Abstract
The importance of acquiring and sharing real-time disruption information in the supply chain for proper deployment of disruption mitigation strategies is well-known in the literature. However, studies in this direction are limited in the domain of supply chain dynamics. In this paper, we investigate the effect of sharing real-time disruption and inventory information to mitigate supplier disruption through proper order allocation between the suppliers. We consider a three-echelon manufacturing supply chain network where a manufacturer and first-tier suppliers adopt dual sourcing. At the first-tier supplier level, the supply chain network is subjected to random disruption. Using control engineering modeling and simulation, we first evaluate the value of information sharing in disruption mitigation efforts, and further, we examine the effect of various control system design configurations of the manufacturer to maximize its dynamic performance in the information shared supply chain settings. The results show that, in the case of upstream supplier disruption, information transparency on the vulnerabilities among supply chain members improves the performance. Further, it is observed that for a given control structure, the selection of decision parameters affect the dynamic performance of the supply chain with proper order allocation strategy during the disruption. The findings of this research can provide the basis for managers to make informed decisions about using mitigation strategies with their supply chain partners.









Similar content being viewed by others
References
Banerjee S, Golhar DY (2017) Economic analysis of demand uncertainty and delayed information sharing in a third-party managed supply chain. Prod Plan Control 28(14):1107–1115
Barbosa MW, de la Vicente AC, Ladeira MB, de Oliveira MPV (2018) Managing supply chain resources with Big Data Analytics: a systematic review. Int J Logist Res Appl 21(3):177–200
Blackhurst J, Craighead CW, Elkins D, Handfield RB (2005) An empirically derived agenda of critical research issues for managing supply-chain disruptions. Int J Prod Res 43(19):4067–4081
Bogataj D, Bogataj M, Hudoklin D (2017) Mitigating risks of perishable products in the cyber-physical systems based on the extended MRP model. Int J Prod Econ 193:51–62
Bueno-Solano A, Cedillo-Campos MG (2014) Dynamic impact on global supply chains performance of disruptions propagation produced by terrorist acts. Transp Res Part E Logist Transp Rev 61:1–12
Cachon GP, Fisher M (2000) Supply chain inventory management and the value of shared information. Manag Sci 46(8):1032–1048
Cachon GP, Lariviere MA (2001) Contracting to assure supply: how to share demand forecasts in a supply chain. Manag Sci 47(5):629–646
Cannella S, Ciancimino E, Framinan JM (2011) Inventory policies and information sharing in multi-echelon supply chains. Prod Plan Control 22(7):649–659
Cannella S, Framinan JM, Bruccoleri M et al (2015a) The effect of inventory record inaccuracy in information exchange supply chains. Eur J Oper Res 243(1):120–129
Cannella S, López-Campos M, Dominguez R et al (2015b) A simulation model of a coordinated decentralized supply chain. Int Trans Oper Res 22(4):735–756
Cao Q, Schniederjans DG, Schniederjans M (2017) Establishing the use of cloud computing in supply chain management. Oper Manag Res 10(1–2):47–63
Cedillo-Campos MG, Sánchez-Ramírez C, Vadali S et al (2014) Supply chain dynamics and the “cross-border effect”: the U.S.–Mexican border’s case. Comput Ind Eng 72:261–273
Chen F (1998) Echelon reorder points, installation reorder points, and the value of centralized demand information. Manag Sci 44(12-part-2):S221–S234
Chen F (1999) Decentralized supply chains subject to information delays. Manag Sci 45(8):1076–1090
Chen F (2003) Information sharing and supply chain coordination. Handb Oper Res Manag Sci 11:341–421
Chopra S, Sodhi MS (2012) Managing risk to avoid supply-chain breakdown. MIT Sloan Manag Rev 46(1):53
Choudhary D, Shankar R (2015) The value of VMI beyond information sharing under time-varying stochastic demand. Int J Prod Res 53(5):1472–1486
Choudhary D, Shankar R, Tiwari MK, Purohit AK (2016) VMI versus information sharing: an analysis under static uncertainty strategy with fill rate constraints. Int J Prod Res 54(13):3978–3993
Costantino F, Di Gravio G, Shaban A, Tronci M (2014) The impact of information sharing and inventory control coordination on supply chain performances. Comput Ind Eng 76:292–306
