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Sensors

Publication date: 2025-03-01
Volume: 25
Publisher: Multidisciplinary Digital Publishing Institute (MDPI)

Author:

Mardanshahi, Ali
Sreekumar, Abhilash ; Yang, Xin ; Barman, Swarup Kumar ; Chronopoulos, Dimitrios

Keywords:

Science & Technology, Physical Sciences, Technology, Chemistry, Analytical, Engineering, Electrical & Electronic, Instruments & Instrumentation, Chemistry, Engineering, structural health monitoring, damage assessment, sensing techniques, performance criteria, MODELING WAVE-PROPAGATION, MEMS-BASED ACCELEROMETER, INFRARED THERMOGRAPHY, ULTRASONIC-WAVES, DATA FUSION, DYNAMIC CHARACTERISTICS, CONCRETE STRUCTURES, POLYMER COMPOSITES, DAMAGE ASSESSMENT, FAULT-DIAGNOSIS, 0301 Analytical Chemistry, 0805 Distributed Computing, 0906 Electrical and Electronic Engineering, Analytical Chemistry, 4008 Electrical engineering, 4009 Electronics, sensors and digital hardware, 4606 Distributed computing and systems software

Abstract:

This systematic review examines the capabilities, challenges, and practical implementations of the most widely utilized and emerging sensing technologies in structural health monitoring (SHM) for infrastructures, addressing a critical research gap. While many existing reviews focus on individual methods, comprehensive cross-method comparisons have been limited due to the highly tailored nature of each technology. We address this by proposing a novel framework comprising five specific evaluation criteria—deployment suitability in SHM, hardware prerequisites, characteristics of the acquired signals, sensitivity metrics, and integration with Digital Twin environments—refined with subcriteria to ensure transparent and meaningful performance assessments. Applying this framework, we analyze both the advantages and constraints of established sensing technologies, including infrared thermography, electrochemical sensing, strain measurement, ultrasonic testing, visual inspection, vibration analysis, and acoustic emission. Our findings highlight critical trade-offs in scalability, environmental sensitivity, and diagnostic accuracy. Recognizing these challenges, we explore next-generation advancements such as self-sensing structures, unmanned aerial vehicle deployment, IoT-enabled data fusion, and enhanced Digital Twin simulations. These innovations aim to overcome existing limitations by enhancing real-time monitoring, data management, and remote accessibility. This review provides actionable insights for researchers and practitioners while identifying future research opportunities to advance scalable and adaptive SHM solutions for large-scale infrastructure.