Publications / 2018 Proceedings of the 35th ISARC, Berlin, Germany

BIM-Based Decision Support System for the Mangement of Large Building Stocks

Alessandro Carbonari, Alessandra Corneli, Giuseppe Di Giuda, Luigi Ridolfi and Valentina Villa
Pages 348-355 (2018 Proceedings of the 35th ISARC, Berlin, Germany, ISBN 978-3-00-060855-1, ISSN 2413-5844)
Abstract:

While on the one hand the BIM methodology is an essential reference for the construction of new buildings, on the other hand it is receiving particular attention and interest also from owners of large building stocks who want to take advantage of the benefits of Building Information Modelling so as to have a coordinated system for the sharing of information and data. This, especially in a process that concerns the management and maintenance of a large building stocks, involve s the processing of uncertain information in BIM, particularly when dealing with existing buildings, due to the lack of and /or incomplete documentation, entailing a significant investment in terms of time and additional costs. Therefore, to represent the reliability of existing building data, we suggest introducing a tool based on Bayesian Network that offers a valid decision support under conditions of uncertainty and is used to evaluate the compliance with the latest standard. This paper presents a process to provide an integrated database defined by a minimum information level that can be used both to extrapolate and query specific information from a digital building model and populate the decision model in order to evaluate the performance parameters of existing buildings which is based on a Multicriteria decision making approach (AHP).

Keywords: Building Information Modelling, building stock, data management, Bayesian networks, Multicriteria decision making