Article Content

Abstract

Supply chain management (SCM) is being transformed by the rapid proliferation of digital technologies that open up pathways to greater resilience and agility. This study examines the impact of new technologies, such as cloud computing, blockchain, Internet of Things (IoT), artificial intelligence (AI), and predictive analytics, on the performance of SCM in India. Using a mixed-methods research design, this study fills an important literature gap, as most previous studies have examined these technologies separately. The study used measurement, structural modeling, and importance and performance analysis (IPMA) to identify the primary elements that can enhance SCM outcomes. The results suggest that digital technology adoption (DTA), data integration (DI) and predictive analytics (PA) are critical factors for SCM performance in improving supply chain flexibility and reliability. PLS-Predict was applied to evaluate the predictive performance out-of-sample and the model proved to be robust. This work contributes to the growing knowledge base since it provides empirical evidence on how digital tools optimize SCM best and thus delivers companies’ strategic insights on balancing proximity to demand centers and supply chain resilience.

Explore related subjects

Discover the latest articles and news from researchers in related subjects, suggested using machine learning.

  • Business Process Management
  • Logistics
  • Industrial Management
  • Performance Management
  • Supply Chain Management
  • Operations Management

Data availability

All the data is collected from the simulation reports of the software and tools used by the authors. Authors are working on implementing the same using real world data with appropriate permissions.

References

  • Adams FG, Richey RG Jr, Autry CW, Morgan TR, Gabler CB (2014) Supply chain collaboration, integration, and relational technology: How complex operant resources increase performance outcomes. J Bus Logist 35(4):299–317

    Google Scholar

  • Ageron B, Bentahar O, and Gunasekaran A (2020) Digital supply chain: challenges and future directions. In Supply Chain Forum: An International Journal (Vol. 21, No. 3, pp. 133–138). Taylor & Francis

  • Agrawal P, Narain R (2021) Analysis of enablers for the digitalization of supply chain using an interpretive structural modelling approach. Int J Product Perform Manag. Advance online publication. https://doi.org/10.1108/IJPPM-09-2020-0481

  • Agrawal S, Agrawal R, Kumar A, Luthra S, Garza-Reyes JA (2024) Can industry 5.0 technologies overcome supply chain disruptions?—a perspective study on pandemics, war, and climate change issues. Operations Manag Res 17(2):453–468

    Google Scholar

  • Ahsen ME, and Moshref-Javadi M (2024) The Role of Technologies in Supply Chain Efficiency and Resiliency. In Impacts of COVID-19 on Supply Chains: Disruptions, Technologies, and Solutions (pp. 117–144). Cham: Springer Nature Switzerland

  • Akbari M, Hopkins JL (2022) Digital technologies as enablers of supply chain sustainability in an emerging economy. Oper Manag Res 15(3):689–710

    Google Scholar

  • Al Mashalah H, Hassini E, Gunasekaran A, Bhatt D (2022) The impact of digital transformation on supply chains through e-commerce: Literature review and a conceptual framework. Transportation Res Part E: Logistics Transportation Rev 165:102837

    Google Scholar

  • Alabdali SA, Pileggi SF, Cetindamar D (2023) Influential factors, enablers, and barriers to adopting smart technology in rural regions: a literature review. Sustainability 15(10):7908. https://doi.org/10.3390/su15107908

    Google Scholar

  • Alacam S, Sencer A (2021) Using blockchain technology to foster collaboration among shippers and carriers in the trucking industry: A design science research approach. Logistics 5(2):37

    Google Scholar

  • Alicke K, Benavides L, Sankur A (2017) Three game-changing supply-chain technologies. McKinsey & Company. Retrieved March 15, 2021, from https://www.mckinsey.com/business-functions/operations/our-insights/three-gamechanging-supply-chain-technologies

  • Aljohani A (2023) Predictive analytics and machine learning for real-time supply chain risk mitigation and agility. Sustainability 15(20):15088

    Google Scholar

  • Almomani AM, Rahman MNA, Nordin M, Rahman A (2022) A literature review of the adoption of Internet of Things: Directions for future work. Int J Contemporary Manag Inform Technol 2(2):15–23

    Google Scholar

  • AlMulhim AF (2021) Smart supply chain and firm performance: the role of digital technologies. Bus Process Manag J 27(5):1353–1372

    Google Scholar

  • AlNuaimi BK, Singh SK, Ren S, Budhwar P, Vorobyev D (2022) Mastering digital transformation: The nexus between leadership, agility, and digital strategy. J Bus Res 145:636–648

    Google Scholar

  • Alvarenga MZ, Oliveira MPVD, Oliveira TAGFD (2023) The impact of using digital technologies on supply chain resilience and robustness: the role of memory under the covid-19 outbreak. Supply Chain Manag: an Int J 28(5):825–842

    Google Scholar

  • Antwiadjei L (2021) Evolution of Business Organizations: An Analysis of Robotic Process Automation. Eduzone: Int Peer Reviewed/refereed Multidisciplinary J 10(2):101–105

