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Please use this identifier to cite or link to this item: http://hdl.handle.net/1903/9537

Title: Industrial Flexibility in Theory and Practice
Authors: Reindorp, Matthew
Advisors: Fu, Michael
Goyal, Manu
Department/Program: Business and Management: Decision & Information Technologies
Type: Dissertation
Sponsors: Digital Repository at the University of Maryland
University of Maryland (College Park, Md.)
Keywords: 0546 Engineering, Industrial
0796 Operations Research
advanced available-to-promise, flexibility, product launch, real options, reinforcement learning, reinvestment timing
Issue Date: 2009
Abstract: At the heart of any decision problem is some degree of "flexibility" in how to act. Most often, we aim to extract greatest possible value from this inherent flexibility. The three essays compiled here are aligned with this same general aim, but we have an important secondary concern: to highlight the value of flexibility itself in the various situations we study. In the first essay, we consider the timing of an action: when to replace obsolete subsystems within an extensive, complex infrastructure. Such replacement action, known as capital renewal, must balance uncertainty about future profitability against uncertainty about future renewal costs. Treating renewal investments as real options, we derive the unique, closed-form optimal solution to the infinite horizon version of this problem and determine the total present value of an institution's capital renewal options. We investigate the sensitivity of the solution to variations in key problem parameters. The second essay addresses the promising of lead times in a make-to-order environment, complicated by the need to serve multiple customer classes with differing priority levels. We tackle this problem with a "model free" approach: after preparing a discrete-event simulation of a make-to-order production system, we determine a policy for lead time promising through application of a reinforcement learning algorithm. The third essay presents an empirical analysis of new product launches in the automotive industry, showing that manufacturing flexibility is one key indicator of superior productivity during launch. We explore the financial dimensions of the apparent productivity differences and show that the use of flexible manufacturing increases an automobile plant's likelihood of being chosen to host a new product launch.
URI: http://hdl.handle.net/1903/9537
Appears in Collections:UM Theses and Dissertations
Decision, Operations & Information Technologies Theses and Dissertations

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