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Extended modulation classification scheme based on approximate entropy

机译:基于近似熵的扩展调制分类方案

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This paper focuses on the modulation classification problem based on approximate entropy(ApEn). The original ApEn-based classification procedure is extended to a more comprehensive one. In the new procedure, preprocessing method of complex squaring is proposed to cancel out the negative effect introduced by noise. Simulation results demonstrate the effectiveness of our method to alleviate the demanding for extreme high signal-to-noise ratio(SNR). Specifically, almost 20dB gain can be obtained to achieve a reasonable high classification accuracyr≥90%) under the special occasion being studied. Furthermore, hybrid-c value scheme is proposed to ensure relatively good performance over the whole SNR range. In this scheme, two different c values are adopted simultaneously to form four-dimensional ApEn feature vectors for classification step, which combines each c value's good performance over the specific SNR range.
机译:本文重点是基于近似熵(APEN)的调制分类问题。基于APEN的分类程序扩展到更全面的分类程序。在新的过程中,提出了复杂平方的预处理方法来取消噪声引入的负效应。仿真结果表明了我们对苛刻的苛刻对极端高信噪比(SNR)的苛刻的有效性。具体地,可以获得几乎20dB的增益来在所研究的特殊场合下实现合理的高分类精度≥90%。此外,提出了Hybrid-C值方案以确保在整个SNR范围内的相对良好的性能。在该方案中,同时采用两种不同的C值来形成用于分类步骤的四维APEN特征向量,其将每个C值与特定SNR范围相结合。

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