implementation

&
Pages 65-86 | Received 05 Sep 2018, Accepted 27 Apr 2019, Published online: 17 Jun 2019

References

  • Akter, S., S. F. Wamba, A. Gunasekaran, R. Dubey, and S. J. Childe. 2016. “How to Improve Firm Performance Using Big Data Analytics Capability and Business Strategy Alignment?” International Journal of Production Economics 182: 113–131. doi:10.1016/j.ijpe.2016.08.018.
  • Ali, A. I., A. Ghoniem, and A. Franke. 2014. “Evaluating Capacity Management Tactics for a Legacy Manufacturing Plant.” Journal of the Operational Research Society 65 (9): 1361–1370. doi:10.1057/jors.2013.82.
  • Anwar, M., S. Z. Khan, and S. Z. A. Shah. 2018. “Big Data Capabilities and Firm’s Performance: A Mediating Role of Competitive Advantage.” Journal of Information and Knowledge Management 17 (4), doi:10.1142/S0219649218500454.
  • Arya, V., P. Sharma, A. Singh, and P. T. M. De Silva. 2017. “An Exploratory Study on Supply Chain Analytics Applied to Spare Parts Supply Chain.” Benchmarking: An International Journal 24 (6): 1571–1580.
  • Arzu Akyuz, G., and T. Erman Erkan. 2010. “SC Performance Measurement: A Literature Review.” International Journal of Production Research 48 (17): 5137–5155.
  • Bag, S. 2017. “Big Data and Predictive Analysis is Key to Superior Supply Chain Performance: A South African Experience.” International Journal of Information Systems and Supply Chain Management 10 (2): 66–84. doi:10.4018/IJISSCM.2017040104.
  • Barbosa, M. W., A. Vicente, M. B. Ladeira, and M. P. Oliveira. 2017. “Managing SC Resources with Big Data Analytics: A Systematic Review.” International Journal of Logistics Research and Applications, 21 (3): 177–200.
  • Barney, J. 1991. “Firm Resources and Sustained Competitive Advantage.” Journal of Management 17 (1): 99–120.
  • Barratt, M., and R. Barratt 2011. “Exploring Internal And External Supply Chain Linkages: Evidence from the Field.” Journal of Operations Management 29 (5): 514–528.
  • Barratt, M., and A. Oke 2007. “Antecedents of Supply Chain Visibility in Retail Supply Chains: A Resource-Based Theory Perspective.” Journal of Operations Management 25 (6): 217–1233.
  • Bauer, K. 2005. “Predictive Analytics: The Next Wave in KPIs.” Information Management Magazine. http://www.informationmanagement.com/issues/20051101/1040476-1.html.
  • Beamon, B. M. 1999. “Measuring SC Performance.” International Journal of Operations & Production Management 19 (3): 275–292.
  • Bock, S., and F. Isik. 2015. “A New Two-Dimensional Performance Measure in Purchase Order Sizing.” International Journal of Production Research 53 (16): 4951–4962. doi:10.1080/00207543.2015.1005769.
  • Bourne, M., J. Mills, M. Wilcox, A. Neely, and K. Platts. 2000. “Designing, Implementing and Updating Performance Measurement Systems.” International Journal of Operations & Production Management 20 (7): 754–771.
  • Brinch, M. 2018. “Understanding the Value of big Data in SC Management and its Business Processes: Towards a Conceptual Framework.” International Journal of Operations & Production Management. doi:10.1108/IJOPM-05-2017-0268.
  • Chadegani, A. A., H. Salehi, and M. Yunus. 2013. “A Comparison Between Two Main Academic Literature Collections: Web of Science and Scopus Databases.” Asian Social Science 9 (5), doi:10.5539/ass.v9n5p18.
  • Chae, B. K. 2015. “Insights From Hashtag SC and Twitter Analytics: Considering Twitter and Twitter Data for SC Practice and Research.” International Journal of Production Economics 165: 247–259.
