Journal of Applied Sciences
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ZHANG Shu-Xia, JIANG Yu-Zhong , XU Da-yong
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Abstract: A fast convergence Bayesian estimator of the class A model parameters is derived and calculated using the Markov Chain Monte Carlo (MCMC) procedure. This estimator can estimate the impulsive index, Gauss-to-impulsive power ratio, noise power, and hidden states of class A noise model for the channel simultaneously. The considered estimator is different from traditional estimator, which provides a novel method with low-complexity, global optimization capability and potential for parallel processing. Simulation with small sample sizes shows effectiveness of the technique.
Key words: non-Gaussian noise, class A noise, impulsive noise
ZHANG Shu-Xia;JIANG Yu-Zhong;XU Da-yong. Estimation of Non-Gaussian Noise Parameters Using Markov Chain Monte Carlo Method[J]. Journal of Applied Sciences.
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URL: https://www.jas.shu.edu.cn/EN/
https://www.jas.shu.edu.cn/EN/Y2007/V25/I6/603
Probability Model Identification for Amplitude of Extremely Low Frequency Atmospheric Noise