    Google Scholar

  • Armstrong JS, Overton TS (1977) Estimating nonresponse bias in mail surveys. J Mark Res 14(3):396–402

    Google Scholar

  • Attaran M (2020) Digital technology enablers and their implications for supply chain management. In Supply Chain Forum: An Int J 21 3 158–172). Taylor & Francis

  • Bag S, Wood LC, Xu L, Dhamija P, Kayikci Y (2020) Big data analytics as an operational excellence approach to enhance sustainable supply chain performance. Resour Conserv Recycl 153:104559

    Google Scholar

  • Barney J (1991) Firm resources and sustained competitive advantage. J Manag 17(1):99–120

    Google Scholar

  • Bechtsis D, Tsolakis N, Vlachos D, Srai JS (2018) Intelligent Autonomous Vehicles in digital supply chains: A framework for integrating innovations towards sustainable value networks. J Clean Prod 181:60–71

    Google Scholar

  • Bell, E., Bryman, A., & Harley, B. (2022).Business research methods. Oxford university press

  • Braun V, Clarke V (2006) Using thematic analysis in psychology. Qual Res Psychol 3(2):77–101

    Google Scholar

  • Bresciani S, Ferraris A, Del Giudice M, Papa A (2021) Digital transformation as a springboard for product, process and business model innovation. J Bus Res 128:204–210. https://doi.org/10.1016/j.jbusres.2021.02.003

    Google Scholar

  • Büyüközkan G, Göçer F (2018) Digital supply chain: literature review and a proposed framework for future research. Comput Ind 97:157–177

    Google Scholar

  • Calatayud A (2017) The connected supply chain: enhancing risk management in a changing world

  • Camel A, Belhadi A, Kamble S, Tiwari S, Touriki FE (2024) Integrating smart Green Product Platforming for carbon footprint reduction: The role of blockchain technology and stakeholders influence within the agri-food supply chain. Int J Prod Econ 272:109251

    Google Scholar

  • Centre for Research on the Epidemiology of Disasters (CRED) (2020) CRED Crunch 58 – Disaster: year in review. CRED, Brussels. Retrieved April 18, 2024, from https://www.preventionweb.net/publication/cred-crunch-issue-no-58-april-2020-disaster-year-review-2019

  • Chae BK (2009) Developing key performance indicators for supply chain: an industry perspective. Supply Chain Manag: an Int J 14(6):422–428

    Google Scholar

  • Chen S, Moinzadeh K, Song JS, Zhong Y (2023) Cloud computing value chains: Research from the operations management perspective. Manuf Serv Oper Manag 25(4):1338–1356

    Google Scholar

  • Choi TM, Wallace SW, Wang Y (2018) Big data analytics in operations management. Prod Oper Manag 27(10):1868–1883. https://doi.org/10.1111/poms.12838

    Google Scholar

  • Chopra S, Meindl P (2001) Strategy, planning, and operation. Supply Chain Manag 15(5):71–85

    Google Scholar

  • Christopher M (2016) Logistics & supply chain management, 5th edn. Pearson

  • Cohen J (2013) Statistical power analysis for the behavioral sciences, 2nd edn. Routledge

  • Creswell JW, Poth CN (2016) Qualitative inquiry and research design: choosing among five approaches, 4th edn. SAGE Publications

  • Creswell JW, Clark VLP (2017) Designing and conducting mixed methods research. Sage Publications

  • Cui PH, Wang JQ, Li Y (2022) Data-driven modelling, analysis and improvement of multistage production systems with predictive maintenance and product quality. Int J Prod Res 60(22):6848–6865

    Google Scholar

  • Cutting GA, Cutting-Decelle AF (2021) Intelligent document processing—methods and tools in the real world [Preprint]. arXiv. https://arxiv.org/abs/2112.14070

  • Dash R, McMurtrey M, Rebman C, Kar UK (2019) Application of artificial intelligence in automation of supply chain management. J Strateg Innov Sustain 14(3):43–53

    Google Scholar

  • Datta PP (2017) Enhancing competitive advantage by constructing supply chains to achieve superior performance. Prod Plan Control 28(1):57–74

    Google Scholar

  • Denzin NK, Lincoln YS (eds) (2011) The SAGE handbook of qualitative research, 4th edn. SAGE Publications

  • Elgazzar Y, El-Shahawy R, Senousy Y (2022) The role of digital transformation in enhancing business resilience with pandemic of COVID-19. In Digital transformation technology: Proceedings of ITAF 2020 (pp. 323–333). Springer Singapore

  • Ellram LM, Cooper MC (2014) Supply chain management: It’s all about the journey, not the destination. J Supply Chain Manag 50(1):8–20

    Google Scholar

  • Epiphaniou G, Bottarelli M, Al-Khateeb H, Ersotelos NT, Kanyaru J, Nahar V (2020) Smart distributed ledger technologies in Industry 4.0: Challenges and opportunities in supply chain management. Cyber Defence in the Age of AI, Smart Societies and Augmented Humanity, 319–345

  • Facchini F, Oleśków-Szłapka J, Ranieri L, Urbinati A (2019) A maturity model for logistics 4.0: an empirical analysis and a roadmap for future research. Sustainability 12(1):86