  • Chae, B. K., and D. L. Olson. 2013. “Business Analytics for Supply Chain: A Dynamic-Capabilities Framework.” International Journal of Information Technology and Decision Making 12 (1): 9–26. doi:10.1142/S0219622013500016.
  • Chae, B. K., D. Olson, and C. Sheu. 2014a. “The Impact of Supply Chain Analytics on Operational Performance: A Resource-Based View.” International Journal of Production Research 52 (16): 4695–4710. doi:10.1080/00207543.2013.861616.
  • Chae, B., C. Yang, D. Olson, and C. Sheu. 2014b. “The Impact of Advanced Analytics and Data Accuracy on Operational Performance: A Contingent Resource Based Theory (RBT) Perspective.” Decision Support Systems 59 (1): 119–126. doi:10.1016/j.dss.2013.10.012.
  • Chan, F. T. 2003. “Performance Measurement in a SC.” The International Journal of Advanced Manufacturing Technology 21 (7): 534–548.
  • Chavez, R., W. Yu, M. A. Jacobs, and M. Feng. 2017. “Data-driven Supply Chains, Manufacturing Capability and Customer Satisfaction.” Production Planning and Control 28 (11-12): 906–918. doi:10.1080/09537287.2017.1336788.
  • Chen, D. Q., D. S. Preston, and M. Swink. 2015. “How the Use of Big Data Analytics Affects Value Creation in SC Management.” Journal of Management Information Systems 32 (4): 4–39.
  • de Oliveira, M. P. V., M. B. Ladeira, and K. McCormack. 2009. “The Statistical Analysis of SCM Process Maturity Levels and Practices.” In 26th German logistics congress, Berlin.
  • de Oliveira, M. P. V., K. McCormack, and P. Trkman. 2012. “Business Analytics in SCs–The Contingent Effect of Business Process Maturity.” Expert Systems with Applications 39 (5): 5488–5498.
  • De Toni, A., and S. Tonchia. 2001. “Performance Measurement Systems-Models, Characteristics and Measures.” International Journal of Operations & Production Management 21 (1/2): 46–71.
  • DeLone, W. H., and E. R. McLean. 1992. “Information Systems Success: The Quest for the Dependent Variable.” Information Systems Research 3 (1): 60–95.
  • DePietro, R., E. Wiarda, and M. Fleischer. 1990. “The Context for Change: Organization.” In Technology and Environment, Vol. 199, 151–175. Lexington, MA: Lexington Books.
  • Fernando, Y., R. R. M. Chidambaram, and I. S. Wahyuni-TD. 2018. “The Impact of Big Data Analytics and Data Security Practices on Service Supply Chain Performance.” Benchmarking: An International Journal 25 (9): 4009–4034. doi:10.1108/BIJ-07-2017-0194.
  • Ghattas, J., P. Soffer, and M. Peleg. 2014. “Improving Business Process Decision Making Based on Past Experience.” Decision Support Systems 59 (1): 93–107. doi:10.1016/j.dss.2013.10.009.
  • Gopal, P. R. C., and J. Thakkar. 2012. “A Review on SC Performance Measures and Metrics: 2000-2011.” International Journal of Productivity and Performance Management 61 (5): 518–547.
  • Gravili, G., M. Benvenuto, A. Avram, and C. Viola. 2018. “The Influence of the Digital Divide on Big Data Generation Within Supply Chain Management.” International Journal of Logistics Management 29 (2): 592–628. doi:10.1108/IJLM-06-2017-0175.
  • Gunasekaran, A., and B. Kobu. 2007. “Performance Measures and Metrics in Logistics and SC Management: A Review of Recent Literature (1995–2004) for Research and Applications.” International Journal of Production Research 45 (12): 2819–2840.
