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Intrusion signal classification using stochastic configuration network with variable increments of hidden nodes

机译:使用具有可变增量的隐藏节点的随机配置网络进行入侵信号分类

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摘要

In the environmental security monitoring application, an optical fiber prewarning system (OFPS) functions not only to locate the intrusion events but also recognize them. As a nonlinear network for recognition, the stochastic configuration network (SCN) is considered a promising method because it does not require setting the network scale beforehand. However, in the specific requirements of the application of OFPS, due to the small feature distance of different intrusion signals to be classified, it is necessary to set a smaller value of error tolerance. However, the side-effect is that meeting the constraint condition faces a challenge. To overcome this, we improve the configuration method of the hidden layer nodes in the SCN network. In the proceeding of the network process, the increment of the hidden layer nodes in each loop is gradually increased, and the space of the corresponding random parameters generated is enlarged. The SCN with variable increments of hidden nodes can adjust the number of hidden nodes added in each loop for continuous construction and obtaining higher classification accuracy. This study has a great significance for the application of SCN in the classification of intrusion signals in OFPS.
机译:在环境安全监视应用程序中,光纤预警系统(OFPS)不仅可以定位入侵事件,还可以识别它们。作为用于识别的非线性网络,随机配置网络(SCN)被认为是一种很有前途的方法,因为它不需要事先设置网络规模。但是,在应用OFPS的特定要求中,由于要分类的不同入侵信号的特征距离较小,因此有必要设置较小的容错值。但是,副作用是满足约束条件面临挑战。为了克服这个问题,我们改进了SCN网络中隐藏层节点的配置方法。在网络处理的进行中,每个循环中隐藏层节点的增量逐渐增加,并且所生成的相应随机参数的空间增大。具有可变隐藏节点增量的SCN可以调整每个循环中添加的隐藏节点的数量,以进行连续构建并获得更高的分类精度。该研究对于SCN在OFPS入侵信号分类中的应用具有重要意义。

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