An Approach of Automatic SPARQL Generation for BIM Data Extraction

Generally, building information modelling (BIM) models contain multiple dimensions of building information, including building design data, construction information, and maintenance-related contents, which are related with different engineering stakeholders. Efficient extraction of BIM data is a nec...

Full description

Bibliographic Details
Main Authors: Dongming Guo, Erling Onstein, Angela Daniela La Rosa
Format: Article
Language:English
Published: MDPI AG 2020-12-01
Series:Applied Sciences
Subjects:
Online Access:https://www.mdpi.com/2076-3417/10/24/8794
id doaj-ec7a68a19ecf47cfa6a77e990162bd3f
record_format Article
spelling doaj-ec7a68a19ecf47cfa6a77e990162bd3f2020-12-10T00:00:36ZengMDPI AGApplied Sciences2076-34172020-12-01108794879410.3390/app10248794An Approach of Automatic SPARQL Generation for BIM Data ExtractionDongming Guo0Erling Onstein1Angela Daniela La Rosa2Department of Manufacturing and Civil Engineering, Norwegian University of Science and Technology, 2802 Gjovik, NorwayDepartment of Manufacturing and Civil Engineering, Norwegian University of Science and Technology, 2802 Gjovik, NorwayDepartment of Manufacturing and Civil Engineering, Norwegian University of Science and Technology, 2802 Gjovik, NorwayGenerally, building information modelling (BIM) models contain multiple dimensions of building information, including building design data, construction information, and maintenance-related contents, which are related with different engineering stakeholders. Efficient extraction of BIM data is a necessary and vital step for various data analyses and applications, especially in large-scale BIM projects. In order to extract BIM data, multiple query languages have been developed. However, the use of these query languages for data extraction usually requires that engineers have good programming skills, flexibly master query language(s), and fully understand the Industry Foundation Classes (IFC) express schema or the ontology expression of the IFC schema (ifcOWL). These limitations have virtually increased the difficulties of using query language(s) and raised the requirements on engineers’ essential knowledge reserves in data extraction. In this paper, we develop a simple method for automatic SPARQL (SPARQL Protocol and RDF Query Language) query generation to implement effective data extraction. Based on the users’ data requirements, we match users’ requirements with ifcOWL ontology concepts or instances, search the connected relationships among query keywords based on semantic BIM data, and generate the user-desired SPARQL query. We demonstrate through several case studies that our approach is effective and the generated SPARQL queries are accurate.https://www.mdpi.com/2076-3417/10/24/8794building information modelling (BIM)ifcOWLdata extractionsemanticSPARQL generation
collection DOAJ
language English
format Article
sources DOAJ
author Dongming Guo
Erling Onstein
Angela Daniela La Rosa
spellingShingle Dongming Guo
Erling Onstein
Angela Daniela La Rosa
An Approach of Automatic SPARQL Generation for BIM Data Extraction
Applied Sciences
building information modelling (BIM)
ifcOWL
data extraction
semantic
SPARQL generation
author_facet Dongming Guo
Erling Onstein
Angela Daniela La Rosa
author_sort Dongming Guo
title An Approach of Automatic SPARQL Generation for BIM Data Extraction
title_short An Approach of Automatic SPARQL Generation for BIM Data Extraction
title_full An Approach of Automatic SPARQL Generation for BIM Data Extraction
title_fullStr An Approach of Automatic SPARQL Generation for BIM Data Extraction
title_full_unstemmed An Approach of Automatic SPARQL Generation for BIM Data Extraction
title_sort approach of automatic sparql generation for bim data extraction
publisher MDPI AG
series Applied Sciences
issn 2076-3417
publishDate 2020-12-01
description Generally, building information modelling (BIM) models contain multiple dimensions of building information, including building design data, construction information, and maintenance-related contents, which are related with different engineering stakeholders. Efficient extraction of BIM data is a necessary and vital step for various data analyses and applications, especially in large-scale BIM projects. In order to extract BIM data, multiple query languages have been developed. However, the use of these query languages for data extraction usually requires that engineers have good programming skills, flexibly master query language(s), and fully understand the Industry Foundation Classes (IFC) express schema or the ontology expression of the IFC schema (ifcOWL). These limitations have virtually increased the difficulties of using query language(s) and raised the requirements on engineers’ essential knowledge reserves in data extraction. In this paper, we develop a simple method for automatic SPARQL (SPARQL Protocol and RDF Query Language) query generation to implement effective data extraction. Based on the users’ data requirements, we match users’ requirements with ifcOWL ontology concepts or instances, search the connected relationships among query keywords based on semantic BIM data, and generate the user-desired SPARQL query. We demonstrate through several case studies that our approach is effective and the generated SPARQL queries are accurate.
topic building information modelling (BIM)
ifcOWL
data extraction
semantic
SPARQL generation
url https://www.mdpi.com/2076-3417/10/24/8794
work_keys_str_mv AT dongmingguo anapproachofautomaticsparqlgenerationforbimdataextraction
AT erlingonstein anapproachofautomaticsparqlgenerationforbimdataextraction
AT angeladanielalarosa anapproachofautomaticsparqlgenerationforbimdataextraction
AT dongmingguo approachofautomaticsparqlgenerationforbimdataextraction
AT erlingonstein approachofautomaticsparqlgenerationforbimdataextraction
AT angeladanielalarosa approachofautomaticsparqlgenerationforbimdataextraction
_version_ 1724388028227518464