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Multiple-mode-
- 本文就认知无线电发展的历史沿革进行了分析和总结,并介绍了认知无线电的四种技术包括:频谱感知、频谱管理、频谱移动性和频谱共享。并对这四种技术进行了翔实的说明和解释。同时在文章的最后对认知无线电发展的难点热点进行了分析,并对其未来的发展进行了展望。-In this paper, the development of cognitive radio history are analyzed and summarized, and presented four cognitive radio techn
ss
- spectrum sensing source code
Spectral-Monitoring
- spectrum sensing with USRP2
andandor
- 协作频谱感知理论and和or的比较有程序-Cooperative spectrum sensing theory and and or program
MATLAB
- these are some modification of the spectrum sensing method
detection
- 频谱感知技术中的能量检测技术的程序代码仿真-Spectrum sensing technology in the energy detection code simulation
cog
- This model defines the spectrum sensing in cognitive radio applications
CognitiveRadioNewFIG2
- Cooperative spectrum sensing and adapting to the environment, a cognitive radio is able to fill spectrum holes and serve without causing harmful interference to the licensed user. We consider optimization of cooperative spectrum sensing with energy d
single-detection
- 认知无线电频谱感知中的单用户频谱感知的主要三种方法:能量检测,循环平稳特征检测,匹配滤波器检测 的matlab实现的源代码-cognitive radio spectrum sensing:Energy detection, cyclostationary feature detection, matched filter detection 。matlab the source code
mat-files-for-cr
- file is all about the matlab code for spectrum sensing in cognitive radio environment related to energy detection and matched filter spectrum sensing techniques-file is all about the matlab code for spectrum sensing in cognitive radio environment rel
enegydetect
- bpsk信号频谱感知 能量检测算法 自编程序绝对有效-bpsk CR spectrum sensing
enegydetect1520
- 频谱感知 能量检测算法 SNR -15 -20对比输出结果-energy detection spectrum sensing
usrp_spectrum_sense
- 频谱感知源代码,usrp_spectrum_sense.rar,亲测可行。使用环境usrp,python汇编语言。-Spectrum sensing source code, usrp_spectrum_sense.rar, pro test feasible. Using environment python, USRP assembly language.
Energy-detector
- 认知无线电系统中采用能量检测频谱感知matlab代码,比较协作式感知时不同虚警概率下的结果- 认知无线电系统中采用能量检测频谱感知matlab代码,比较协作式感知时不同虚警概率下的结果 In cognitive radio system, the energy detection spectrum sensing matlab code is used to compare the results of different false alarm probabilities in coo