    Google Scholar

  • Fatorachian H, Kazemi H (2021) Impact of Industry 4.0 on supply chain performance. Prod Plan Control 32(1):63–81

    Google Scholar

  • Fawcett SE, Magnan GM, McCarter MW (2008) Benefits, barriers, and bridges to effective supply chain management. Supply Chain Manag Int J 13(1):35–48. https://doi.org/10.1108/13598540810850300

    Google Scholar

  • Fernández-Caramés TM, Blanco-Novoa O, Froiz-Míguez I, Fraga-Lamas P (2019) Towards an autonomous industry 4.0 warehouse: A UAV and blockchain-based system for inventory and traceability applications in big data-driven supply chain management. Sensors 19(10):2394

    Google Scholar

  • Flick U (2022) An introduction to qualitative research

  • Fornell C, Larcker DF (1981) Evaluating structural equation models with unobservable variables and measurement error. J Mark Res 18(1):39–50

    Google Scholar

  • Frohlich MT, Westbrook R (2001) Arcs of integration: an international study of supply chain strategies. J Oper Manag 19(2):185–200

    Google Scholar

  • Gartner (2023) Gartner survey of over 2,400 CIOs reveals that 45% of CIOs are driving a shift to co-ownership of digital leadership. Retrieved June 10, 2024, from https://www.gartner.com/en/newsroom/press-releases/2023-10-17-gartner-survey-of-over-2400-cios-reveals-that-45-percent-of-cios-are-driving-a-shift-to-co-ownership-of-digital-leadership

  • Gunasekaran A, Subramanian N, Papadopoulos T (2017) Information technology for competitive advantage within logistics and supply chains: A review. Transp Res Part E: Logistics Transp Rev 99:14–33

    Google Scholar

  • Gupta S, Modgil S, Gunasekaran A, Bag S (2020 Dynamic capabilities and institutional theories for Industry 4.0 and digital supply chain. In Supply Chain Forum: Int J 21 3 139–157). Taylor & Francis

  • Hair JF Jr, Matthews LM, Matthews RL, Sarstedt M (2017) PLS-SEM or CB-SEM: updated guidelines on which method to use. Int J Multivariate Data Analysis 1(2):107–123

    Google Scholar

  • Hair Jr JF, Hult GTM, Ringle CM, Sarstedt M, Castillo Apraiz J, Cepeda Carrión GA, Roldán JL (2019) Manual de Partial Least Squares Structural Equation Modeling (PLS-SEM), 2nd edn. OmniaScience. https://doi.org/10.3926/OSS.37

  • Hair JF Jr, Howard MC, Nitzl C (2020a) Assessing measurement model quality in PLS-SEM using confirmatory composite analysis. J Bus Res 109:101–110

    Google Scholar

  • Hair JF Jr, Sarstedt M, Ringle CM, Gudergan SP (2020b) Advanced issues in partial least squares structural equation modeling (PLS-SEM). SAGE Publications

  • Handfield RB, Nichols Jr, EL (1999) Introduction to supply chain management. Prentice Hall, Englewood Cliffs

  • He J, Fan M, Fan Y (2024) Digital transformation and supply chain efficiency improvement: An empirical study from a-share listed companies in China. PLoS ONE 19(4):e0302133

    Google Scholar

  • Helo P, Shamsuzzoha AHM (2020) Real-time supply chain—A blockchain architecture for project deliveries. Robot Comput-Integr Manuf 63:101909

    Google Scholar

  • Helo P, Thai VV (2024) Logistics 40–digital transformation with smart connected tracking and tracing devices. Int J Prod Econ 275:109336

    Google Scholar

  • Henseler J, Ringle CM, Sinkovics RR (2009) The use of partial least squares path modeling in international marketing. Adv Int Mark 20:277–319. https://doi.org/10.1108/S1474-7979(2009)0000020014

    Google Scholar

  • Hinton PR, McMurray I, Brownlow C (2004) SPSS Explained, 1st edn. Routledge. https://doi.org/10.4324/9780203642597

  • Ho D, Kumar A, Shiwakoti N (2019) A literature review of supply chain collaboration mechanisms and their impact on performance. Eng Manag J 31(1):47–68

    Google Scholar

  • Ho T, Kumar A, Shiwakoti N (2020) Supply chain collaboration and performance: an empirical study of maturity model. SN Appl Sci 2:1–16

    Google Scholar

  • Ho GT, Tang YM, Tsang KY, Tang V, Chau KY (2021) A blockchain-based system to enhance aircraft parts traceability and trackability for inventory management. Expert Syst Appl 179:115101

    Google Scholar

  • Hofmann E, Sternberg H, Chen H, Pflaum A, Prockl G (2019) Supply chain management and Industry 40: conducting research in the digital age. Int J Phys Distrib Logist Manag 49(10):945–955

    Google Scholar

  • Hopkins J, Hawking P (2018) Big Data Analytics and IoT in logistics: a case study. Int J Logist Manag 29(2):575–591

