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Uncertain chance-constrained programming model for project scheduling problem
by
Ning, Yufu
, Wang, Xiao
in
Project scheduling problem
/ uncertain chance-constrained programming
/ uncertainty theory
2018
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Uncertain chance-constrained programming model for project scheduling problem
by
Ning, Yufu
, Wang, Xiao
in
Project scheduling problem
/ uncertain chance-constrained programming
/ uncertainty theory
2018
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Uncertain chance-constrained programming model for project scheduling problem
Journal Article
Uncertain chance-constrained programming model for project scheduling problem
2018
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Overview
In this paper, we consider an uncertain project scheduling problem, in which activity durations, with no historical data generally, are estimated by belief degrees and assumed to be uncertain variables. To achieve different management goals, we build three uncertain chance-constrained programming models for project scheduling problem, in which the chance constraint must reach a predetermined confidence level. Moreover, these models can all be transformed to their crisp forms, and an intelligent algorithm is designed to search the optimal schedule. Finally, a numerical example is presented to illustrate the usefulness of the proposed model.
Publisher
Taylor & Francis,Taylor & Francis, Ltd
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