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Identification of electromagnetic radiation source with support vector machines

机译:用支持向量机识别电磁辐射源

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摘要

A method for electromagnetic radiation source identification is proposed. The spatial characteristic of a radiation source is taken as the unique parameter for support vector machines (SVMs) to identify. First, the location of radiation source is determined by the triangulation method, and then its spatial characteristic is collected by a band receiver array with simulation, which removes the limit of absolute similarity between test data and training data. The 3D data are converted into a 1D vector with subscripts as inputs for SVMs, which are trained by the inputs to identify radiation source types intelligently. The identification time needs a few seconds, much faster than artificial neural networks (ANNs). The influence of parameters (e.g., noise from ambient environment, data collection method, scaling method for inputs, and parameters of SVMs) is discussed. The proposed method has good performance in noisy environment and the identification accuracy is 76.57 %, even though the signal to noise ratio decreases to 10 dB.
机译:提出了一种电磁辐射源识别方法。辐射源的空间特性被当作支持向量机(SVM)识别的唯一参数。首先,通过三角测量法确定辐射源的位置,然后通过模拟的频带接收器阵列收集辐射源的空间特征,从而消除了测试数据和训练数据之间绝对相似性的限制。将3D数据转换为一维矢量,并带有下标作为SVM的输入,输入对它们进行训练以智能识别辐射源类型。识别时间需要几秒钟,比人工神经网络(ANN)快得多。讨论了参数的影响(例如,周围环境的噪声,数据收集方法,输入的缩放方法以及SVM的参数)。所提方法即使在信噪比降低到10 dB的情况下,在嘈杂的环境中仍具有良好的性能,识别精度为76.57%。

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