    Google Scholar

  • Hu X, Xu L, Yao G, Wu Z (2024) Multi-CODP decision models for supplier selection and order allocation in customized logistics service supply chain. Neural Computing and Applications, 1–23

  • Hu H, Yao C (2023) Technology innovations in supply chains: Unlocking Sustainability and SDG Advancement. Environ Sci Pollut Res 30(46):102725–102738

    Google Scholar

  • Ibn El Farouk I, Moufad I, Frichi Y, Arif J, Jawab F (2020) Proposing a supply chain collaboration framework for synchronous flow implementation in the automotive industry: A moroccan case study. Information 11(9):431

    Google Scholar

  • Iftikhar A, Ali I, Arslan A, Tarba S (2024) Digital innovation, data analytics, and supply chain resiliency: A bibliometric-based systematic literature review. Ann Oper Res 333(2):825–848

    Google Scholar

  • Ikpe V (2023) Supply chain waste reduction control strategies to promote efficiency in the United States retail industry supply chain operations [Preprint]. SSRN. https://doi.org/10.2139/ssrn.4620525

  • Irfan M, Wang M (2019) Data-driven capabilities, supply chain integration and competitive performance: Evidence from the food and beverages industry in Pakistan. British Food J 121(11):2708–2729

    Google Scholar

  • Ivanov D, Dolgui A (2020) A digital supply chain twin for managing the disruption risks and resilience in the era of Industry 4.0. Prod Plan Control 32(9):775–788. https://doi.org/10.1080/09537287.2020.1768450

    Google Scholar

  • Ivanov D (2021) Digital supply chain management and technology to enhance resilience by building and using end-to-end visibility during the COVID-19 pandemic. IEEE Trans Eng Manag. Advance online publication. https://doi.org/10.1109/TEM.2021.3095193

  • Jabbar S, Lloyd H, Hammoudeh M, Adebisi B, Raza U (2021) Blockchain-enabled supply chain: analysis, challenges, and future directions. Multimedia Syst 27:787–806

    Google Scholar

  • Jahid A, Alsharif MH, Hall TJ (2023) The convergence of Blockchain, IoT and 6G: potential, opportunities, challenges and research roadmap. J Netw Comput Appl 217:103677

    Google Scholar

  • Jagatheesaperumal SK, Rahouti M, Ahmad K, Al-Fuqaha A, Guizani M (2021) The duo of artificial intelligence and big data for industry 40: Applications, techniques, challenges, and future research directions. IEEE Internet Things J 9(15):12861–12885

    Google Scholar

  • Javaid M, Haleem A, Singh RP, Suman R (2022) Artificial intelligence applications for industry 40: A literature-based study. J Ind Integration Manag 7(01):83–111

    Google Scholar

  • Jeble S, Dubey R, Childe SJ, Papadopoulos T, Roubaud D, Prakash A (2018) Impact of big data and predictive analytics capability on supply chain sustainability. Int J Logistics Manag 29(2):513–538

    Google Scholar

  • Jerome JJJ, Sonwaney V, Bryde D, Kamble SS, Gunasekaran A (2024) Achieving competitive advantage through technology-driven proactive supply chain risk management: an empirical study. Ann Oper Res 332:149–190. https://doi.org/10.1007/s10479-023-05604-y

    Google Scholar

  • Junge AL, Straube F (2020) Sustainable supply chains–digital transformation technologies’ impact on the social and environmental dimension. Procedia Manuf 43:736–742

    Google Scholar

  • Kache F, Seuring S (2017) Challenges and opportunities of digital information at the intersection of Big Data Analytics and supply chain management. Int J Oper Prod Manag 37(1):10–36

    Google Scholar

  • Kalandarovna AG, Qizi AMA (2023) Development and increase of competitiveness of the organization. ASEAN J Educ Res Technol 2(3):265–274

    Google Scholar

  • Kamble SS, Gunasekaran A (2020) Big data-driven supply chain performance measurement system: a review and framework for implementation. Int J Prod Res 58(1):65–86

    Google Scholar

  • Kandasamy J, Venkat V, Mani RS (2023) Barriers to the adoption of digital technologies in a functional circular economy network. Oper Manag Res 16(3):1541–1561

    Google Scholar

  • Katsaliaki K, Galetsi P, Kumar S (2021) Supply chain disruptions and resilience: a major review and future research agenda. Ann Oper Res 319(1):965–1002. https://doi.org/10.1007/s10479-020-03912-1

    Google Scholar

  • Kero C, Bogale A (2023) A systematic review of resource-based view and dynamic capabilities of firms and future research avenues. Int J Sustain Dev Plan 18(10):3137–3154. https://doi.org/10.18280/ijsdp.181016

  • Khaddam A, Irtaimeh H, Bader B (2020) The effect of supply chain management on competitive advantage: The mediating role of information technology. Uncertain Supply Chain Manag 8(3):547–562

    Google Scholar

  • Khedr A, Sheeja S (2024) Enhancing supply chain management with deep learning and machine learning techniques: a review. J Open Innov Technol Mark Complexity 10:Article 100379. https://doi.org/10.1016/j.joitmc.2024.100379

