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Application of sensor fusion and signal classification techniques in a distributed machinery condition monitoring system

机译:传感器融合和信号分类技术在分布式机械状态监测系统中的应用

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A new paradigm for machinery maintenance is emerging as preventive maintenance strategies are being replaced by condition-based maintenance. In condition-based maintenance, machinery is repaired or serviced only when an intelligent monitoring system indicates that the system cannot fulfill mission requirements. The implementation of such systems requires a combination of sensor data fusion, feature extraction, classification, and prediction algorithms. In addition, new system architectures are being developed to facilitate the reduction of wide bandwidth sensor data to concise predictions of ability of the system to complete its current mission or future missions. This paper describes the system architecture, data fusion, and classification algorithms employed in a distributed, wireless bearing and gear health monitoring system. The role and integration of prognostic algorithms— required to predict future system health— are also discussed. Examples are provided which illustrate the application of the system architecture and algorithms to data collected on a machinery diagnostics test bed at the Applied Research Laboratory at The Pennsylvania State University.
机译:由于预防性维护策略正在被基于条件的维护所取代的新机械维护的新范式。在基于条件的维护中,只有在智能监控系统指示系统无法满足任务要求时,才会修复或维修机器。这种系统的实现需要传感器数据融合,特征提取,分类和预测算法的组合。此外,正在开发新的系统架构,以便减少宽带宽传感器数据,以简要预测系统,以完成其当前任务或未来任务的能力。本文介绍了在分布式,无线轴承和齿轮健康监测系统中采用的系统架构,数据融合和分类算法。还讨论了预测预测算法的作用和整合预测未来系统健康的作用。提供了示例,其示出了系统架构和算法在宾夕法尼亚州立大学应用研究实验室的机械诊断试验台上收集的数据的应用。

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