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Modulation classification of MPSK signals based on nonparametric Bayesian inference
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作者 陈亮 程汉文 吴乐南 《Journal of Southeast University(English Edition)》 EI CAS 2009年第2期171-174,共4页
A nonparametric Bayesian method is presented to classify the MPSK (M-ary phase shift keying) signals. The MPSK signals with unknown signal noise ratios (SNRs) are modeled as a Gaussian mixture model with unknown m... A nonparametric Bayesian method is presented to classify the MPSK (M-ary phase shift keying) signals. The MPSK signals with unknown signal noise ratios (SNRs) are modeled as a Gaussian mixture model with unknown means and covariances in the constellation plane, and a clustering method is proposed to estimate the probability density of the MPSK signals. The method is based on the nonparametric Bayesian inference, which introduces the Dirichlet process as the prior probability of the mixture coefficient, and applies a normal inverse Wishart (NIW) distribution as the prior probability of the unknown mean and covariance. Then, according to the received signals, the parameters are adjusted by the Monte Carlo Markov chain (MCMC) random sampling algorithm. By iterations, the density estimation of the MPSK signals can be estimated. Simulation results show that the correct recognition ratio of 2/4/8PSK is greater than 95% under the condition that SNR 〉5 dB and 1 600 symbols are used in this method. 展开更多
关键词 modulation classification M-ary phase shift keying Dirichlet process nonparametric Bayesian inference Monte Carlo Markov chain
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Imprecise Probability Method with the Power-Normal Model for Accelerated Life Testing
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作者 YIN Yichao HUANG Hongzhong LIU Zheng 《Journal of Shanghai Jiaotong university(Science)》 EI 2019年第6期805-810,共6页
We present a new nonparametric predictive inference(NPI)method using a power-normal model for accelerated life testing(ALT).Combined with the accelerating link function and imprecise probability theory,the proposed me... We present a new nonparametric predictive inference(NPI)method using a power-normal model for accelerated life testing(ALT).Combined with the accelerating link function and imprecise probability theory,the proposed method is a feasible way to predict the life of the product using ALT failure data.To validate the method,we run a series of simulations and conduct accelerated life tests with real products.The NPI lower and upper survival functions show the robustness of our method for life prediction.This is a continuous research,and some progresses have been made by updating the link function between different stress levels.We also explain how to renew and apply our model.Moreover,discussions have been made about the performance. 展开更多
关键词 accelerated life testing(ALT) power-normal model lower and upper survival functions nonparametric predictive inference(NPI) imprecise probability
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