  • Gunasekaran, A., T. Papadopoulos, R. Dubey, S. F. Wamba, S. J. Childe, B. Hazen, and S. Akter. 2017. “Big Data and Predictive Analytics for Supply Chain and Organizational Performance.” Journal of Business Research 70: 308–317. doi:10.1016/j.jbusres.2016.08.004.
  • Gunasekaran, A., C. Patel, and R. E. McGaughey. 2004. “A Framework for Supply Chain Performance Measurement.” International Journal of Production Economics 87 (3): 333–347.
  • Gunasekaran, A., C. Patel, and E. Tirtiroglu. 2001. “Performance Measures and Metrics in a SC Environment.” International Journal of Operations & Production Management 21 (1/2): 71–87.
  • Gunasekaran, A., Y. Y. Yusuf, E. O. Adeleye, and T. Papadopoulos. 2018. “Agile Manufacturing Practices: The Role of Big Data and Business Analytics with Multiple Case Studies.” International Journal of Production Research 56 (1-2): 385–397. doi:10.1080/00207543.2017.1395488.
  • Gupta, M., and J. F. George. 2016. “Toward the Development of a Big Data Analytics Capability.” Information and Management 53 (8): 1049–1064. doi:10.1016/j.im.2016.07.004.
  • Hazen, B. T., J. B. Skipper, J. D. Ezell, and C. A. Boone. 2016. “Big Data and Predictive Analytics for SC Sustainability: A Theory-Driven Research Agenda.” Computers & Industrial Engineering 101: 592–598.
  • Hofmann, E. 2017. “Big Data and SC Decisions: The Impact of Volume, Variety and Velocity Properties on the Bullwhip Effect.” International Journal of Production Research 55 (17): 5108–5126.
  • Huang, Y.-, and R. B. Handfield. 2015. “Measuring the Benefits of ERP on Supply Management Maturity Model: A “big Data” Method.” International Journal of Operations and Production Management 35 (1): 2–25. doi:10.1108/IJOPM-07-2013-0341.
  • Huang, S. H., S. K. Sheoran, and H. Keskar. 2005. “Computer-assisted SC Configuration Based on SC Operations Reference (SCOR) Model.” Computers & Industrial Engineering 48 (2): 377–394.
  • Huang, C. K., T. Wang, and T. Y. Huang. 2018. “Initial Evidence on the Impact of Big Data Implementation on Firm Performance.” Information Systems Frontiers 1–13. doi:10.1007/s10796-018-9872-5.
  • Hwang, Y. D., Y. C. Lin, and J. Lyu Jr. 2008. “The Performance Evaluation of SCOR Sourcing Process—The Case Study of Taiwan's TFT-LCD Industry.” International Journal of Production Economics 115 (2): 411–423.
  • Jain, R., A. R. Singh, H. C. Yadav, and P. K. Mishra. 2014. “Using Data Mining Synergies for Evaluating Criteria at Pre-Qualification Stage of Supplier Selection.” Journal of Intelligent Manufacturing 25 (1): 165–175.
  • Jeble, S., R. Dubey, S. J. Childe, T. Papadopoulos, D. Roubaud, and A. Prakash. 2018. “Impact of Big Data and Predictive Analytics Capability on Supply Chain Sustainability.” International Journal of Logistics Management 29 (2): 513–538. doi:10.1108/IJLM-05-2017-0134.
  • Ji-fan Ren, S., S. Fosso Wamba, S. Akter, R. Dubey, and S. J. Childe. 2017. “Modelling Quality Dynamics, Business Value and Firm Performance in a Big Data Analytics Environment.” International Journal of Production Research 55 (17): 5011–5026. doi:10.1080/00207543.2016.1154209.
  • Juuso, E. K., and S. Lahdelma. 2013. “Intelligent Performance Measures for Condition-Based Maintenance.” Journal of Quality in Maintenance Engineering 19 (3): 278–294. doi:10.1108/JQME-05-2013-0026.
  • Kaplan, R. S., and D. P. Norton. 1992. “In Search of Excellence–der Maßstab muß neu definiert werden.” Harvard Manager 14 (4): 37–46.
