Supervised Abnormal Signal Identification Method

Xiao-ke Zhu, Shengbao Yang, Renyang Liu, Siyu Xiong, Li Shen, Jing He
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引用次数: 0

Abstract

Identifying radio anomalies is one of the main purposes of radio monitoring. The current radio anomaly signal identification is mainly finished manually by the Radio monitor, using professional radio knowledge and their work experience. However, because the anomaly signal is hidden in the "massive" data, accompanied by a large amount of noise, and also data imbalance, the anomaly signal is difficult to find. In this paper, we combine the data unevenness processing method SMOTE and the support vector machine (SVM), gradient lifting tree (GDBT), and other classification algorithms to identification the anomaly signal during radio monitoring. Experimental results show that our method can improve the efficiency of existing radio anomaly signal recognization. Moreover, our experiments also show that data imbalance processing plays a key role in anomaly signal recognition.
监督异常信号识别方法
识别无线电异常是无线电监测的主要目的之一。目前的无线电异常信号识别主要是由无线电监测员利用专业的无线电知识和工作经验手工完成的。然而,由于异常信号隐藏在“海量”数据中,伴随着大量的噪声,而且数据不平衡,因此异常信号很难被发现。本文将数据不均匀性处理方法SMOTE与支持向量机(SVM)、梯度提升树(GDBT)等分类算法相结合,对无线电监测过程中的异常信号进行识别。实验结果表明,该方法可以提高现有无线电异常信号识别的效率。此外,我们的实验还表明,数据不平衡处理在异常信号识别中起着关键作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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