关键区域识别:分类与回归

Z. Bluvband, S. Porotsky, Shimon Tropper
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引用次数: 6

摘要

本文描述了分类和回归程序,开发并成功地用于关键区域识别。预测和健康管理的主要任务之一是故障预测,特别是使用预测系统提供有关设备剩余使用寿命(RUL)的预测信息。但对于封闭型问题:当前设备是否在临界区域内,有时需要得到僵化的答案。换句话说,设备的RUL是否小于预定义的临界值?为了解决这个问题,可以考虑两种方法:·回归法:预测RUL值,并将结果与临界值进行比较·分类法:直接识别进入临界区域。一般来说,分类法更适合识别任务,但该方法的某些方面无法得到明显的答案。基于SVM方法的改进,提出了支持向量分类(SVC)和支持向量回归(SVR)两种模型供参考。建议的方法和算法在NASA飞机发动机数据库(http://ti.arc.nasa.gov/tech/dash/pcoe/prognostic-data-repository/)上进行了验证。还考虑了基于该数据库的数值算例。
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Critical Zone Recognition: Classification vs. regression
The article describes the Classification and Regression procedures, developed and successfully used for Critical Zone Recognition. One of the main tasks of the Prognostics and Health Management is the Failure Prognostics, specifically to provide predictive information regarding Remaining Useful Life (RUL) of device using prognostic systems. But sometimes it is necessary to get inflexible answer for closed type question: Is current device within critical zone or not? In other words, is RUL of device less than pre-defined Critical Value or not? To solve this problem, two approaches may be considered: · Regression Approach: to predict RUL value and compare results with critical value · Classification Approach: to recognize directly entering the critical zone In general, Classification Approach is more preferred for recognition tasks, but some aspects of the approach prevent to get an evident answer. Two models, based on modifications of the SVM method - SVC (Support Vector Classification) and SVR (Support Vector Regression) are proposed for consideration. Suggested methodology and algorithms were verified on the NASA Aircraft Engine database (http://ti.arc.nasa.gov/tech/dash/pcoe/prognostic-data-repository/). Numerical examples, based on this database, have been also considered.
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