  • Kasi, V. 2005. “Systemic Assessment of SCOR for Modeling SCs.” In System Sciences, 2005. HICSS'05. Proceedings of the 38th Annual Hawaii International Conference on, 87b–87b. IEEE. doi:10.1109/ HICSS.2005.574.
  • Kim, A., K. Oh, J.- Jung, and B. Kim. 2018. “Imbalanced Classification of Manufacturing Quality Conditions Using Cost-Sensitive Decision Tree Ensembles.” International Journal of Computer Integrated Manufacturing 31 (8): 701–717. doi:10.1080/0951192X.2017.1407447.
  • Krishnamoorthi, S., and S. K. Mathew. 2018. “Business Analytics and Business Value: A Comparative Case Study.” Information & Management 55 (5): 643–666.
  • Kumar, A., R. Shankar, A. Choudhary, and L. S. Thakur. 2016. “A Big Data MapReduce Framework for Fault Diagnosis in Cloud-Based Manufacturing.” International Journal of Production Research 54 (23): 7060–7073.
  • Kumar, A., R. Shankar, and L. S. Thakur. 2017. “A Big Data Driven Sustainable Manufacturing Framework for Condition-Based Maintenance Prediction.” Journal of Computational Science 27: 428–439.
  • Kwon, O., N. Lee, and B. Shin. 2014. “Data Quality Management, Data Usage Experience and Acquisition Intention of Big Data Analytics.” International Journal of Information Management 34 (3): 387–394. doi:10.1016/j.ijinfomgt.2014.02.002.
  • Lapide, L. 2010. “Predictive Metrics.” The Journal of Business Forecasting 29 (2): 23.
  • LaValle, S., E. Lesser, R. Shockley, M. S. Hopkins, and N. Kruschwitz. 2011. “Big Data, Analytics and the Path From Insights to Value.” MIT Sloan Management Review 52 (2): 21.
  • Lee, I. 2017. “Big Data: Dimensions, Evolution, Impacts, and Challenges.” Business Horizons 60 (3): 293–303. doi:10.1016/j.bushor.2017.01.004.
  • Lockamy III, A., and K. McCormack. 2004. “Linking SCOR Planning Practices to SC Performance: An Exploratory Study.” International Journal of Operations & Production Management 24 (12): 1192–1218.
  • Manyika, J., M. Chui, B. Brown, J. Bughin, R. Dobbs, C. Roxburgh, and A. H. Byers. 2011. Big Data: The Next Frontier for Innovation, Competition, and Productivity. San Francisco, CA: McKinsey Global Institute.
  • Matthias, O., I. Fouweather, I. Gregory, and A. Vernon. 2017. “Making Sense of Big Data – Can it Transform Operations Management?” International Journal of Operations and Production Management 37 (1): 37–55. doi:10.1108/IJOPM-02-2015-0084.
  • Medori, D., and D. Steeple. 2000. “A Framework for Auditing and Enhancing Performance Measurement Systems.” International Journal of Operations & Production Management 20 (5): 520–533.
  • Mishra, D., A. Gunasekaran, T. Papadopoulos, and R. Dubey. 2018. “Supply Chain Performance Measures and Metrics: A Bibliometric Study.” Benchmarking: An International Journal 25 (3): 932–967.
  • Müller, O., M. Fay, and J. vom Brocke. 2018. “The Effect of Big Data and Analytics on Firm Performance: An Econometric Analysis Considering Industry Characteristics.” Journal of Management Information Systems 35 (2): 488–509. doi:10.1080/07421222.2018.1451955.
  • Neely, A., M. Gregory, and K. Platts. 1995. “Performance Measurement System Design: A Literature Review and Research Agenda.” International Journal of Operations & Production Management 15 (4): 80–116.
