利用无线振动传感器标签实时监测集装箱稳定性损失

S. Bukkapatnam, Srinivas Mukkamala, J. Kunthong, V. Sarangan, R. Komanduri
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引用次数: 9

摘要

集装箱包装在运输和装卸过程中会经历各种形式的机械激励。其中一些刺激会损坏货物,使货物到达目的地时带有缺陷。在集装箱卡车运输过程中,对集装箱包装的损坏进行早期检测,可以使卡车司机采取必要措施,避免更大的损坏,从而节省大量成本。目前正在研究基于传感器的方法,以提供这种早期检测能力。本文提出了一种基于Zigbee协议的无线振动传感器在运输过程中监测包裹完整性和安全性的方法。T-mote Sky无线节点集成了两个2轴MEMS加速度计,用于监测封装的完整性。通过实验,研究了由摆动、倾斜、碰撞和滑动等常见的机械稳定性损失模式引起的振动模式。实验使用了一辆1:32比例的RC卡车和一个按比例大小的集装箱。捕获了多种失稳模式下的振动模式。观察到,根据所收集的振动数据中的模式,可以清楚地分类出每种类型的稳定性损失。利用小波分析抑制了无关的信号成分,增强了捕获与稳定性损失事件相关的模式的信号的保真度。因此,每个稳定性损失都与过程振动信号所表现出的一组特定的异常(失控)行为模式有关。基于这种小波分析开发了一种询问和检测程序,用于实时检测稳定性损失以及在采集测量数据的时间段内发生的特定稳定损失模式的次数和身份。结果表明,利用小波分析技术对无线振动传感器标签信号进行多尺度监测,可以准确检测出失稳事件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-time monitoring of container stability loss using wireless vibration sensor tags
Container packages experience diverse forms of mechanical excitations during their transportation and handling. Some of these excitations can damage the goods and make them reach their final destination with defects. Early detection of damages to container packages during their transport on a container truck can allow the truck driver to take the necessary steps to avert larger damages and thus cause significant cost savings. Sensor based approaches are being investigated to provide this early detection capability. This paper presents an approach that uses wireless vibration sensors based on Zigbee protocol to monitor the integrity and safety of packages during transportation. T-mote Sky wireless nodes integrated with two 2-axis MEMS accelerometers were used to monitor the integrity of the packages. Experiments were conducted to discern the vibration patterns resulting from some common modes of mechanical stability losses, such as wobbling, tilting, colliding and sliding. The experiments used a 1:32 scaled version of RC truck and a proportionately sized container. The vibration patterns under multiple stability loss modes were captured. It was observed that each type of stability loss can be clearly classified based on the patterns in the vibration data collected. Extraneous signal components were suppressed using a wavelet analysis, and fidelity of the signals capturing the pattern associated with the stability loss events was enhanced. Thus, each stability loss is associated with a specific set of abnormal (out-of-control) behavioral patterns exhibited by the processes vibration signals. An interrogation and detection procedure was developed based on this wavelet analysis to detect in realtime the stability loss as well as the times and identities of the specific modes of stability loss that occurred during the span of time over which the measured data is collected. The results show that the multi-scale monitoring facilitated by the wavelet analysis of signals from the wireless vibration sensor tags can be useful for accurate detection of stability loss events.
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