Business analytics for intermodal capacity management
Document Type
Article
Publication Date
3-1-2020
Abstract
Network operations often suffer from chronic asset imbalance over time and across locations. This paper addresses the issue in the intermodal industry. The problem is mainly driven by myopic policies, environmental uncertainty, and network interdependence. To address the problem, we develop a unified framework that integrates two core operations: container repositioning and load acceptance. The central piece is the scarcity pricing scheme, which internalizes the externalities each acceptance imposes over time and across locations. The scheme plays two crucial roles: to transmit dynamic scarcity information and to incentivize container repositioning. It is most effective when network imbalance and supply risk are high. Exploiting random capacity and heterogeneous lead time, we further refine the load acceptance policy and develop efficient algorithms. We demonstrate that our approach can dynamically reduce network imbalance and improve efficiency. As such, our work provides analytical tools and insights on how to manage network capacity, when the information is dispersed and evolving over time.
Identifier
85084412261 (Scopus)
Publication Title
Manufacturing and Service Operations Management
External Full Text Location
https://doi.org/10.1287/MSOM.2018.0739
e-ISSN
15265498
ISSN
15234614
First Page
310
Last Page
329
Issue
2
Volume
22
Grant
16-TMTSD-NJ-0008
Fund Ref
U.S. Department of Agriculture
Recommended Citation
Gao, Long; Shi, Jim Junmin; Gorman, Michael F.; and Luo, Ting, "Business analytics for intermodal capacity management" (2020). Faculty Publications. 5459.
https://digitalcommons.njit.edu/fac_pubs/5459
