期刊文献+
共找到2篇文章
< 1 >
每页显示 20 50 100
Adaptive Dual Wavelet Threshold Denoising Function Combined with Allan Variance for Tuning FOG-SINS Filter 被引量:1
1
作者 BESSAAD Nassim BAO Qilian +3 位作者 SUN Shuodong du yuding LIU Lin HASSAN Mahmood Ul 《Journal of Shanghai Jiaotong university(Science)》 EI 2020年第4期434-440,共7页
Allan variance(AV)stochastic process identification method for inertial sensors has successfully combined the wavelet transform denoising scheme.However,the latter usually employs a traditional hard threshold or soft ... Allan variance(AV)stochastic process identification method for inertial sensors has successfully combined the wavelet transform denoising scheme.However,the latter usually employs a traditional hard threshold or soft threshold that presents some mathematical problems.An adaptive dual threshold for discrete wavelet transform(DWT)denoising function overcomes the disadvantages of traditional approaches.Assume that two thresholds for noise and signal and special fuzzy evaluation function for the signal with range between the two thresholds assure continuity and overcome previous difficulties.On the basis of AV,an application for strap-down inertial navigation system(SINS)stochastic model extraction assures more efficient tuning of the augmented 21-state improved exact modeling Kalman filter(IEMKF)states.The experimental results show that the proposed algorithm is superior in denoising performance.Furthermore,the improved filter estimation of navigation solution is better than that of conventional Kalman filter(CKF). 展开更多
关键词 Allan variance(AV) discrete wavelet transform(DWT) adaptive dual threshold fiber optic gyroscope(FOG) strap-down inertial navigation system(SINS) exact modeling filter
原文传递
Particle Filter and Its Application in the Integrated Train Speed Measurement 被引量:3
2
作者 ZHANG Liang BAO Qilian +3 位作者 CUI Ke JIANG Yaodong XU Haigui du yuding 《Journal of Shanghai Jiaotong university(Science)》 EI 2019年第1期130-136,共7页
Particle filter(PF) can solve the problem of state estimation under strong non-linear non-Gaussian noise condition with respect to traditional Kalman filter(KF) and those improved KFs such as extended KF(EKF) and unsc... Particle filter(PF) can solve the problem of state estimation under strong non-linear non-Gaussian noise condition with respect to traditional Kalman filter(KF) and those improved KFs such as extended KF(EKF) and unscented KF(UKF). However, problems such as particle depletion and particle degradation affect the performance of PF. Optimizing the particle set to high likelihood region with intelligent optimization algorithm results in a more reasonable distribution of the sampling particles and more accurate state estimation. In this paper, a novel bird swarm algorithm based PF(BSAPF) is presented. Firstly, different behavior models are established by emulating the predation, flight, vigilance and follower behavior of the birds. Then, the observation information is introduced into the optimization process of the proposal distribution with the design of fitness function. In order to prevent particles from getting premature(being stuck into local optimum) and increase the diversity of particles, Lévy flight is designed to increase the randomness of particle's movement. Finally,the proposed algorithm is applied to estimate the speed of the train under the condition that the measurement noise of the wheel sensor is non-Gaussian distribution. Simulation study and experimental results both show that BSAPF is more accurate and has more effective particle number as compared with PF and UKF, demonstrating the promising performance of the method. 展开更多
关键词 particle filter(PF) bird swarm algorithm fitness function Lévy flight proposal distribution integrated train speed measurement
原文传递
上一页 1 下一页 到第
使用帮助 返回顶部