de Alteriis Giorgio, Mariniello Giulio, Pastore Tommaso, Silvestri Alessia Teresa, Augugliaro Giuseppe, Papallo Ida, Mennuti Canio, Bilotta Antonio, Schiano Lo Moriello Rosario, Asprone Domenico
Department of Industrial Engineering, University of Naples Federico II, Piazzale Tecchio 80, 80125 Naples, Italy.
Department of Structures for Engineering and Architecture, University of Naples Federico II, Via Claudio 21, 80125 Naples, Italy.
Sensors (Basel). 2025 Jan 6;25(1):289. doi: 10.3390/s25010289.
The growing importance of state assessments in civil engineering has led to intensive research into the development of damage identification methods based on vibrations. Natural frequencies and modal shapes have garnered great interest because modal parameters are invariant of structure. Moreover, thanks to the global nature of modal parameters, their variations are not limited to the location of the damage. This is an important advantage that offers the opportunity to identify damage with sensors whose position does not have to coincide with the damaged area. The integration of MEMS sensors into structural health monitoring (SHM) systems offers a promising approach to long-term structural maintenance, especially in large-scale infrastructure. This paper presents an anomaly detection technique that analyzes raw sequential data within a statistical framework to detect damage that causes prestress loss of the tendon by exploiting a distributed monitoring system composed of six high-performance MEMS sensors. The proposed system is preliminarily evaluated to identify the frequency of the first mode, and then the proposed methodology is validated on acceleration data collected on a 240 cm beam in three different damage configurations, achieving a high detection accuracy and showing that its output can also evaluate the damage localization.
国家评估在土木工程中日益重要,这促使人们对基于振动的损伤识别方法展开深入研究。固有频率和模态形状备受关注,因为模态参数与结构无关。此外,由于模态参数具有全局性,其变化并不局限于损伤位置。这是一个重要优势,为使用位置不必与损伤区域重合的传感器识别损伤提供了机会。将微机电系统(MEMS)传感器集成到结构健康监测(SHM)系统中,为长期结构维护提供了一种有前景的方法,尤其是在大型基础设施中。本文提出了一种异常检测技术,该技术在统计框架内分析原始序列数据,通过利用由六个高性能MEMS传感器组成的分布式监测系统来检测导致预应力损失的损伤。对所提出的系统进行了初步评估以识别第一阶模态频率,然后在所提出的方法在三种不同损伤配置下在一根240厘米长的梁上采集的加速度数据上进行了验证,实现了高检测精度,并表明其输出还可以评估损伤定位。