  • Komalavalli C, Saxena D, Laroiya C (2020) Overview of blockchain technology concepts. In: Blockchain technology: concepts and applications. Elsevier, pp 349–371. https://doi.org/10.1016/b978-0-12-819816-2.00014-9

  • Kumar S, Manjrekar V, Singh V, Lad BK (2020) Integrated yet distributed operations planning approach: A next generation manufacturing planning system. J Manuf Syst 54:103–122

    Google Scholar

  • Kumar S, Raut RD, Agrawal N, Cheikhrouhou N, Sharma M, Daim T (2022) Integrated blockchain and internet of things in the food supply chain: Adoption barriers. Technovation 118:102589

    Google Scholar

  • Kumar S, Lim WM, Sivarajah U, Kaur J (2023) Artificial intelligence and blockchain integration in business: trends from a bibliometric-content analysis. Inf Syst Front 25(2):871–896

    Google Scholar

  • Kumar V, Ashraf AR, Nadeem W (2024) AI-powered marketing: What, where, and how? Int J Inform Manag 77:102783

    Google Scholar

  • Kuo TC, Peng CY, Kuo CJ (2024) Smart support system of material procurement for waste reduction based on big data and predictive analytics. Int J Log Res Appl 27(2):243–260

    Google Scholar

  • Lambert DM, Cooper MC (2000) Issues in supply chain management. Ind Mark Manage 29(1):65–83

    Google Scholar

  • Lee SY (2021) Sustainable supply chain management, digital-based supply chain integration, and firm performance: a cross-country empirical comparison between South Korea and Vietnam. Sustainability 13(13):7315

    Google Scholar

  • Li X (2024) Optimization of logistics flow management through big data analytics for sustainable development and environmental cycles. Soft Comput 28(3):2701–2717

    Google Scholar

  • Li Q, Zhang H, Liu K, Zhang ZJ, Jasimuddin SM (2024) Linkage between digital supply chain, supply chain innovation and supply chain dynamic capabilities: An empirical study. Int J Logistics Manag 35(4):1200–1223

    Google Scholar

  • Luomaranta T, Martinsuo M (2020) Supply chain innovations for additive manufacturing. Int J Phys Distrib Logist Manag 50(1):54–79

    Google Scholar

  • Madhani PM (2022) Enhancing supply chain capabilities with blockchain deployment: an RBV perspective. IUP J Bus Strateg 18(4):7–31

    Google Scholar

  • Marcon É, Soliman M, Gerstlberger W, Frank AG (2022) Sociotechnical factors and Industry 40: an integrative perspective for the adoption of smart manufacturing technologies. J Manuf Technol Manag 33(2):259–286

    Google Scholar

  • Marinagi C, Reklitis P, Trivellas P, Sakas D (2023) The impact of industry 4.0 technologies on key performance indicators for a resilient supply chain 4.0. Sustainability 15(6):5185

    Google Scholar

  • Melville N, Kraemer K, Gurbaxani V (2003) Information technology and organizational performance: An integrative model of IT business value. Manag Inf Syst Q 28(2):7

    Google Scholar

  • Mentzer JT, DeWitt W, Keebler JS, Min S, Nix NW, Smith CD, Zacharia ZG (2001) Defining supply chain management. J Bus Logist 22(2):1–25

    Google Scholar

  • Mishra S, Sree Devi KK, Badri Narayanan MK (2019) Technology dimensions of automation in business process management industry. Int J Eng Adv Technol 8(6):1919–1926

    Google Scholar

  • Mohsen BM (2023) Developments of digital technologies related to supply chain management. Procedia Comput Sci 220:788–795

    Google Scholar

  • Moshref-Javadi M, Seshadri S (2024) Adjustments to Supply Chains in Response to the COVID-19 Pandemic: A Survey. In Impacts of COVID-19 on Supply Chains: Disruptions, Technologies, and Solutions (pp. 1–38). Cham: Springer Nature Switzerland

  • Narayanan S (2024) AI-powered supply chains towards greater efficiency. In: Handbook of research on AI tools for real-world applications. IGI Global, pp 229–249. https://doi.org/10.4018/979-8-3693-0712-0.ch011

  • Nasiri M, Ukko J, Saunila M, Rantala T (2020) Managing the digital supply chain: The role of smart technologies. Technovation 96:102121

    Google Scholar

  • Ngo VM, Quang HT, Hoang TG, Binh ADT (2024) Sustainability-related supply chain risks and supply chain performances: The moderating effects of dynamic supply chain management practices. Bus Strateg Environ 33(2):839–857

    Google Scholar

  • Oduma RO, Shale N (2019) Effect of logistics automation on supply chain performance in Kenya medical supplies authority. Int J Soc Sci Inform Technol 5(4):124–141

    Google Scholar

  • Olaniyi OO, Ugonnia JC, Olaniyi FG, Arigbabu AT, Adigwe CS (2024) Digital collaborative tools, strategic communication, and social capital: Unveiling the impact of digital transformation on organizational dynamics. Asian J Res Comput Sci 17(5):140–156