Datta PP, Christopher MG (2011) Information sharing and coordination mechanisms for managing uncertainty in supply chains: a simulation study. Int J Prod Res 49:765–803
Dejonckheere J, Disney SM, Lambrecht MR, Towill DR (2003) Measuring and avoiding the bullwhip effect: a control theoretic approach. Eur J Oper Res 147(3):567–590
Dejonckheere J, Disney SM, Lambrecht MR, Towill DR (2004) The impact of information enrichment on the Bullwhip effect in supply chains: a control engineering perspective. Eur J Oper Res 153(3):727–750
Disney SM, Towill DR (2003) The effect of vendor managed inventory (VMI) dynamics on the Bullwhip effect in supply chains. Int J Prod Econ 85(2):199–215
Disney SM, Potter AT, Gardner BM (2003) The impact of vendor managed inventory on transport operations. Transp Res Part E Logist Transp Rev 39(5):363–380
Dominguez R, Cannella S, Barbosa-Póvoa AP, Framinan JM (2018a) Information sharing in supply chains with heterogeneous retailers. Omega 79:116–132
Dominguez R, Cannella S, Barbosa-Póvoa AP, Framinan JM (2018b) OVAP: a strategy to implement partial information sharing among supply chain retailers. Transp Res Part E Logist Transp Rev 110:122–136
Du S, Zhu Y, Nie T, Yu H (2016) Loss-averse preferences in a two-echelon supply chain with yield risk and demand uncertainty. Oper Res 18(2):361–388
Esmaeili M, Naghavi MS, Ghahghaei A (2017) Optimal (R, Q) policy and pricing for two-echelon supply chain with lead time and retailer’s service-level incomplete information. J Ind Eng Int 14(1):1–11
Fawcett SE, Wallin C, Allred C et al (2011) Information technology as an enabler of supply chain collaboration: a dynamic-capabilities perspective. J Supply Chain Manag 47(1):38–59
Forrester JW (1958) Industrial dynamics: a major breakthrough for decision makers. Harv Bus Rev 36(4):37–66
Forrester JW (1961) Industrial dynamics. MIT Press, Cambridge
Ganesh M, Raghunathan S, Rajendran C (2014a) Distribution and equitable sharing of value from information sharing within serial supply chains. IEEE Trans Eng Manag 61(2):225–236
Ganesh M, Raghunathan S, Rajendran C (2014b) The value of information sharing in a multi-product, multi-level supply chain: impact of product substitution, demand correlation, and partial information sharing. Decis Support Syst 58:79–94
Gavirneni S, Kapuscinski R, Tayur S (1999) Value of Information in capacitated supply chains. Manag Sci 45(1):16–24
Giard V, Sali M (2013) The bullwhip effect in supply chains: a study of contingent and incomplete literature. Int J Prod Res 51(13):3880–3893
Giri BC, Sarker BR (2016) Coordinating a two-echelon supply chain under production disruption when retailers compete with price and service level. Oper Res 16(1):71–88
Gonul Kochan C, Nowicki DR, Sauser B, Randall WS (2018) Impact of cloud-based information sharing on hospital supply chain performance: a system dynamics framework. Int J Prod Econ 195:168–185
Gu Q, Gao T (2017) Production disruption management for R/M integrated supply chain using system dynamics methodology. Int J Sustain Eng 10:44–57
Gu Q, Visich JK, Li K, Wang Z (2017) Exploiting timely demand information in determining production lot-sizing: an exploratory study. Int J Prod Res 55:4531–4543
Gunasekaran A, Papadopoulos T, Dubey R et al (2017) Big data and predictive analytics for supply chain and organizational performance. J Bus Res 70:308–317
Ha AY, Tian Q, Tong S (2017) Information sharing in competing supply chains with production cost reduction. Manuf Serv Oper Manag 19:246–262
Hendricks KB, Singhal VR (2003) The effect of supply chain glitches on shareholder wealth. J Oper Manag 21(5):501–522
Hendricks KB, Singhal VR (2005) An empirical analysis of the effect of supply chain disruptions on long-run stock price performance and equity risk of the firm. Prod Oper Manag 14(1):35–52
Huang B, Iravani SMR (2005) Production control policies in supply chains with selective-information sharing. Oper Res 53(4):662–674
Huang Y, Wang Z (2017) Information sharing in a closed-loop supply chain with technology licensing. Int J Prod Econ 191:113–127
Huang GQ, Lau JSK, Mak KL (2003) The impacts of sharing production information on supply chain dynamics: a review of the literature. Int J Prod Res 41(7):1483–1517
Ivanov D (2017) Simulation-based ripple effect modelling in the supply chain. Int J Prod Res 55(7):2083–2101
Ivanov D, Rozhkov M (2017) Coordination of production and ordering policies under capacity disruption and product write-off risk: an analytical study with real-data based simulations of a fast moving consumer goods company. Ann Oper Res. https://doi.org/10.1007/s10479-017-2643-8
