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Enhanced probabilistic neural network with data imputation capabilities for machine-fault classification

机译:具有数据插补功能的增强型概率神经网络,可用于机器故障分类

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This paper presents the expectation-maximization (EM) variant of probabilistic neural network (PNN) as a step toward creating an autonomous and deterministic PNN. In the real world, faulty reading sensors can happen and will create input vectors with missing features yet they should not be discarded. To overcome this, regularized EM is put in place as a preprocessing step to impute the missing values. The problem faced by users when using random initialization is that they have to define the number of clusters through trial and error, which makes it stochastic in nature. Global k-means is used to autonomously find the number of clusters using a selection criterion and deterministically provide the number of clusters needed to train the model. In addition, fast Global k-means will be tested as an alternative to Global k-means to help reduce computational time. Tests are conducted on both homoscedastic and heteroscedastic PNNs. Benchmark medical datasets and also vibration data collected from a US Navy CH-46E helicopter aft gearbox known as Westland were used. The tests' results fully support the usage of fast Global k-means and regularized EM as preprocessing steps to aid the EM-trained PNN.
机译:本文介绍了概率神经网络(PNN)的期望最大化(EM)变体,作为朝着创建自主和确定性PNN迈出的一步。在现实世界中,错误的读取传感器可能会发生,并会创建具有缺失特征的输入向量,但不应将其丢弃。为了克服这个问题,将正规化的EM作为预处理步骤来插补缺失值。用户使用随机初始化时面临的问题是,他们必须通过反复试验来定义集群的数量,这实际上使其具有随机性。全局k均值用于使用选择标准来自主找到集群的数量,并确定性地提供训练模型所需的集群的数量。此外,还将测试快速全局k均值作为全局k均值的替代方法,以帮助减少计算时间。对同向和异向PNN均进行测试。使用基准医学数据集以及从美国海军CH-46E直升机后齿轮箱(称为Westland)收集的振动数据。测试结果完全支持使用快速全局k均值和正则化EM作为预处理步骤,以辅助EM训练的PNN。

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