    Google Scholar

  • Olaoye F, Potter K (2024) Leveraging digital technologies to enhance supply chain resilience and productivity during the COVID-19 pandemic [Preprint]. EasyChair Preprints 12757. https://easychair.org/publications/preprint/GkH8

  • Oliveira-Dias D, Maqueira-Marín JM, Moyano-Fuentes J (2022) The link between information and digital technologies of industry 40 and agile supply chain: Mapping current research and establishing new research avenues. Comput Ind Eng 167:108000

    Google Scholar

  • Osterrieder P, Budde L, Friedli T (2020) The smart factory as a key construct of industry 40: A systematic literature review. Int J Prod Econ 221:107476

    Google Scholar

  • Pang C, Wang Q (2024) How digital transformation promotes disruptive innovation? Evidence from Chinese entrepreneurial firms. J Knowl Econ 15(2):7788–7818

    Google Scholar

  • Pansara RR (2022) Cybersecurity Measures in Master Data Management: Safeguarding Sensitive Information. Int Numeric J Machine Learning Robots 6(6):1–12

    Google Scholar

  • Pasupuleti V, Thuraka B, Kodete CS, Malisetty S (2024) Enhancing supply chain agility and sustainability through machine learning: Optimization techniques for logistics and inventory management. Logistics 8(3):73

    Google Scholar

  • Patidar A, Sharma M, Agrawal R, Sangwan KS (2023) Supply chain resilience and its key performance indicators: an evaluation under Industry 40 and sustainability perspective. Manag Environ Quality: an Int J 34(4):962–980

    Google Scholar

  • Patton MQ (2014) Qualitative research & evaluation methods: Integrating theory and practice. Sage publications

  • Qader G, Junaid M, Abbas Q, Mubarik MS (2022) Industry 40 enables supply chain resilience and supply chain performance. Technol Forecasting Soc Change 185:122026

    Google Scholar

  • Qi Y, Wang X, Zhang M, Wang Q (2023) Developing supply chain resilience through integration: An empirical study on an e-commerce platform. J Oper Manag 69(3):477–496

    Google Scholar

  • Garay-Rondero CL, Martinez-Flores JL, Smith NR, Morales SOC, Aldrette-Malacara A (2020) Digital supply chain model in Industry 4.0. J Manuf Technol Manag 31(5):887–933

    Google Scholar

  • Razaghi S, Shokouhyar S (2021) Impacts of big data analytics management capabilities and supply chain integration on global sourcing: a survey on firm performance. Bottom Line 34(2):198–223

    Google Scholar

  • Rejeb A, Keogh JG, Simske SJ, Stafford T, Treiblmaier H (2021) Potentials of blockchain technologies for supply chain collaboration: a conceptual framework. Int J Logist Manag 32(3):973–994

    Google Scholar

  • Rejeb A, Keogh JG, Treiblmaier H (2019) Leveraging the internet of things and blockchain technology in supply chain management. Futur Internet 11(7):161. https://doi.org/10.3390/fi11070161

  • Rejeb A, Rejeb K, Appolloni A, Jagtap S, Iranmanesh M, Alghamdi S, Alhasawi Y, Kayikci Y (2023) Unleashing the power of Internet of Things and blockchain: a comprehensive analysis and future directions. Internet of Things and Cyber-Physical Systems 4:Article 100104. https://doi.org/10.1016/j.iotcps.2023.06.003

  • Rushton A, Croucher P, Baker P (2022) The handbook of logistics and distribution management: understanding the supply chain, 7th edn. Kogan Page

  • Saberi S, Kouhizadeh M, Sarkis J, Shen L (2019) Blockchain technology and its relationships to sustainable supply chain management. Int J Prod Res 57(7):2117–2135

    Google Scholar

  • Sabri EH, Shaikh SN (2010) Lean and agile value chain management: a guide to the next level of improvement. J. Ross Publishing

  • Seyedan M, Mafakheri F (2020) Predictive big data analytics for supply chain demand forecasting: methods, applications, and research opportunities. J Big Data 7(1):53

    Google Scholar

  • Sahara CR, Aamer AM (2022) Real-time data integration of an internet-of-things-based smart warehouse: a case study. Int J Pervasive Comput Commun 18(5):622–644

    Google Scholar

  • Salamah E, Alzubi A, Yinal A (2023) Unveiling the Impact of Digitalization on Supply Chain Performance in the Post-COVID-19 Era: The Mediating Role of Supply Chain Integration and Efficiency. Sustainability 16(1):304

    Google Scholar

  • Sarfaraz A, Chakrabortty RK, Essam DL (2023) AccessChain: An access control framework to protect data access in blockchain enabled supply chain. Futur Gener Comput Syst 148:380–394

    Google Scholar

  • Sarstedt M, Hair JF, Cheah JH, Becker JM, Ringle CM (2021a) How to specify, estimate, and validate higher-order constructs in PLS-SEM. Australas Mark J 29(3):206–217. https://doi.org/10.1016/j.ausmj.2020.03.003

