ISSN 2096-4498
CN 44-1745/U
Tunnel Construction ›› 2019, Vol. 39 ›› Issue (S1): 110-116.DOI: 10.3973/j.issn.2096-4498.2019.S1.016
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ZHANG Zhiwei1, 2, ZHANG Kangning3, LIU Zhiwei1, 2
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Abstract:
The project risk inspection is always characterized by low efficiency, low coordination and poor subjective initiative. Hence, in order to strengthen the process control of risk inspection, make full use of the visualization and information integration characteristics of BIM technology, and ensure the effectiveness and traceability of risk management and control in construction process, the process control of construction risk inspection of Ping′anli Station on Beijing Metro Line No. 19 under construction is studied. The risk inspection APP and BIMGIS threedimensional scene based on independent research and development are studied. Firstly, the location and information of investigation are recorded by means of onsite positioning and virtual simulation; secondly, the risk filtering conditions are set for investigation information; finally, the risk information is integrated and managed. It is concluded that the risk management based on BIM can control the process of risk inspection, sort out and push risk integration information quickly and effectively, and control the whole management process effectively by means of BIM visualization and information integration, so as to improve the risk identification capacity.
Key words: BIM, metro tunnel, risk inspection, BIM-GIS, investigation of potential safety hazard
CLC Number:
U 45
ZHANG Zhiwei, ZHANG Kangning, LIU Zhiwei. Construction Risk Inspection Process Control of Ping′anli Station on Beijing Metro Line No. 19 Based on BIM Technology[J]. Tunnel Construction, 2019, 39(S1): 110-116.
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URL: http://www.suidaojs.com/EN/10.3973/j.issn.2096-4498.2019.S1.016
http://www.suidaojs.com/EN/Y2019/V39/IS1/110
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