Capacity Planning to Cope with Demand Surges in Fourth-Party Logistics Networks under Chance-Constrained Service Levels

Jan 1, 2025·
Songchen Jiang
Songchen Jiang
,
M. Huang
,
Y. Liu
,
Y. Zhang
,
X. Wang
· 0 min read
Abstract
In this paper, we study a capacity planning problem for a fourth-party logistics network (4PLN) in the face of event-triggered demand surges. We aim to solve a stochastic optimization problem in order to minimize the total cost for the 4PLN under chance-constrained service-level targets, where the stochastic demand process is modeled as a summation of random variables with a Bernoulli term of jump processes. At the heart of our solution procedure is a greedy pricing and weighting strategy based cell-and-bound (G-C&B) algorithm designed for solving the SAA-based model. Compared to the standard C&B method, our G-C&B is able to largely reduce the number of non-essential cell enumerations and achieve reduced running time complexity. To mitigate the performance degradation due to large system scale and/or sample instance, we extend our base algorithm to a two-step Local Experimentation for Global Optimization strategy based cell-and-bound (LEGO-C&B) framework, in which we first solve a small-scale training problem to find the important scenarios (eliminating excessive cell enumerations) and then use the training results to expedite the full optimization problem. We evaluate the performance of our algorithms by conducting a comprehensive series of numerical experiments. Besides, our results also demonstrate how the effectiveness of our methods depends on various factors including (i) the algorithm’s hyperparameters such as the sample size and training ratio, and (ii) the 4PLN’s input parameters such as the network scale, surge demand frequency, and rental price of 3PL resource. Our results exhibit several qualitative insights.
Type
Publication
Computers & Operations Research
publications
Songchen Jiang
Authors
Ph.D. Student in Operations Research
I am a joint Ph.D. student in the College of Information Science and Engineering at Northeastern University, China, supervised by Prof. Min Huang, and the Institute of Operations Research and Analytics at the National University of Singapore, supervised by Prof. Chung-Piaw Teo. My research lies at the intersection of data-driven optimization, distributionally robust optimization, stochastic modeling, and supply chain analytics. I am particularly interested in developing tractable optimization models and algorithms for decision-making under uncertainty, with applications in inventory systems, supply chain network design, logistics planning, and operations management.