Efficient propagation of uncertainties in manufacturing supply chains: Time buckets, L-leap, and multilevel Monte Carlo methods

Uncertainty propagation of large-scale discrete supply chains can be prohibitive when numerous events occur during the simulated period and when discrete-event simulations (DES) are costly. We present a time-bucket method to approximate and accelerate the DES of supply chains. Its stochastic version...

Full description

Bibliographic Details
Main Authors: Nai-Yuan Chiang, Yiqing Lin, Quan Long
Format: Article
Language:English
Published: Elsevier 2020-01-01
Series:Operations Research Perspectives
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S221471601930140X
Description
Summary:Uncertainty propagation of large-scale discrete supply chains can be prohibitive when numerous events occur during the simulated period and when discrete-event simulations (DES) are costly. We present a time-bucket method to approximate and accelerate the DES of supply chains. Its stochastic version, which we call the L(logistic)-leap method, can be viewed as an extension of the leap methods (e.g., τ-leap [36]and D-leap [6] developed in the chemical engineering community for the acceleration of stochastic DES of chemical reactions). The L-leap method instantaneously updates the system state vector at discrete time points, and the production rates and policies of a supply chain are assumed to be stationary during each time bucket. We propose using the multilevel Monte Carlo (MLMC) method to efficiently propagate the uncertainties in a supply chain network, where the levels are naturally defined by the sizes of the time buckets of the simulations. We demonstrate the efficiency and accuracy of our methods using four numerical examples derived from a real-world manufacturing material flow application. In these examples, our multilevel L-leap approach can be faster than the standard Monte Carlo (MC) method by one or two orders of magnitude without compromising accuracy.
ISSN:2214-7160