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Off-the-Shelf Modal Analysis: Structural Health Monitoring with Motes

机译:现成的模态分析:具有MOTES的结构健康监测

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Breakthrough strides in micro-electro-mechanical systems (MEMS) demand a paradigm shift in traditional data acquisition and signal processing methodologies used for structural health monitoring (SHM). One such device which embodies MEMS technology is the Mote. Motes integrate a microprocessor, memory, and a radio transmitter together and can be outfitted with a plethora of industry standard sensory devices with little or no modification. The implication of this conglomerated setup is that it can be used to reduce, store, and ship data at the acquisition site. Moreover, the commercial development of these devices has reduced production costs and increased product development. As such, the intrinsic versatility of a Mote system can be affordably harnessed and dense sensor arrays can be utilized to enhance real-time modal parameter identification, the backbone of global vibration based SHM techniques. However there are limitations which need to be addressed. For example, significant data loss is attributed to the low bandwidth of the low power radio transmitter employed on Mica2 Motes. This issue of contention has been addressed by recent technological improvements in wireless transmission standards. Yet in spite of the progress made by new transmission protocols and standards towards reducing radio power consumption, increasing bandwidth, and reducing transmission latency, they alone will not meet all of the needs of a full-scale wireless SHM system. In light of this realization the efforts of this paper are shifted from previous studies where time histories were streamed from the data acquisition site to a central location for processing. Now instead the focus is on decentralizing the SHM system by exploiting the on-board computational faculties of a Mote. Here a simple signal processing and spectrum curve-fitting technique is used to automatically extract dominant frequency components of an acceleration time history record. Identified frequencies are then implemented in a probabilistic neural network (PNN) and correlation-based damage localization procedures in such a fashion to simulate on-board implementation of this SHM methodology on a Mote platform. This paper will document the efficacy of successful damage detection and localization experiment performed with acceleration impulse response time histories acquired from off-the-shelf Motes and sensor hardware.
机译:在微电机械系统(MEMS)中的突破性进展需要传统数据采集和用于结构健康监测(SHM)的信号处理方法的范式转变。一个体现MEMS技术的一种这样的装置是MOTE。 MOTES将微处理器,内存和无线电发射器集成在一起,可以配备含有少量工业标准感官设备,几乎没有修改。该集团设置的含义是它可用于减少,存储和送到收购站点的数据。此外,这些器件的商业开发降低了生产成本和产品开发增加。这样,可以经济利用的模具系统的内在多功能性,并且可以利用密集的传感器阵列来增强基于全局振动的SHM技术的实时模态参数识别。然而,存在需要解决的限制。例如,显着的数据丢失归因于MICA2电动机上采用的低功耗无线电发射器的低带宽。最近的无线传输标准的技术改善已经解决了这一争论问题。然而,尽管新的传输协议和标准来减少无线电功耗,增加带宽和减少传输延迟的进展,但它们仅符合全尺寸无线SHM系统的所有需求。鉴于这种实现,本文的努力从以前的研究转移,那里将时间历史从数据采集站点流到中央位置进行处理。现在,重点是通过利用Mote的板载计算院系来分散SHM系统。这里,一种简单的信号处理和频谱曲线拟合技术用于自动提取加速时间历史记录的主导频率分量。然后在概率神经网络(PNN)中实现识别的频率和基于相关的损伤定位过程,以这种方式来模拟在MOTE平台上的该SHM方法的板载实现。本文将记录通过从架空电机和传感器硬件获取的加速脉冲响应时间历史进行成功损伤检测和定位实验的疗效。

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