...
首页> 外文期刊>ACM transactions on sensor networks >Sensor Faults: Detection Methods and Prevalence in Real-World Datasets
【24h】

Sensor Faults: Detection Methods and Prevalence in Real-World Datasets

机译:传感器故障:实际数据集中的检测方法和普遍性

获取原文
获取原文并翻译 | 示例
           

摘要

Various sensor network measurement studies have reported instances of transient faults in sensor readings. In this work, we seek to answer a simple question: How often are such faults observed in real deployments? We focus on three types of transient faults, caused by faulty sensor readings that appear abnormal. To understand the prevalence of such faults, we first explore and characterize four qualitatively different classes of fault detection methods. Rule-based methods leverage domain knowledge to develop heuristic rules for detecting and identifying faults. Estimation methods predict "normal" sensor behavior by leveraging sensor correlations, flagging anomalous sensor readings as faults. Time-series-analysis-based methods start with an a priori model for sensor readings. A sensor measurement is compared against its predicted value computed using time series forecasting to determine if it is faulty. Learning-based methods infer a model for the "normal" sensor readings using training data, and then statistically detect and identify classes of faults.rnWe find that these four classes of methods sit at different points on the accuracy/robustness spectrum. Rule-based methods can be highly accurate, but their accuracy depends critically on the choice of parameters. Learning methods can be cumbersome to train, but can accurately detect and classify faults. Estimation methods are accurate, but cannot classify faults. Time-series-analysis-based methods are more effective for detecting short duration faults than long duration ones, and incur more false positives than the other methods. We apply these techniques to four real-world sensor datasets and find that the prevalence of faults as well as their type varies with datasets. All four methods are qualitatively consistent in identifying sensor faults, lending credence to our observations. Our work is a first step towards automated online fault detection and classification.
机译:各种传感器网络测量研究都报告了传感器读数出现瞬时故障的情况。在这项工作中,我们试图回答一个简单的问题:在实际部署中多久会观察到此类故障?我们着眼于三种类型的瞬态故障,这些瞬态故障是由出现异常的传感器读数错误引起的。为了了解此类故障的普遍性,我们首先探索并描述了四种性质不同的故障检测方法。基于规则的方法利用领域知识来开发启发式规则以检测和识别故障。估计方法通过利用传感器的相关性,将异常的传感器读数标记为故障来预测“正常”的传感器行为。基于时间序列分析的方法始于传感器读数的先验模型。将传感器测量值与使用时间序列预测计算出的预测值进行比较,以确定其是否有故障。基于学习的方法使用训练数据来推断“正常”传感器读数的模型,然后以统计方式检测和识别故障类别。我们发现这四类方法位于准确性/鲁棒性谱上的不同点。基于规则的方法可能非常准确,但是其准确性主要取决于参数的选择。学习方法训练起来很麻烦,但是可以准确地检测和分类故障。估计方法是准确的,但不能对故障进行分类。基于时间序列分析的方法在检测短时故障方面比长时方法更有效,并且比其他方法产生更多的误报。我们将这些技术应用于四个现实世界的传感器数据集,发现故障的发生率及其类型随数据集而变化。这四种方法在识别传感器故障方面在质量上是一致的,这为我们的观察提供了依据。我们的工作是迈向自动化在线故障检测和分类的第一步。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号