中国科学院大学MBA教育管理中心 【“SEM管理科学”青年学者论坛】胡明:Product and Price Competition with Selection of Unique and Common Features and Different Quality Levels(6月7日) - 中国科学院大学MBA教育管理中心

【“SEM管理科学”青年学者论坛】胡明:Product and Price Competition with Selection of Unique and Common Features and Different Quality Levels(6月7日)

  • 日期:2023-05-31

 

报告题目Product and Price Competition with Selection of Unique and Common Features and Different Quality Levels

 

报  告  人胡明 多伦多大学

 

报告时间2023年6月7日(周三),10:00-11:30

 

报告地点中国科学院大学中关村校区教学楼S406

 

腾讯会议873-9767-9281

 

内容摘要

The pandemic time witnessed a significant increase in port congestion, leading to shipping delays and rising costs for shippers. We build a fluid model to investigate how disruptions at one port can affect both the disrupted port and its counterpart in another country in a circulatory system where a stream of fleets transport goods back and forth between the two ports. Port disruption leads to two types of congestion: the inbound backlog, which occurs when ships are unable to enter the disrupted port, and the outbound backlog, which arises when goods are unable to be loaded onto ships for transport to other ports. We provide an analytical expression for the recovery time of the system of two ports (from when the disruption ends to when the system goes back to normal) and track the evolution of backlogs of goods and ships during the recovery process. We identify a whiplash effect in the outbound backlog level at both ports, which bears a resemblance to the commonly known “bullwhip effect”. Notably, the whiplash effect manifests in three primary features, namely oscillation, attenuation, and lag. Furthermore, we extend our analysis to a network of ports and show that the key findings and insights derived from the two-port model still hold in the multi-port bipartite system. This finding confirms that, despite its parsimony, the two-port system sufficiently captures the impact of port disruptions. We also extend the fluid model to a diffusion approximation model. Finally, we apply machine learning techniques to predict the time that vessels spend in the Shanghai port and show that our proposed model reduces prediction errors compared to the benchmark, demonstrating the potential and power of our model in helping to predict and mitigate the impact of disruptions in a circulatory transportation system, e.g., those in container shipping and air traveling industries.

 

主讲人简介

Ming Hu is the University of Toronto Distinguished Professor of Business Operations and Analytics, a professor of OM at the Rotman School of Management, and an Amazon Scholar. He currently serves as the editor-in-chief of NRL, an associate editor of MS, OR, and MSOM, and a senior editor of POM.