ADAPTING A DIGITAL TWIN TO ENABLE REAL-TIME WATER SENSITIVE URBAN DESIGN DECISION-MAKING
N. Langenheim,S. Sabri,Y. Chen,A. Kesmanis,A. Felson,A. Mueller,A. Rajabifard,and Y. Zhang
N. Langenheim
University of Melbourne, Faculty of Architecture Building and Planning, Department of Landscape Architecture, Building 133, Masson Rd, Parkville VIC 3052, Australia
S. Sabri
University of Melbourne, Faculty of Engineering and Information Technology, Centre for Spatial Data Infrastructures & Land Administration, Level 6 Melbourne Connect, 700 Swanston St, Carlton VIC 3053, Australia
Y. Chen
University of Melbourne, Faculty of Engineering and Information Technology, Centre for Spatial Data Infrastructures & Land Administration, Level 6 Melbourne Connect, 700 Swanston St, Carlton VIC 3053, Australia
A. Kesmanis
University of Melbourne, Faculty of Engineering and Information Technology, Centre for Spatial Data Infrastructures & Land Administration, Level 6 Melbourne Connect, 700 Swanston St, Carlton VIC 3053, Australia
A. Felson
University of Melbourne, Faculty of Architecture Building and Planning, Department of Landscape Architecture, Building 133, Masson Rd, Parkville VIC 3052, Australia
A. Mueller
University of Melbourne, Faculty of Architecture Building and Planning, Department of Landscape Architecture, Building 133, Masson Rd, Parkville VIC 3052, Australia
A. Rajabifard
University of Melbourne, Faculty of Engineering and Information Technology, Centre for Spatial Data Infrastructures & Land Administration, Level 6 Melbourne Connect, 700 Swanston St, Carlton VIC 3053, Australia
Y. Zhang
University of Melbourne, Faculty of Engineering and Information Technology, Centre for Spatial Data Infrastructures & Land Administration, Level 6 Melbourne Connect, 700 Swanston St, Carlton VIC 3053, Australia
Viewed
Total article views: 878 (including HTML, PDF, and XML)
HTML
PDF
XML
Total
BibTeX
EndNote
480
373
25
878
16
16
HTML: 480
PDF: 373
XML: 25
Total: 878
BibTeX: 16
EndNote: 16
Views and downloads (calculated since 14 Oct 2022)
Cumulative views and downloads
(calculated since 14 Oct 2022)
Viewed (geographical distribution)
Total article views: 844 (including HTML, PDF, and XML)
Thereof 844 with geography defined
and 0 with unknown origin.