Uncovering the fragility of large-scale engineering projects

Engineering projects are notoriously hard to complete on-time, with project delays often theorised to propagate across interdependent activities. Here, we use a novel dataset consisting of activity networks from 14 diverse, large-scale engineering projects to uncover network properties that impact t...

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Veröffentlicht in:EPJ Data Science 2021-07, Vol.10 (1), p.36-13, Article 36
Hauptverfasser: Santolini, Marc, Ellinas, Christos, Nicolaides, Christos
Format: Artikel
Sprache:eng
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Zusammenfassung:Engineering projects are notoriously hard to complete on-time, with project delays often theorised to propagate across interdependent activities. Here, we use a novel dataset consisting of activity networks from 14 diverse, large-scale engineering projects to uncover network properties that impact timely project completion. We provide empirical evidence of perturbation cascades, where perturbations in the delivery of a single activity can impact the delivery of up to 4 activities downstream, leading to large perturbation cascades. We further show that perturbation clustering significantly affects project overall delays. Finally, we find that poorly performing projects have their highest perturbations in high reach nodes, which can lead to largest cascades, while well performing projects have perturbations in low reach nodes, resulting in localised cascades. Altogether, these findings pave the way for a network-science framework that can materially enhance the delivery of large-scale engineering projects.
ISSN:2193-1127
2193-1127
DOI:10.1140/epjds/s13688-021-00291-w