Melnyk, O., Huymajer, M., Huemer, C., Rosenberger, L., & Mazak-Huemer, A. (2025). A case study on integrating data analysis and process mining in conventional tunnel construction. Developments in the Built Environment, 22, 100640. https://doi.org/10.1016/j.dibe.2025.100640
E235-01 - Forschungsbereich Baubetrieb und Bauverfahrenstechnik E194-03 - Forschungsbereich Business Informatics
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Zeitschrift:
Developments in the Built Environment
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ISSN:
2666-1659
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Datum (veröffentlicht):
2025
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Umfang:
17
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Verlag:
ELSEVIER
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Peer Reviewed:
Ja
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Keywords:
Construction Management; Tunnelling; Process mining; Documentation; Data analysis
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Abstract:
Conventional tunnel construction often relies on manual methods of construction process analysis, using tools such as paper-based cycle diagrams or spreadsheets, which lack immediate updates and capabilities, limiting performance evaluation, communication, and decision-making. As a result, moving to a fully digital process incorporating business intelligence capabilities can deliver benefits by improving data-driven decision-making, operational efficiency and resource allocation. This paper presents a case study using construction documentation to evaluate the applicability of data and process analytics in conventional tunnelling. We also present a novel approach to visualising and analysing construction sequence deviations. The study demonstrates how data and process analysis can be utilised to evaluate the activity sequences, the duration of single activities, advance rates, and general project performance. By adhering to established industry standards, this research examines the practical implementation of data analysis methods in operational tunnelling environments, contributing to the development of integrated digital workflows.
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Projekttitel:
BIM im Tunnelbau: 879573 (Österr. Bautechnik Veranstaltungs G)
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Projekt (extern):
Bundesministerium für Bildung, Wissenschaft und Forschung
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Projektnummer:
BMBWF-11.102/0033-IV/8/2019
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Forschungsschwerpunkte:
Digital Transformation in Manufacturing: 40% Efficient Utilisation of Material Resources: 10% Information Systems Engineering: 50%