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Ensemble Based Real-Time Adaptive Classification System for Intelligent Sensing Machine Diagnostics

机译:基于集成的智能传感器实时自适应分类系统

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摘要

The deployment of a sensor node to manage a group of sensors and collate their readings for system health monitoring is gaining popularity within the manufacturing industry. Such a sensor node is able to perform real-time configurations of the individual sensors that are attached to it. Sensors are capable of acquiring data at different sampling frequencies based on the sensing requirements. The different sampling rates affect power consumption, sensor lifespan, and the resultant network bandwidth usage due to the data transfer incurred. These settings also have an immediate impact on the accuracy of the diagnostics and prognostics models that are employed for system health monitoring. In this paper, we propose a novel adaptive classification system architecture for system health monitoring that is well suited to accommodate and take advantage of the variable sampling rate of sensors. As such, our proposed system is able to yield a more effective health monitoring system by reducing the power consumption of the sensors, extending the sensors' lifespan, as well as reducing the resultant network traffic and data logging requirements. We also propose an ensemble based learning method to integrate multiple existing classifiers with different feature representations, which can achieve significantly better, stable results compared with the individual state-of-the-art techniques, especially in the scenario when we have very limited training data. This result is extremely important in many real-world applications because it is often impractical, if not impossible, to hand-label large amounts of training data.
机译:在制造业中,用于管理一组传感器并整理其读数以进行系统健康状况监视的传感器节点的部署正日益普及。这样的传感器节点能够执行连接到它的各个传感器的实时配置。传感器能够根据感测要求以不同的采样频率采集数据。不同的采样率会影响功耗,传感器寿命以及由于数据传输而导致的网络带宽使用量。这些设置还直接影响用于系统运行状况监视的诊断和预测模型的准确性。在本文中,我们提出了一种用于系统健康状况监控的新型自适应分类系统架构,该架构非常适合容纳和利用传感器的可变采样率。因此,我们提出的系统能够通过减少传感器的功耗,延长传感器的使用寿命以及减少由此产生的网络流量和数据记录需求,来产生更有效的健康监控系统。我们还提出了一种基于集合的学习方法,以集成具有不同特征表示的多个现有分类器,与单独的最新技术相比,它可以达到明显更好,稳定的结果,尤其是在我们的训练数据非常有限的情况下。在很多实际应用中,此结果非常重要,因为对大量的训练数据进行人工标记通常是不切实际的,即使不是不可能的。

著录项

  • 来源
    《Reliability, IEEE Transactions on》 |2012年第2期|p.303-313|共11页
  • 作者

    Nguyen M. N.;

  • 作者单位
  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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