PhD Defense by Zeynab Bahrami Bidoni

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Event Details
  • Date/Time:
    • Monday December 5, 2022
      10:00 am - 12:00 pm
  • Location: TEAMS
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  • URL: TEAMS
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Summaries

Summary Sentence: Predictive Demand Response Modeling for Logistic Systems Innovation and Optimization

Full Summary: No summary paragraph submitted.

Title: Predictive Demand Response Modeling for Logistic Systems Innovation and Optimization

Date: 5th Dec 2022

Time: 10 am – 12 noon

The meeting link:  Click here to join the meeting

 

Zeynab Bahrami Bidoni

Machine Learning Ph.D. candidate

H. Milton Stewart School of Industrial and Systems Engineering

Georgia Institute of Technology

 

Committee Members:

1   Dr. Benoit Montreuil (Advisor), ISYE, Georgia Institute of Technology

2   Dr. Kamran Paynabar, ISYE, Georgia Institute of Technology

3   Dr. Yao Xie, ISYE, Georgia Institute of Technology

4   Dr. Frederick Benaben, ISYE, Georgia Institute of Technology

5   Dr. Nico SCHMID, IÉSEG - School of Management

 

Abstract

Purpose In the ever-increasing dynamics of global business markets, logistic systems must optimize the usage of all possible sources to innovate continually. Scenario-based demand prediction plays an important role in the effective economic operations and planning of logistics. However, many uncertainties and demand variability, which are associated with innovative changes, complicate demand forecasting and expose system operators to the risk of failing to meet demand.

This study aims to present a new approach to predictively explore how customer preferences will change and consequently demand would respond to the new setup of services caused by an innovative transformation of the logistic layout. The critical challenge is that the demand (customer) responses to the innovative changes and corresponding adjustments are uncertain and unknown in practice, and there is no historical data to learn from and directly support the predictive model.

In this dissertation, we are dealing with three different cases of predictive demand response modeling which have been presented in the following chapters. Chapter 1 provided a novel approach for predictively modeling probabilistic customer behavior over new service offers which are much faster than ever done before by a large Chinese parcel-delivery service provider. In Chapter 2, an Interactive risk analysis tool has been proposed for predicting scenario-based erection-site demand schedules under uncertainty of disruptive events in construction projects whose logistics transformed from traditional to modular style. To advance in their logistics designs and capacity adjustments, and also to enhance their capability for taking more market share, it is crucial to estimate potential future demand for modular construction and corresponding probable projects in terms of their potential location, size, and characteristics. For this purpose, Chapter 3 introduces a methodology to estimate scenario-based future potential demand (projects) for modular construction with implementation over the US metropolitan statistical areas.

 

 

 

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Phd Defense
Status
  • Created By: Tatianna Richardson
  • Workflow Status: Published
  • Created On: Nov 30, 2022 - 5:50pm
  • Last Updated: Nov 30, 2022 - 5:50pm