  • Ntabe, E. N., L. LeBel, A. D. Munson, and L. A. Santa-Eulalia. 2015. “A Systematic Literature Review of the SC Operations Reference (SCOR) Model Application with Special Attention to Environmental Issues.” International Journal of Production Economics 169: 310–332.
  • Pang, K.-W., and H.-L. Chan. 2017. “Data Mining-Based Algorithm for Storage Location Assignment in a Randomised Warehouse.” International Journal of Production Research 55 (14): 4035–4052.
  • Popovič, A., R. Hackney, R. Tassabehji, and M. Castelli. 2018. “The Impact of Big Data Analytics on Firms’ High Value Business Performance.” Information Systems Frontiers 20 (2): 209–222. doi:10.1007/s10796-016-9720-4.
  • Raguseo, E., and C. Vitari. 2018. “Investments in Big Data Analytics and Firm Performance: An Empirical Investigation of Direct and Mediating Effects.” International Journal of Production Research 56 (15): 5206–5221. doi:10.1080/00207543.2018.1427900.
  • Ramanathan, R., E. Philpott, Y. Duan, and G. Cao. 2017. “Adoption of Business Analytics and Impact on Performance: A Qualitative Study in Retail.” Production Planning & Control 28 (11-12): 985–998.
  • Richey, R. G., T. R. Morgan, K. Lindsey-Hall, and F. G. Adams. 2016. “A Global Exploration of Big Data in the Supply Chain: Global Exploration of Big Data.” International Journal of Physical Distribution and Logistics Management 46 (8): 710–739. doi:10.1108/IJPDLM-05-2016-0134.
  • SC Council. 2008, March. “Introduction to GreenSCOR: Introducing Environmental Considerations to the CSOR Model.” In proceedings of the North America conference and exposition March (pp. 17–19).
  • Schläfke, M., R. Silvi, and K. Möller. 2013. “A Framework for Business Analytics in Performance Management.” International Journal of Productivity and Performance Management 62 (1): 110–122. doi:10.1108/17410401311285327.
  • Schoenherr, T., and M. Swink. 2015. “The Roles of SC Intelligence and Adaptability in New Product Launch Success.” Decision Sciences 46 (5): 901–936.
  • Shepherd, C., and H. Günter. 2006. “Measuring SC Performance: Current Research and Future Directions.” International Journal of Productivity and Performance Management 55 (3): 242–258.
  • Song, P., C. Zheng, C. Zhang, and X. Yu. 2018. “Data Analytics and Firm Performance: An Empirical Study in an Online B2C Platform.” Information and Management 55 (5): 633–642. doi:10.1016/j.im.2018.01.004.
  • Srinivasan, R., and M. Swink. 2018. “An Investigation of Visibility and Flexibility as Complements to Supply Chain Analytics: An Organizational Information Processing Theory Perspective.” Production and Operations Management 27 (10): 1849–1867. doi:10.1111/poms.12746.
  • St-Pierre, J., and S. Delisle. 2006. “An Expert Diagnosis System for the Benchmarking of SMEs’ Performance.” Benchmarking 13 (1-2): 106–119. doi:10.1108/14635770610644619.
  • Stefanovic, N. 2015. “Collaborative Predictive Business Intelligence Model for Spare Parts Inventory Replenishment.” Computer Science and Information Systems 12 (3): 911–930.
  • Tan, K. H. 2018. “Managerial Perspectives of Big Data Analytics Capability Towards Product Innovation.” Strategic Direction 34 (8): 33–35. doi:10.1108/SD-06-2018-0134.
  • Tan, K. H., Y. Z. Zhan, G. Ji, F. Ye, and C. Chang. 2015. “Harvesting Big Data to Enhance SC Innovation Capabilities: An Analytic Infrastructure Based on Deduction Graph.” International Journal of Production Economics 165 (2015): 223–233.
  • Teece, D. J., G. Pisano, and A. Shuen. 1997. “Dynamic Capabilities and Strategic Management.” Strategic Management Journal 18 (7): 509–533.
