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[Communicationnonlinearfilter

Description: 工学博士学位论文 目前,扩展卡尔曼滤波是研究初始对准和惯性/GPS组合导航问题的一个主要手段。 但初始对准和惯性/GPS组合导航问题本质上是非线性的,对模型进行线性化的扩展卡 尔曼滤波在一定程度上影响了系统的性能。近年来,直接使用非线性模型的 UKF(Unscented Kalman Filtering, UKF)和粒子滤波,正在逐渐成为研究非线性估计问题 的热点和有效方法。 本文研究了UKF和粒子滤波两种非线性滤波方法,并将其应用于非线性静基座对 准和惯性/GPS组合导航,系统地研究了初始对准和惯性/GPS组合导航中各种非线性项-Engineering PhD thesis Currently, EKF is the initial alignment study and inertial / GPS navigation of a major means. However, initial alignment and inertial / GPS navigation on the nature of the problem is nonlinear. on the model of linear expansion of the Kalman filter certain extent affected the performance of the system. In recent years, direct use of the non-linear model (UKF Unscented Kalman Filtering. UKF) and the particle filter, is gradually becoming nonlinear estimation of the hot and effective method. This paper studies the UKF and particle filter both nonlinear filtering method, will be applied to nonlinear static Base Alignment and inertial / GPS navigation, systematic study of initial alignment and inertial / GPS navigation various nonlinear term
Platform: | Size: 5070259 | Author: daniel | Hits:

[Graph Recognizematlab_ukf_utilities

Description: utilities for Kalman filtering, unscented filtering, particle filtering, and miscillaneous other things. This code is stable and fast. -utilities for Kalman filtering, unscented filtering, particle filtering, miscillaneous and other things. This code is st able and fast.
Platform: | Size: 36847 | Author: sunxiaodian | Hits:

[Othermatlab_utilities

Description: This a collection of MATLAB functions for extended Kalman filtering, unscented Kalman filtering, particle filtering, and miscellaneous other things. These utilities are designed for reuse and I have found them very useful in many projects. The code has been vectorised for speed and is stable and fast.
Platform: | Size: 40045 | Author: 赵浩 | Hits:

[Network DevelopRECURSIVE BAYESIAN INFERENCE ON

Description:

This thesis is concerned with recursive Bayesian estimation of non-linear dynamical
systems, which can be modeled as discretely observed stochastic differential
equations. The recursive real-time estimation algorithms for these continuous-
discrete filtering problems are traditionally called optimal filters and the algorithms
for recursively computing the estimates based on batches of observations
are called optimal smoothers. In this thesis, new practical algorithms for approximate
and asymptotically optimal continuous-discrete filtering and smoothing are
presented.
The mathematical approach of this thesis is probabilistic and the estimation
algorithms are formulated in terms of Bayesian inference. This means that the
unknown parameters, the unknown functions and the physical noise processes are
treated as random processes in the same joint probability space. The Bayesian approach
provides a consistent way of computing the optimal filtering and smoothing
estimates, which are optimal given the model assumptions and a consistent
way of analyzing their uncertainties.
The formal equations of the optimal Bayesian continuous-discrete filtering
and smoothing solutions are well known, but the exact analytical solutions are
available only for linear Gaussian models and for a few other restricted special
cases. The main contributions of this thesis are to show how the recently developed
discrete-time unscented Kalman filter, particle filter, and the corresponding
smoothers can be applied in the continuous-discrete setting. The equations for the
continuous-time unscented Kalman-Bucy filter are also derived.
The estimation performance of the new filters and smoothers is tested using
simulated data. Continuous-discrete filtering based solutions are also presented to
the problems of tracking an unknown number of targets, estimating the spread of
an infectious disease and to prediction of an unknown time series.


Platform: | Size: 1457664 | Author: eestarliu | Hits:

