DocumentCode
766478
Title
Analytical Framework for the Management of Risk in Supply Chains
Author
Gaonkar, Roshan S. ; Viswanadham, N.
Author_Institution
Asia Pacific, Nat. Univ. of Singapore
Volume
4
Issue
2
fYear
2007
fDate
4/1/2007 12:00:00 AM
Firstpage
265
Lastpage
273
Abstract
In this paper, we develop a framework to classify supply chain risk-management problems and approaches for the solution of these problems. We argue that risk-management problems need to be handled at three levels: 1) strategic, 2) operational, and 3) tactical. In addition, risk within the supply chain might manifest itself in the form of deviations, disruptions, and disasters. To handle unforeseen events in the supply chain, there are two obvious approaches: 1) to design chains with built-in risk tolerance and 2) to contain the damage once the undesirable event has occurred. Both of these approaches require a clear understanding of undesirable events that may take place in the supply chain and the associated consequences and impacts from these events. Having described these approaches, we then focus our efforts on mapping out the propagation of events in the supply chain due to supplier nonperformance, and employ our insight to develop two mathematical programming-based preventive models for strategic level deviation and disruption management. The first model, a simple integer quadratic optimization model, adapted from the Markowitz model, determines optimal partner selection with the objective of minimizing both the operational cost and the variability of total operational cost. The second model, a simple mixed integer programming optimization model, adapted from the credit risk minimization model, determines optimal partner selection such that the supply shortfall is minimized even in the face of supplier disruptions. Hence, both of these models offer possible approaches to robust supply chain design
Keywords
cost reduction; disasters; failure analysis; integer programming; process design; process planning; quadratic programming; risk management; statistical analysis; supply chain management; tolerance analysis; Markowitz model; cause-consequence diagrams; credit risk minimization model; disasters; disruption management; failure analysis; integer quadratic optimization model; mathematical programming-based preventive models; mean-variance optimization; mixed integer programming optimization model; operational cost; optimal partner selection; risk management; risk tolerance; robust supply chain design; strategic level deviation; supplier nonperformance; supply chain planning; Aerospace industry; Assembly; Cost function; Logistics; Manufacturing; Production; Risk analysis; Risk management; Supply chain management; Supply chains; Cause–consequence diagrams; failure analysis; mean-variance optimization; partner selection; risk management; supply chain design; supply chain planning; supply chain risk management;
fLanguage
English
Journal_Title
Automation Science and Engineering, IEEE Transactions on
Publisher
ieee
ISSN
1545-5955
Type
jour
DOI
10.1109/TASE.2006.880540
Filename
4147551
Link To Document