John S, Naim M, Towill DR (1994) Dynamic analysis of a WIP compensated decision support system. Int J Manuf Syst Des 1(4):283–297
Kouvelis P, Chambers C, Wang H (2006) Supply chain management research and production and operations management: review, trends, and opportunities. Prod Oper Manag 15(3):449–469
Kusiak A (2018) Smart manufacturing. Int J Prod Res 56(1–2):508–517
Lalwani CS, Disney SM, Towill DR (2006) Controllable, observable and stable state space representations of a generalized order-up-to policy. Int J Prod Econ 101(1):172–184
Lau JSK, Huang GQ, Mak KL (2002) Web-based simulation portal for investigating impacts of sharing production information on supply chain dynamics from the perspective of inventory allocation. Integr Manuf Syst 13(5):345–358
Lau JSK, Huang GQ, Mak KL (2004) Impact of information sharing on inventory replenishment in divergent supply chains. Int J Prod Res 42(5):919–941
Lee HL, Padmanabhan V, Whang S (1997a) Information distortion in a supply chain: the bullwhip effect. Manag Sci 43(4):546–558
Lee HL, Padmanabhan V, Whang S (1997b) The bullwhip effect in supply chains. MIT Sloan Manag Rev 38(3):93
Lewis BM, Erera AL, Nowak MA, Chelsea CW (2013) Managing inventory in global supply chains facing port-of-entry disruption risks. Transp Sci 47(2):162–180
Li J, Sikora R, Shaw MJ, Woo Tan G (2006) A strategic analysis of inter organizational information sharing. Decis Support Syst 42(1):251–266
Li H, Pedrielli G, Lee LH, Chew EP (2016) Enhancement of supply chain resilience through inter-echelon information sharing. Flex Serv Manuf J 29(2):1–26
Lin H-F (2014) Understanding the determinants of electronic supply chain management system adoption: using the technology–organization–environment framework. Technol Forecast Soc Change 86:80–92
Lin J, Naim MM, Purvis L, Gosling J (2016) The extension and exploitation of the inventory and order based production control system archetype from 1982 to 2015. Int J Prod Econ 194:135–152
Liu Y, Wang L, Wang XV et al (2018) Scheduling in cloud manufacturing: state-of-the-art and research challenges. Int J Prod Res. https://doi.org/10.1080/00207543.2018.1449978
Lv Q (2017) Supply chain coordination game model based on inventory information sharing. J Interdiscip Math 20(1):35–46
Macdonald JR, Zobel CW, Melnyk SA, Griffis SE (2018) Supply chain risk and resilience: theory building through structured experiments and simulation. Int J Prod Res 56(12):4337–4355
Melnyk SA, Zobel CW, Macdonald JR, Griffis SE (2014) Making sense of transient responses in simulation studies. Int J Prod Res 52(3):617–632
Montoya-Torres JR, Ortiz-Vargas DA (2014) Collaboration and information sharing in dyadic supply chains: a literature review over the period 2000–2012. Estud Gerenc 30(133):343–354
Munoz A, Dunbar M (2015) On the quantification of operational supply chain resilience. Int J Prod Res 53(22):6736–6751
Muzaffar A, Deng S, Malik MN (2017) Contracting mechanism with imperfect information in a two-level supply chain. Oper Res. https://doi.org/10.1007/s12351-017-0327-4
Sarimveis H, Patrinos P, Tarantilis CD, Kiranoudis CT (2008) Dynamic modeling and control of supply chain systems: a review. Comput Oper Res 35(11):3530–3561
Sarkar S, Kumar S (2015) A behavioral experiment on inventory management with supply chain disruption. Int J Prod Econ 169:169–178
Scheibe KP, Blackhurst J (2018) Supply chain disruption propagation: a systemic risk and normal accident theory perspective. Int J Prod Res 56(1–2):43–59
Schmidt W, Raman A (2012) When supply-chain disruptions matter. Harvard Business School, Boston
Schmitt TG, Kumar S, Stecke KE et al (2017) Mitigating disruptions in a multi-echelon supply chain using adaptive ordering. Omega 68:185–198
Shang W, Ha AY, Tong S (2015) Information sharing in a supply chain with a common retailer. Manag Sci 62(1):245–263
Sheffi Y (2005) The resilient enterprise: overcoming vulnerability for competitive advantage. MIT Press, Cambridge
Sheffi Y (2015) Preparing for disruptions through early detection. MIT Sloan Manag Rev 57(1):31
Shnaiderman M, Ouardighi FE (2014) The impact of partial information sharing in a two-echelon supply chain. Oper Res Lett 42(3):234–237
Snyder LV, Tomlin B (2008) Inventory management with advanced warning of disruptions. PC Rossin College of Engineering and Applied Sciences, Lehigh University, Bethlehem
Snyder LV, Atan Z, Peng P et al (2016) OR/MS models for supply chain disruptions: a review. IIE Trans 48(2):89–109
Song J-S, Zipkin PH (1996) Inventory control with information about supply conditions. Manag Sci 42(10):1409–1419