    Google Scholar

  • Sarstedt M, Ringle CM, Hair JF (2021b) Partial least squares structural equation modeling. Handbook of market research. Springer International Publishing, Cham, pp 587–632

    Google Scholar

  • Sarstedt M, Ringle CM, Smith D, Reams R, Hair JF Jr (2014) Partial least squares structural equation modeling (PLS-SEM): A useful tool for family business researchers. J Fam Bus Strat 5(1):105–115

    Google Scholar

  • Schilling L, Seuring S (2024) Linking the digital and sustainable transformation with supply chain practices. Int J Prod Res 62(3):949–973

    Google Scholar

  • Sharabati AAA, Jreisat ER (2024) Blockchain Technology Implementation in Supply Chain Management: A Literature Review. Sustainability 16(7):2823

    Google Scholar

  • Sharma M, Joshi S (2023) Digital supplier selection reinforcing supply chain quality management systems to enhance firm’s performance. TQM J 35(1):102–130

    Google Scholar

  • Sharma M, Luthra S, Joshi S, Kumar A (2021) Accelerating retail supply chain performance against pandemic disruption: adopting resilient strategies to mitigate the long-term effects. J Enterp Inf Manag 34(6):1844–1873

    Google Scholar

  • Shcherbakov V, Silkina G (2021) Supply chain management open innovation: Virtual integration in the network logistics system. J Open Innovation: Technol Market Complexity 7(1):54

    Google Scholar

  • Shmueli G, Ray S, Estrada JMV, Chatla SB (2016a) The elephant in the room: Predictive performance of PLS models. J Bus Res 69(10):4552–4564

    Google Scholar

  • Shmueli G, Ray S, Velasquez Estrada JM, Chatla SB (2016b) The elephant in the room: Evaluating the predictive performance of PLS models. J Bus Res 69(10):4552–4564. https://doi.org/10.1016/j.jbusres.2016.03.049

    Google Scholar

  • Shoushtari F, Ghafourian E, Talebi M (2021) Improving Performance of Supply Chain by Applying Artificial Intelligence. Int J Ind Eng Oper Res 3(1):14–23

    Google Scholar

  • Simchi-Levi D, Kaminsky P, Simchi-Levi E (1999) Designing and managing the supply chain: concepts, strategies, and case studies. McGraw-Hill

  • Skjøtt-Larsen T, Schary PB, Mikkola JH, Kotzab H (2007) Managing the global supply chain, 3rd edn. Copenhagen Business School Press

  • Smyth C, Dennehy D, Fosso Wamba S, Harfouche A, Scott M (2024) Artificial intelligence and prescriptive analytics for supply chain resilience: a systematic literature review and research agenda. Int J Prod Res 62(11):Article 2341415. https://doi.org/10.1080/00207543.2024.2341415

  • Sodero A, Jin YH, Barratt M (2019) The social process of Big Data and predictive analytics use for logistics and supply chain management. Int J Phys Distrib Logist Manag 49(7):706–726

    Google Scholar

  • Song Y, Yu FR, Zhou L, Yang X, He Z (2020) Applications of the Internet of Things (IoT) in smart logistics: A comprehensive survey. IEEE Internet Things J 8(6):4250–4274

    Google Scholar

  • Stackpole B (2020) 5 supply chain technologies that deliver competitive advantage. MIT Sloan Manag Rev. Retrieved April 18, 2024, from https://mitsloan.mit.edu/ideas-made-to-matter/5-supply-chain-technologies-deliver-competitive-advantage

  • Ståhlström M (2021) Improving supplier relationship management with supplier portal (Master’s thesis, Aalto University, Finland). Aaltodoc. https://aaltodoc.aalto.fi/items/130134c2-2239-4c8e-9c9f-04d0744e9689

  • Sundarakani B, Kamran R, Maheshwari P, Jain V (2021) Designing a hybrid cloud for a supply chain network of Industry 4.0: a theoretical framework. Benchmarking an Int J 28(5):1524–1542

    Google Scholar

  • Sundarakani B, Manikas I, Gunasekaran A (2024) The role of digital transformation in achieving sustainable supply chain management in Industry 40: an editorial review perspective. Int J Logistics Res Appl 27(6):843–851

    Google Scholar

  • Suwignjo P, Panjaitan L, Baihaqy A, Rusdiansyah A (2023) Predictive analytics to improve inventory performance: a case study of an FMCG Company. Oper Supply Chain Manag: an Int J 16(2):293–310

    Google Scholar

  • Syed NF, Shah SW, Trujillo-Rasua R, Doss R (2022) Traceability in supply chains: A Cyber security analysis. Comput Secur 112:102536

    Google Scholar

  • Tahiduzzaman M, Rahman M, Dey SK, Rahman MS, Akash SM (2017) Big data and its impact on digitized supply chain management. IAJRD J Bus Manag 3(9):196–208

    Google Scholar

  • Teece DJ (2009) Dynamic capabilities and strategic management: Organizing for innovation and growth. Oxford University Press

