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Modified Automatic Digital Modulation Recognizer for Software Defined Radio

机译:用于软件定义的无线电的改装自动数字调制识别器

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From Communication intelligence (COMINT) to the seamless working of 3G/4G networks, Automatic Modulation Recognition (AMR) has become prominent parts of the communication system. For Software-Defined Radio (SDR) or Cognitive Radio (CR), where seamless communication is targeted with no or minimum human intervention. Due to this, it is inevitable to have an AMR. AMR has to recognize any modulation technique both analog and digital. Most of the communications of the present era is digital, a subsection of Automatic Digital Modulation Recognition (ADMR) is derived in spite of the fact that AMR by default has to identify and state, the type of modulation, irrespective of analog or digital type of modulations used. This article presents feature-based digital modulation recognition. ASK2, ASK4, PSK2, PSK4, FSK2, and FSK4 are considered as the contenders for recognition. For classification of the incoming signal, decision tree-based approach is used. An analytic signal is built using the intercepted signal. Spectral features extracted from the analytic signal. Features are being used as a decision-making parameters. Thresholds fixation for each of parameter to make a decision is fixed by a large set of symbols as a single segment say 65,536 symbols per segment. The accuracy of 100% has been achieved even when there are symbols over 512 per segment or frame.
机译:从通信智能(Comint)到3G / 4G网络的无缝工作,自动调制识别(AMR)已成为通信系统的突出部分。对于软件定义的无线电(SDR)或认知无线电(CR),无缝通信的目标无或最小的人为干预。由于这一点,有一个AMR是不可避免的。 AMR必须识别模拟和数字的任何调制技术。当前时代的大多数通信是数字的,尽管AMR默认必须识别和状态,但是,不管模拟或数字类型如何,都会导出自动数字调制识别(ADMR)的分布。使用的调制。本文提出了基于功能的数字调制识别。 Ask2,Ask4,PSK2,PSK4,FSK2和FSK4被认为是识别的竞争者。对于传入信号的分类,使用决策树的方法。使用截获信号构建分析信号。从分析信号提取的光谱特征。功能被用作决策参数。阈值固定为每个参数做出决定的由大符号集合为单个段说每段65536个符号固定。即使在每个部分或框架超过512的符号时,也实现了100%的准确性。

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