Spekman R, Davis EW (2016) The extended enterprise: a decade later. Int J Phys Distrib Logist Manag 46(1):43–61
Spiegler VLM, Naim MM, Wikner J (2012) A control engineering approach to the assessment of supply chain resilience. Int J Prod Res 50(21):6162–6187
Spiegler VLM, Potter AT, Naim MM, Towill DR (2015) The value of nonlinear control theory in investigating the underlying dynamics and resilience of a grocery supply chain. Int J Prod Res 54(1):265–285
Srivathsan S, Kamath M (2017) Performance modeling of a two-echelon supply chain under different levels of upstream inventory information sharing. Comput Oper Res 77:210–225
Sterman JD (1989) Modeling managerial behavior: misperceptions of feedback in a dynamic decision making experiment. Manag Sci 35(3):321–339
Sterman J (2000) Business dynamics: systems thinking and modeling for a complex world. Irwin/McGraw-Hill, New York
Tang CS (2006) Perspectives in supply chain risk management. Int J Prod Econ 103(2):451–488
Tao Y, Lee LH, Chew EP (2016) Quantifying the effect of sharing information in a supply chain facing supply disruptions. Asia-Pac J Oper Res 33(4):1650029
Tomlin B (2009) Impact of supply learning when suppliers are unreliable. Manuf Serv Oper Manag 11(2):192–209
Towill DR (1982) Dynamic analysis of an inventory and order based production control system. Int J Prod Res 20(6):671–687
Townsend M, Le Quoc T, Kapoor G et al (2018) Real-Time business data acquisition: how frequent is frequent enough? Inf Manag 55(4):422–429
van der Spoel S, Amrit C, van Hillegersberg J (2017) Predictive analytics for truck arrival time estimation: a field study at a European distribution centre. Int J Prod Res 55(17):5062–5078
Wakolbinger T, Cruz JM (2011) Supply chain disruption risk management through strategic information acquisition and sharing and risk-sharing contracts. Int J Prod Res 49(13):4063–4084
Wang XY, Zhang JH (2010) Simulation research of the retailer’s ordering strategy based on system dynamics. In: 2010 international conference on management and service science. IEEE, pp 1–4
Wang X, Disney SM, Wang J (2012) Stability analysis of constrained inventory systems with transportation delay. Eur J Oper Res 223(1):86–95
Wang X, Disney SM, Wang J (2014) Exploring the oscillatory dynamics of a forbidden returns inventory system. Int J Prod Econ 147:3–12
White AS, Censlive M (2013) Using control theory to optimise profit in APVIOBPCS inventory systems. J Manuf Syst 32(4):680–688
Wikner J, Naim MM, Spiegler VLM, Lin J (2017) IOBPCS based models and decoupling thinking. Int J Prod Econ 194:153–166
Wilson MC (2007) The impact of transportation disruptions on supply chain performance. Transp Res Part E Logist Transp Rev 43(4):295–320
Xie W, Ma J (2014) Optimization of a vendor managed inventory supply chain based on complex fuzzy control theory. WSEAS Trans Syst 13:429–439
Xu X (2012) From cloud computing to cloud manufacturing. Robot Comput-Integr Manuf 28(1):75–86
Yang T, Fan W (2016) Information management strategies and supply chain performance under demand disruptions. Int J Prod Res 54(1):8–27
Yang Z, Aydın G, Babich V, Beil DR (2008) Supply disruptions, asymmetric information, and a backup production option. Manag Sci 55(2):192–209
Yang T, Wen Y-F, Wang F-F (2011) Evaluation of robustness of supply chain information-sharing strategies using a hybrid Taguchi and multiple criteria decision-making method. Int J Prod Econ 134(2):458–466
Ye S, Xiao Z, Zhu G (2015) Identification of supply chain disruptions with economic performance of firms using multi-category support vector machines. Int J Prod Res 53(10):3086–3103
Yu Y, Cao RQ, Schniederjans D (2017) Cloud computing and its impact on service level: a multi-agent simulation model. Int J Prod Res 55(15):4341–4353
Zhang C, Tan G-W, Robb DJ, Zheng X (2006) Sharing shipment quantity information in the supply chain. Omega 34(5):427–438
Zsidisin GA, Smith ME (2005) Managing supply risk with early supplier involvement: a case study and research propositions. J Supply Chain Manag 41(4):44–57
Author information
Authors and Affiliations
Corresponding author
Appendix: Model equations
Rights and permissions
About this article
Cite this article
Thomas, A.V., Mahanty, B. Dynamic assessment of control system designs of information shared supply chain network experiencing supplier disruption. Oper Res Int J 21, 425–451 (2021). https://doi.org/10.1007/s12351-018-0435-9
Received:
Revised:
Accepted:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s12351-018-0435-9