Determining construction method patterns to automate and optimise scheduling – a graph-based approach

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Hong, Ying
Hovhannisyan, Vahan
Xie, Haiyan
Brilakis, Ioannis
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2021
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Abstract

Creating quality construction schedules to mitigate delays often relies on experience. The lack of dissemination of historic decision reasoning makes it harder. This study proposes a graph-based method to find the time- and risk-efficient construction method patterns from historic projects to help schedulers improve productivity and accuracy. The method leverages schedule data obtained from a Tier-1 contractor and validates for excavation activities. The results indicate that the most time-efficient excavation activities can be done in 0.6% of total project time. The proposed method can help industry professionals standardise scheduling guidelines and automate the generation of construction schedules for critical subtasks.

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Proceedings of the 2021 European Conference on Computing in Construction
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© 2021 European Council on Computing in Construction. The attached file is reproduced here in accordance with the copyright policy of the publisher. Please refer to the conference's website for access to the definitive, published version.
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Civil engineering
Applied computing
Construction schedules
construction method pattern
graph-based classification
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Hong, Y; Hovhannisyan, V; Xie, H; Brilakis, I, Determining construction method patterns to automate and optimise scheduling – a graph-based approach, Proceedings of the 2021 European Conference on Computing in Construction, 2021