Mechanical in-sensor computing: a programmable meta-sensor for structural damage classification without external electronic power
Tingpeng Zhang, Xuzhang Peng, Mingyuan Zhou, Guobiao Hu, Zhilu Lai

TL;DR
This paper presents a novel programmable metamaterial sensor that can physically detect structural damage in real-time without external power, using bandgap properties of locally resonant metamaterials for in-situ damage classification.
Contribution
The paper introduces the first fabrication of a metamaterial-based sensor capable of in-situ damage detection without external electronics, leveraging bandgap properties for physical computation.
Findings
Successfully fabricated a metamaterial sensor for damage detection
Able to differentiate structural states based on bandgap shifts
Operates effectively within a natural frequency range of 9.54 Hz to 81.86 Hz
Abstract
Structural health monitoring (SHM) involves sensor deployment, data acquisition, and data interpretation, commonly implemented via a tedious wired system. The information processing in current practice majorly depends on electronic computers, albeit with universal applications, delivering challenges such as high energy consumption and low throughput due to the nature of digital units. In recent years, there has been a renaissance interest in shifting computations from electronic computing units to the use of real physical systems, a concept known as physical computation. This approach provides the possibility of thinking out of the box for SHM, seamlessly integrating sensing and computing into a pure-physical entity, without relying on external electronic power supplies, thereby properly coping with resource-restricted scenarios. The latest advances of metamaterials (MM) hold great…
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Taxonomy
MethodsADaptive gradient method with the OPTimal convergence rate
