Department of Civil, Environmental and Mechanical Engineering, University of Trento, Via Mesiano, 77, 38123 Trento, Italy.
Department of Civil and Environmental Engineering, Technical University of Catalonia (UPC), Jordi Girona 1-3, 08034 Barcelona, Spain.
Sensors (Basel). 2022 Apr 20;22(9):3168. doi: 10.3390/s22093168.
We live in an environment of ever-growing demand for transport networks, which also have ageing infrastructure. However, it is not feasible to replace all the infrastructural assets that have surpassed their service lives. The commonly established alternative is increasing their durability by means of Structural Health Monitoring (SHM)-based maintenance and serviceability. Amongst the multitude of approaches to SHM, the Digital Twin model is gaining increasing attention. This model is a digital reconstruction (the Digital Twin) of a real-life asset (the Physical Twin) that, in contrast to other digital models, is frequently and automatically updated using data sampled by a sensor network deployed on the latter. This tool can provide infrastructure managers with functionalities to monitor and optimize their asset stock and to make informed and data-based decisions, in the context of day-to-day operative conditions and after extreme events. These data not only include sensor data, but also include regularly revalidated structural reliability indices formulated on the grounds of the frequently updated Digital Twin model. The technology can be even pushed as far as performing structural behavioral predictions and automatically compensating for them. The present exploratory review covers the key Digital Twin aspects-its usefulness, modus operandi, application, etc.-and proves the suitability of Distributed Sensing as its network sensor component.
我们生活在一个对交通网络的需求不断增长的环境中,这些网络的基础设施也已经老化。然而,要替换所有已经超过使用寿命的基础设施资产是不切实际的。通常采用的替代方法是通过基于结构健康监测 (SHM) 的维护和可用性来提高其耐久性。在众多 SHM 方法中,数字孪生模型越来越受到关注。该模型是真实资产(物理孪生体)的数字重建(数字孪生体),与其他数字模型不同,它使用部署在后者上的传感器网络采集的数据频繁且自动进行更新。该工具可以为基础设施管理者提供监测和优化其资产库存的功能,并在日常运营条件下以及在极端事件后做出明智的数据决策。这些数据不仅包括传感器数据,还包括根据经常更新的数字孪生模型制定的定期重新验证的结构可靠性指标。该技术甚至可以进一步推进行为预测和自动补偿。本探索性综述涵盖了数字孪生体的关键方面,包括其有用性、运作方式、应用等,并证明分布式传感作为其网络传感器组件的适用性。