Single classifier anomaly detection method based on multilayer random neural network
A random neural network and anomaly detection technology, applied in biological neural network models, neural architectures, instruments, etc., can solve problems such as easy local optimal solutions, achieve strong anti-interference ability and real-time performance, enhance feature extraction ability, Good generalization performance
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[0050] The present invention will be further described below in conjunction with accompanying drawing and example.
[0051] Such as figure 1 As shown, the training data (only the normal data set) is first input to the multi-layer ELM-AE for feature extraction, and then the actual results are classified and output through the ELM classification layer (no hidden layer), according to the obtained actual output and the sample label. The errors are sorted, and the threshold is obtained through the threshold parameter. Then feed the samples to be tested into the trained anomaly detection model to obtain the error between the actual output of the test data and the sample label. Those that are greater than the threshold are classified as abnormal, and those that are less than or equal to the threshold are classified as normal, and the accuracy is calculated.
[0052] figure 2 It shows the basic structure of a single hidden layer feedforward neural network, which is the framework of...
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