Redirigiendo al acceso original de articulo en 24 segundos...
Inicio  /  Buildings  /  Vol: 13 Par: 1 (2023)  /  Artículo
ARTÍCULO
TITULO

Intelligent Risk Prognosis and Control of Foundation Pit Excavation Based on Digital Twin

Zhe Sun    
Haoyang Li    
Yan Bao    
Xiaolin Meng and Dongliang Zhang    

Resumen

Timely risk information acquisition and diagnosis during foundation pit excavation (FPE) processes are vital for ensuring the safe and effective construction of underground urban infrastructures. Unfortunately, diverse geological and hydrogeological conditions and complex shapes of the foundation pit create barriers for reliable FPE risk prognosis and control. Furthermore, typical support systems during FPE use temporary measures, which have limited capacity to confront excessive loads, large deformations, and seepage. This study aims to establish an intelligent risk prognosis and control framework based on digital twin (DT) for ensuring safe and effective FPE processes. Previous studies have conducted extensive experimental and numerical analyses for examining unsafe conditions during FPE. How to enable intelligent risk prognosis and control of tedious FPE processes by integrating physics-based models and sensory data collected in the field is still challenging. DT could help to establish the interaction and feedback mechanisms between the physical and virtual space. In this study, the authors have established a DT model that consists of a physical space model and a high-fidelity physics-based model of a foundation pit in virtual space. As a result, a mechanism for effective acquisition and fusion of heterogeneous information from both physical and virtual space is established. Then, the authors proposed an integrated model and data-driven approach for examining safety risks during FPE. In the end, the authors have validated the proposed method through a case study of the FPE of the Wuhan Metro Line. The results show that the proposed method could provide theoretical and practical support for future intelligent FPE.

 Artículos similares

       
 
Noura Maghawry, Samy Ghoniemy, Eman Shaaban and Karim Emara    
Semantic data integration provides the ability to interrelate and analyze information from multiple heterogeneous resources. With the growing complexity of medical ontologies and the big data generated from different resources, there is a need for integr... ver más

 
Cheng Zhu, Shaoqi Wang, Na He, Hui Sun, Linjuan Xu and Filip Gurkalo    
To improve the accuracy of debris flow forecasts and serve as disaster prevention and mitigation, an accurate and intelligent early warning method of debris flow initiation based on the IGWO-LSTM algorithm is proposed. First, the entropy method is employ... ver más
Revista: Water

 
Faheem Ahmed Malik, Laurent Dala and Krishna Busawon    
To create a safe bicycle infrastructure system, this article develops an intelligent embedded learning system using a combination of deep neural networks. The learning system is used as a case study in the Northumbria region in England?s northeast. It is... ver más
Revista: Future Internet

 
Irina Makarova, Vadim Mavrin, Damir Sadreev, Polina Buyvol, Aleksey Boyko and Eduard Belyaev    
Urbanization, which causes the need for population mobility, leads to an increase in motorization and related problems: the organization of parking spaces in cities, both near work places and recreational spaces, and not far from residential locations. T... ver más
Revista: Infrastructures

 
Pietro Battistoni, Monica Sebillo and Giuliana Vitiello    
The European Agency for Safety and Health at Work considers Smart Personal Protective Equipment as ?Intelligent Protection For The Future?. It mainly consists of electronic components that collect data about their use, the workers who wear them, and the ... ver más
Revista: IoT