《Incorporating Practicability into Genetic Algorithm-Based Time-Cost Optimization》.pdf
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Incorporating Practicability into Genetic Algorithm-Based
Time-Cost Optimization
Bryan Christopher Que1
Abstract: Optimization problems in construction scheduling, such as time-cost optimization, can be effectively solved using genetic
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d algorithms GAs. This paper presents an approach that makes GA-based time-cost optimization viable for real world problems. Practi-
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r cability is incorporated through the integration of a project management system to the GA system. The approach takes advantage of the
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r powerful scheduling functionality of the project management system in evaluating project completion dates during optimization. The
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h approach ensures that all scheduling parameters, including activity relationships, lags, calendars, constraints, resources, and progress, are
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l considered in determining the project completion date, thus allowing comprehensive and realistic evaluations to be made during
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; optimization.
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e DOI: 10.1061/ASCE0733128:2139
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n CE Database keywords: Optimization; Scheduling; Construction management; Algorithms; Project management.
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. Introduction Genetic algorithms GAs are a set of tools based on natural
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C selection and the mechanisms of population genetics developed
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A Optimization problems in construction scheduling are tradition- by John Holland. GAs employ a random yet directed
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