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Automated Rule Extraction for Engine Health Monitoring

机译:发动机健康监测的自动规则提取

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A problem of current interest is the automatic classification of potential critical component failures in turbo jet engines. Current processing uses relatively simple metrics or features to measure and characterize changes in sensor data. An alternative solution is to use neural networks coupled with appropriate feature extractors to analyze and automatically extract rules for expert system classifier development. Unfortunately the workings of many neural nets are incomprehensible to humans and thus may be of little utility and not accepted. Elliptical basis function (EBF) neural nets perform classification of input features by clustering and characterizing the feature data with a set of multidimensional basis functions. We have developed a class-dependent EBF neural net to solve this problem. The network is essentially a nearest-neighbor classifier. The network can perform automated rule extraction by examination of the basis functions. Unfortunately, as the number of inputs and the complexity of the neural net grows, the rules generated may become incomprehensible as well. We have used evolutionary programming to select the input feature subset and neural net architecture. The tradeoff is statistical performance versus rule comprehensibility. Here the algorithm is presented as well as results of application to real turbo jet engine data.
机译:目前兴趣的问题是涡轮喷射发动机中的潜在关键组件故障的自动分类。当前处理使用相对简单的指标或功能来测量和表征传感器数据的变化。替代解决方案是使用与适当的特征提取器耦合的神经网络来分析和自动提取专家系统分类器的规则。不幸的是,许多神经网络的工作对人类来说是不可理解的,因此可能具有很少的效用而不接受。椭圆形基函数(EBF)神经网络通过聚类和表征具有一组多维基函数的特征数据来执行输入特征的分类。我们开发了一个依赖依赖EBF神经网络来解决这个问题。网络基本上是最近邻居的分类器。通过基础函数,网络可以执行自动规则提取。遗憾的是,随着内部净的数量和神经网络的复杂性,产生的规则也可能变得不可思议。我们使用了进化编程来选择输入特征子集和神经网络架构。权衡是统计性能与统治可理解性。这里提出了该算法以及对真正的涡轮喷射发动机数据的应用结果。

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