  • Tranfield, D., D. Denyer, and P. Smart. 2003. “Towards a Methodology for Developing Evidence-Informed Management Knowledge by Means of Systematic Review.” British Journal of Management 14: 207–222.
  • Trieu, V. 2017. “Getting Value From Business Intelligence Systems: A Review and Research Agenda.” Decision Support Systems 93: 111–124. doi:10.1016/j.dss.2016.09.019.
  • Trkman, P., K. McCormack, M. P. V. De Oliveira, and M. B. Ladeira. 2010. “The Impact of Business Analytics on Supply Chain Performance.” Decision Support Systems 49 (3): 318–327. doi:10.1016/j.dss.2010.03.007.
  • Viet, N. Q., B. Behdani, and J. Bloemhof. 2018. “The Value of Information in Supply Chain Decisions: A Review of the Literature and Research Agenda.” Computers & Industrial Engineering 120: 68–82.
  • Waller, M. A., and S. E. Fawcett. 2013. “Data Science, Predictive Analytics, and Big Data: A Revolution That Will Transform SC Design and Management.” Journal of Business Logistics 34 (2): 77–84.
  • Wamba, S. F., S. Akter, A. Edwards, G. Chopin, and D. Gnanzou. 2015. “How ‘big Data’can Make big Impact: Findings From a Systematic Review and a Longitudinal Case Study.” International Journal of Production Economics 165: 234–246.
  • Wamba, S. F., S. Akter, H. Kang, M. Bhattacharya, and M. Upal. 2016. “The Primer of Social Media Analytics.” Journal of Organizational and End User Computing 28 (2): 1–12. doi:10.4018/JOEUC.2016040101.
  • Wamba, S. F., A. Gunasekaran, S. Akter, S. J.- Ren, R. Dubey, and S. J. Childe. 2017. “Big Data Analytics and Firm Performance: Effects of Dynamic Capabilities.” Journal of Business Research 70: 356–365. doi:10.1016/j.jbusres.2016.08.009.
  • Wong, H., A. Potter, and M. Naim. 2011. “Evaluation of Postponement in the Soluble Coffee Supply Chain: A Case Study.” International Journal of Production Economics 131 (1): 355–364. doi:10.1016/j.ijpe.2010.08.015.
  • Yadegaridehkordi, E., M. Hourmand, M. Nilashi, L. Shuib, A. Ahani, and O. Ibrahim. 2018. “Influence of Big Data Adoption on Manufacturing Companies’ Performance: An Integrated DEMATEL-ANFIS Approach.” Technological Forecasting and Social Change 137: 199–210. doi:10.1016/j.techfore.2018.07.043.
  • Yu, C., and A. Matta. 2016. “A Statistical Framework of Data-Driven Bottleneck Identification in Manufacturing Systems.” International Journal of Production Research 54 (21): 6317–6332. doi:10.1080/00207543.2015.1126681.
  • Zhan, Y., and K. H. Tan. 2018. “An Analytic Infrastructure for Harvesting Big Data to Enhance Supply Chain Performance.” European Journal of Operational Research. doi:10.1016/j.ejor.2018.09.018..
  • Zhan, Y., K. H. Tan, G. Ji, L. Chung, and M. Tseng. 2017. “A Big Data Framework for Facilitating Product Innovation Processes.” Business Process Management Journal 23 (3): 518–536.
  • Zhu, S., J. Song, B. T. Hazen, K. Lee, and C. Cegielski. 2018. “How SC Analytics Enables Operational SC Transparency: An Organizational Information Processing Theory Perspective.” International Journal of Physical Distribution & Logistics Management 48 (1): 47–68.

Reprints and Corporate Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

To request a reprint or corporate permissions for this article, please click on the relevant link below:

Academic Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

Obtain permissions instantly via Rightslink by clicking on the button below:

If you are unable to obtain permissions via Rightslink, please complete and submit this Permissions form. For more information, please visit our Permissions help page.