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An integrated fuzzy inference based monitoring, diagnostic, and prognostic system.

机译:基于集成的模糊推理的监视,诊断和预测系统。

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摘要

To date the majority of the research related to the development and application of monitoring, diagnostic, and prognostic systems has been exclusive in the sense that only one of the three areas is the focus of the work. While previous research progresses each of the respective fields, the end result is a variable "grab bag" of techniques that address each problem independently. Also, the new field of prognostics is lacking in the sense that few methods have been proposed that produce estimates of the remaining useful life (RUL) of a device or can be realistically applied to real-world systems. This work addresses both problems by developing the nonparametric fuzzy inference system (NFIS) which is adapted for monitoring, diagnosis, and prognosis and then proposing the path classification and estimation (PACE) model that can be used to predict the RUL of a device that does or does not have a well defined failure threshold.; To test and evaluate the proposed methods, they were applied to detect, diagnose, and prognose faults and failures in the hydraulic steering system of a deep oil exploration drill. The monitoring system implementing an NFIS predictor and sequential probability ratio test (SPRT) detector produced comparable detection rates to a monitoring system implementing an autoassociative kernel regression (AAKR) predictor and SPRT detector, specifically 80% vs. 85% for the NFIS and AAKR monitor respectively. It was also found that the NFIS monitor produced fewer false alarms. Next, the monitoring system outputs were used to generate symptom patterns for k-nearest neighbor (kNN) and NFIS classifiers that were trained to diagnose different fault classes. The NFIS diagnoser was shown to significantly outperform the kNN diagnoser, with overall accuracies of 96% vs. 89% respectively. Finally, the PACE implementing the NFIS was used to predict the RUL for different failure modes. The errors of the RUL estimates produced by the PACE-NFIS prognosers ranged from 1.2-11.4 hours with 95% confidence intervals (CI) from 0.67-32.02 hours, which are significantly better than the population based prognoser estimates with errors of ∼45 hours and 95% CIs of ∼162 hours.
机译:迄今为止,与监视,诊断和预后系统的开发和应用有关的大多数研究都是排他性的,因为只有三个领域之一是工作重点。尽管先前的研究进展了各个领域,但最终结果却是可变的“抓包”技术可以独立解决每个问题。同样,从某种意义上说,缺乏预后的新领域,因为很少有人提出产生设备剩余使用寿命(RUL)估计值或可以实际应用于实际系统的方法。这项工作通过开发适用于监视,诊断和预测的非参数模糊推理系统(NFIS),然后提出可用于预测执行以下操作的设备的RUL的路径分类和估计(PACE)模型,解决了这两个问题或没有明确定义的故障阈值。为了测试和评估所提出的方法,它们被用于检测,诊断和预测深油勘探钻机的液压转向系统中的故障和失败。实施NFIS预测器和顺序概率比测试(SPRT)检测器的监视系统所产生的检测率与实现自缔合核回归(AAKR)预测器和SPRT检测器的监视系统相当,特别是NFIS和AAKR监测器为80%对85%分别。还发现,NFIS监视器产生的虚假警报更少。接下来,监视系统的输出用于生成k近邻(kNN)和经过训练以诊断不同故障类别的NFIS分类器的症状模式。事实证明,NFIS诊断程序明显优于kNN诊断程序,总体准确率分别为96%和89%。最后,实施NFIS的PACE用于预测不同故障模式下的RUL。 PACE-NFIS预后者产生的RUL估计值的误差范围为1.2-11.4小时,其中95%置信区间(CI)为0.67-32.02小时,明显优于基于人群的预后估计值,其误差约为45小时,且约162小时的95%CI。

著录项

  • 作者

    Garvey, Dustin.;

  • 作者单位

    The University of Tennessee.;

  • 授予单位 The University of Tennessee.;
  • 学科 Engineering Nuclear.; Engineering Petroleum.
  • 学位 Ph.D.
  • 年度 2007
  • 页码 438 p.
  • 总页数 438
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 原子能技术;石油、天然气工业;
  • 关键词

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