  • Teece DJ, Pisano G, Shuen A (1997) Dynamic capabilities and strategic management. Strateg Manag J 18(7):509–533

    Google Scholar

  • Tiwari S (2021) Supply chain integration and Industry 4.0: a systematic literature review. Benchmarking an Int J 28(3):990–1030

    Google Scholar

  • Tornatzky LG, Fleischer M (1990) The processes of technological innovation. Lexington Books

  • Trist EL, Bamforth KW (1951) Some social and psychological consequences of the longwall method of coal-getting: An examination of the psychological situation and defences of a work group in relation to the social structure and technological content of the work system. Human Relations 4(1):3–38

    Google Scholar

  • Tsolakis N, Schumacher R, Dora M, Kumar M (2023) Artificial intelligence and blockchain implementation in supply chains: a pathway to sustainability and data monetisation? Ann Oper Res 327(1):157–210

    Google Scholar

  • Umar M, Khan SAR, Yusoff Yusliza M, Ali S, Yu Z (2022) Industry 40 and green supply chain practices: an empirical study. Int J Productivity Performance Manag 71(3):814–832

    Google Scholar

  • Valashiya MC, Luke R (2023) Enhancing supply chain information sharing with third party logistics service providers. Int J Logist Manag 34(6):1523–1542

    Google Scholar

  • van Geest M, Tekinerdogan B, Catal C (2021) Smart warehouses: Rationale, challenges and solution directions. Appl Sci 12(1):219

    Google Scholar

  • Vazquez Melendez EI, Bergey P, Smith B (2024) Blockchain technology for supply chain provenance: increasing supply chain efficiency and consumer trust. Supply Chain Manag: An Int J

  • Vieira AA, Dias LM, Santos MY, Pereira GA, Oliveira JA (2020) Supply chain data integration: A literature review. J Ind Inf Integr 19:100161

    Google Scholar

  • Wang M, Yao J (2023) Optimizing the configuration of personalized service supply chain under resource orchestration mechanism. Electronic Commerce Research, 1–42

  • Wang X, Wang H, Bhandari B, Cheng L (2024) AI-empowered methods for smart energy consumption: A review of load forecasting, anomaly detection and demand response. Int J Precision Eng Manufacturing-Green Technol 11(3):963–993

    Google Scholar

  • Whig P, Remala R, Mudunuru KR, Quraishi S (2024) Integrating AI and quantum technologies for sustainable supply chain management. In: Handbook of research on integrating AI and quantum technologies in sustainable supply chains. IGI Global, pp 267–283. https://doi.org/10.4018/979-8-3693-4107-0.ch018

  • Wilson R (2006) 17th annual logistics report. Council of Supply Chain Management Professionals

  • World Economic Forum (2024) How technological advances are strengthening supply chains. Retrieved April 18, 2024, from https://www.weforum.org/agenda/2024/01/how-technological-advances-are-strengthening-supply-chains/

  • Yathiraju N (2022) Investigating the use of an artificial intelligence model in an ERP cloud-based system. Int J Electr Electron Comput 7(2):1–26

    Google Scholar

  • Yenugula M, Sahoo S, Goswami S (2023) Cloud computing in supply chain management: Exploring the relationship. Manag Sci Lett 13(3):193–210

    Google Scholar

  • Yin RK (2018) Case study research and applications: design and methods, 6th edn. SAGE Publications

  • Zhong J, Jia F, Chen X, Hong Y, Yu Y (2023) Internal and external collaboration and supply chain performance: A fit approach. Int J Log Res Appl 26(10):1267–1284

    Google Scholar

  • Zimon D, Tyan J, Sroufe R (2020) Drivers of sustainable supply chain management: practices for alignment with UN sustainable development goals. Int J Qual Res 14(1):219–236. https://doi.org/10.24874/IJQR14.01-14

Funding

No fund received for this project.

Author information

Authors and Affiliations

Contributions

Author 1: Dr. Ganesh Kumar R.

He performed the conceptualization, Methodology, Data collection and writing the study.

Author 2: Dr S Dinesh Kumar.

He analysis the dataset and conceptualization in the study.

Author 3: Dr C. Anirvinna.

He Performed the Analysis the overall concept, writing and editing.

Author 4: Dr Rapaka David Goodwin.

He analysis the paper and supervisor of this paper.

Corresponding author

Correspondence to Ganesh Kumar R.

Ethics declarations

Ethical approval

No ethics approval is required.

Consent to participate

Not Applicable.

Consent for publication

Not Applicable.

Conflicts of interest

The authors declare that they have no conflict of interest.

Additional information

About this article

Cite this article

R, G.K., S, D.K., Anirvinna, C. et al. An empirical assessment of technological advancements on supply chain management performance: a mixed-methods sem approach using smartpls. Oper Manag Res (2025). https://doi.org/10.1007/s12063-025-00556-x

  • Received
  • Revised
  • Accepted
  • Published
  • DOI https://doi.org/10.1007/s12063-025-00556-x

Keywords

  • Technological Advancements
  • Supply Chain Management (SCM)
  • Structural Equation Modeling (SEM)
  • India
WhatsApp