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Optimization Of Temporal Networks Under Uncertainty 1st Edition Wolfram Wiesemann Auth

  • SKU: BELL-2513702
Optimization Of Temporal Networks Under Uncertainty 1st Edition Wolfram Wiesemann Auth
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Optimization Of Temporal Networks Under Uncertainty 1st Edition Wolfram Wiesemann Auth instant download after payment.

Publisher: Springer-Verlag Berlin Heidelberg
File Extension: PDF
File size: 1.9 MB
Pages: 160
Author: Wolfram Wiesemann (auth.)
ISBN: 9783642234262, 3642234267
Language: English
Year: 2012
Edition: 1

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Optimization Of Temporal Networks Under Uncertainty 1st Edition Wolfram Wiesemann Auth by Wolfram Wiesemann (auth.) 9783642234262, 3642234267 instant download after payment.

Many decision problems in Operations Research are defined on temporal networks, that is, workflows of time-consuming tasks whose processing order is constrained by precedence relations. For example, temporal networks are used to model projects, computer applications, digital circuits and production processes. Optimization problems arise in temporal networks when a decision maker wishes to determine a temporal arrangement of the tasks and/or a resource assignment that optimizes some network characteristic (e.g. the time required to complete all tasks). The parameters of these optimization problems (e.g. the task durations) are typically unknown at the time the decision problem arises. This monograph investigates solution techniques for optimization problems in temporal networks that explicitly account for this parameter uncertainty. We study several formulations, each of which requires different information about the uncertain problem parameters.

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