Litcius/Paper detail

Developing a cloud evidence method for dynamic early warning of tunnel construction safety risk in undersea environment

Hong Zhou, Binwei Gao, Xianbo Zhao, Linyu Peng, S. Mamatha Bai

2023Developments in the Built Environment20 citationsDOIOpen Access PDF

Abstract

Traditional methods have limitations in achieving precise predictions of risk occurrence at an exact future time and have difficulties transforming between qualitative and quantitative indicators and handling multi-source heterogeneous risk data. This study quantifies and analyzes the multi-source construction safety risks classified into the categories of man, machine, material, method and environment (4M1E), and presents a cloud evidence method that integrates wavelet de-noising algorithm, cloud model, and Dempster-Shafer (D-S) evidence theory. A real-time risk prediction and warning is provided using this method after the fusion of multi-source uncertain information and the transformation between qualitative and quantitative indicators, enabling the timely detection of potential risks for project managers. This method analyzing “uncertainty” with “certainty” is verified by an undersea tunnel construction project. The result shows that this method is effective in early warning risks two days before their actual occurrence, providing reference significance for risk early warning of the tunnel construction project.

Topics & Concepts

Cloud computingWarning systemRisk analysis (engineering)CertaintyComputer scienceDempster–Shafer theoryEarly warning systemRisk assessmentData miningComputer securityTelecommunicationsMedicinePhilosophyEpistemologyOperating systemAdvanced Decision-Making TechniquesOccupational Health and Safety ResearchUnderground infrastructure and sustainability
Developing a cloud evidence method for dynamic early warning of tunnel construction safety risk in undersea environment | Litcius