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    <link>http://hdl.handle.net/1813/11728</link>
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    <pubDate>Sat, 25 May 2013 15:13:11 GMT</pubDate>
    <dc:date>2013-05-25T15:13:11Z</dc:date>
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      <title>NONLINEAR OPTIMIZATION FOR PROJECT SCHEDULING AND RESOURCE ALLOCATION UNDER UNCERTAINTY</title>
      <link>http://hdl.handle.net/1813/11724</link>
      <description>Title: NONLINEAR OPTIMIZATION FOR PROJECT SCHEDULING AND RESOURCE ALLOCATION UNDER UNCERTAINTY
Authors: Mahmoudoff, Ali
Abstract: Project planning and scheduling when there are both resource constraints and&#xD;
uncertainty in task durations is an important and complex problem. There is a long&#xD;
history of work on deterministic resource-constrained project scheduling problems,&#xD;
but efforts directed at stochastic versions of that problem are fewer and more recent.&#xD;
Incorporating the ability to reallocate resources among tasks to change the&#xD;
characteristics of their duration probability distributions adds another important&#xD;
dimension to the problem, and enables integration of project planning and scheduling.&#xD;
Among the small number of previous works on this subject, there are two very&#xD;
different perspectives. Golenko-Ginzburg and Gonik (1997, 1998) have created a&#xD;
simulation-based approach that ?operates? the project through time and attempts to&#xD;
optimize locally regarding decisions on starting specific tasks at specific times.&#xD;
Turnquist and Nozick (2004) have formulated a nonlinear optimization model to plan&#xD;
resource allocations and schedule decisions a priori. This has the advantage of taking&#xD;
a global perspective on the project in making resource allocation decisions, but it is&#xD;
not adaptive to the experience with earlier tasks when making later decisions in the&#xD;
same way that the simulation approach is. Although the solution to their model&#xD;
produces a ?baseline schedule? (i.e., times when tasks are planned to start), the&#xD;
formulation puts much greater emphasis on resource allocation decisions.&#xD;
The paper by Turnquist and Nozick (2004) describes the problem formulation&#xD;
as a nonlinear optimization. For small problem instances (up to about 30 tasks), good&#xD;
solutions can be found using standard nonlinear programming packages(e.g., NPSOL).&#xD;
However, for larger problems, the standard packages often fail to find any solution in&#xD;
a reasonable amount of computational time. One major contribution of this&#xD;
dissertation is the development of a solution method that can solve larger problem&#xD;
instances efficiently and reliably. In this dissertation, we recommend using the&#xD;
partially augmented Lagrangian (PAL) method to solve the suggested nonlinear&#xD;
optimization. The test problems considered here include projects with up to 90 tasks,&#xD;
and solutions to the 90-task problems take about 2 minutes on a desktop PC.&#xD;
A second contribution of this dissertation is exploration of insights that can be&#xD;
gained through systematic variation of the basic parameters of the model formulation&#xD;
on a given problem. These insights have both computational and managerial&#xD;
implications for practical application of the model.</description>
      <pubDate>Tue, 01 Aug 2006 00:00:00 GMT</pubDate>
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      <dc:date>2006-08-01T00:00:00Z</dc:date>
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