Big Data in Construction Engineering and Management
A special issue of Applied Sciences (ISSN 2076-3417). This special issue belongs to the section "Applied Industrial Technologies".
Deadline for manuscript submissions: closed (10 January 2022) | Viewed by 7361
Special Issue Editors
Interests: construction cost estimation; building information modeling technology; design and building and integrated project delivery; activity of developer companies; construction defects; sustainable construction and using case-based reasoning and fuzzy logic in construction management
Special Issues, Collections and Topics in MDPI journals
Interests: supporting decisions in construction; delays in construction projects; risk assessment in construction; project cost estimation; tendering and bidding in construction; using artificial neural networks in construction management; building procurement
Special Issues, Collections and Topics in MDPI journals
Interests: construction building management; construction automation; lean construction; BPM (business process management); urban environment; energy efficiency; BMS (building management system); predictive analytics; environmental impact; occupant health
Special Issues, Collections and Topics in MDPI journals
Interests: integrated BIM; design cognition and computing; building automation systems; energy-efficient buildings; green building developments; environmental design behavior; sustainable design developments; adaptive environments; smart housing; intelligent buildings; artificial intelligence in design and construction; virtual reality (VR); augmented reality (AR); integrated design studies
Special Issue Information
Dear Colleagues,
The phenomenon of Big Data has gained tremendous importance in solving complex engineering problems in recent years, with various applications and significant impacts in the construction engineering and management domain. With monitoring systems supported by modern technologies, the use of data from the Internet and the creation of databases based on historical construction projects records, the application of Big Data supports the processing of all such available data on a larger scale. Availability of large data sets and access to cheaper sensors have acted as catalysts for an increasing interest towards adoption of Big Data practices.
Though the concept of Big data has only made inroads into the construction sector in recent years, its proven capabilities have enabled the construction sector to noticeably improve a wide range of processes. These enhanced processes have resulted in achieving satisfactory outcome in various areas: better management, more accurate budget estimates, lower project risks and guidance in making the right decisions and choices, etc. It is estimated that the adoption of Big Data solutions will be necessary for construction companies to deliver projects successfully and remain competitive in an increasingly globalized market.
The aim of this Special Issue (SI) is to review the development and key applications of new Big Data tools and methods in construction engineering and management. The aims are to further knowledge of the topic, provoke broader discussions, and raise awareness of the potential to employ various applications of Big Data in modern construction engineering and management practices. This SI would act as an international platform to showcase emergent findings and contribute to generating new knowledge in this growing field of research.
This Special Issue welcomes various submission types, such as original research contributions, case studies, comparative studies, conceptual papers, and review studies.
Topics of interest within the construction engineering and management are presented below but are not limited to:
- BIM and integration with Big Data;
- Building information systems using Big Data;
- Big Data in construction management;
- Disaster management with Big Data;
- Big Data applications in Civil Engineering;
- Big Data in predictive maintenance of constructed facilities;
- Big Data case studies in the built environment;
- New tools and software for Big Data in the construction industry;
- Materials science and engineering based on Big Data analysis;
- Structural and environmental engineering using Big Data;
- Solutions for Big Data storage, visualization and analytics.
Prof. Dr. Krzysztof Zima
Prof. Dr. Agnieszka Leśniak
Dr. María Dolores Andújar-Montoya
Dr. Ali Ghaffarian Hoseini
Guest Editors
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