[Program docnonlinearfilter

Description: 工学博士学位论文 目前,扩展卡尔曼滤波是研究初始对准和惯性/GPS组合导航问题的一个主要手段。 但初始对准和惯性/GPS组合导航问题本质上是非线性的,对模型进行线性化的扩展卡 尔曼滤波在一定程度上影响了系统的性能。近年来,直接使用非线性模型的 UKF(Unscented Kalman Filtering, UKF)和粒子滤波,正在逐渐成为研究非线性估计问题 的热点和有效方法。 本文研究了UKF和粒子滤波两种非线性滤波方法,并将其应用于非线性静基座对 准和惯性/GPS组合导航,系统地研究了初始对准和惯性/GPS组合导航中各种非线性项-Engineering PhD thesis Currently, EKF is the initial alignment study and inertial/GPS navigation of a major means. However, initial alignment and inertial/GPS navigation on the nature of the problem is nonlinear. on the model of linear expansion of the Kalman filter certain extent affected the performance of the system. In recent years, direct use of the non-linear model (UKF Unscented Kalman Filtering. UKF) and the particle filter, is gradually becoming nonlinear estimation of the hot and effective method. This paper studies the UKF and particle filter both nonlinear filtering method, will be applied to nonlinear static Base Alignment and inertial/GPS navigation, systematic study of initial alignment and inertial/GPS navigation various nonlinear term
Platform: | Size: 5069824 | Author: daniel | Hits:

[matlabdemorbpfdbn.tar

Description: 无味卡尔曼滤波的源代码,无味卡尔曼滤波用于估计非线性系统的状态值,优于扩展卡尔曼-tasteless Kalman Filtering source code, unscented Kalman filter for nonlinear systems estimated value of the state, better than the extended Kalman
Platform: | Size: 7168 | Author: siva | Hits:

[Graph Recognizematlab_ukf_utilities

Description: utilities for Kalman filtering, unscented filtering, particle filtering, and miscillaneous other things. This code is stable and fast. -utilities for Kalman filtering, unscented filtering, particle filtering, miscillaneous and other things. This code is st able and fast.
Platform: | Size: 36864 | Author: sunxiaodian | Hits:

[Mathimatics-Numerical algorithmsUnscentedEx

Description: 第四个例子滤波应用程序,可以了解粒子滤波的工作原理-fourth example filtering application that can understand the particle filter Principle
Platform: | Size: 1024 | Author: cml | Hits:

[Othermatlab_utilities

Description: This a collection of MATLAB functions for extended Kalman filtering, unscented Kalman filtering, particle filtering, and miscellaneous other things. These utilities are designed for reuse and I have found them very useful in many projects. The code has been vectorised for speed and is stable and fast.
Platform: | Size: 39936 | Author: 赵浩 | Hits:

[Graph programwavelet

Description: 实现一维小波变换文中详细介绍了函数优化(有无约束均可)、组合优化算法的原理和源程序,算法效率极高,欢迎下载。附件有更多的遗传算法算例,共研究算法用。 -realize wavelet transmit utilities for Kalman filtering, unscented filtering, particle filtering, and miscillaneous other things. This code is stable and fast.
Platform: | Size: 432128 | Author: 刘国胜 | Hits:

[Communication-Mobilepf

Description: 关于粒子滤波的仿真程序,比较了粒子滤波和卡尔曼滤波的优缺点-the unscented particle filtering
Platform: | Size: 2048 | Author: lanling | Hits:

[Mathimatics-Numerical algorithmsmyalgorithm

Description: 关于粒子滤波的仿真程序,比较了粒子滤波和卡尔曼滤波的优缺点-the unscented particle filtering
Platform: | Size: 2048 | Author: lanling | Hits:

[AI-NN-PRThe_nonlinear_filtering_algorithm_performance_anal

Description: 对目前非线性滤波的主要算法即扩展卡尔曼滤波、不敏卡尔曼滤波、粒子滤波、扩展卡尔曼粒子滤波和不敏粒子滤波的滤波模型、适用条件、性能进行了分析比较,给出了每种方法的计算复杂度.通过一个非线性非高斯模型进行了仿真,验证了这些算法的性能。-Present the main algorithms of the nonlinear filtering extended Kalman filter, Unscented Kalman filter, particle filter, particle filter and insensitive extended Kalman filter model of particle filter, the suitable conditions, performance is analyzed and compared, given computational complexity of each method. Through a nonlinear non-Gaussian model was simulated to verify the performance of these algorithms.
Platform: | Size: 277504 | Author: 李辉 | Hits:

[matlabBayes++

Description: BAYESIAN FILTERING: including KF, EKF, Unscented EKF, Particle Filter & etc
Platform: | Size: 136192 | Author: midori | Hits:

[Program docBearings-only-target-tracking

Description: 本文分别就纯方位角跟踪中的机动目标跟踪、有信号传输时延时的跟踪及一类特定的多目标跟踪问题进行了较为系统和深入的研究。首先,针对非机动目标提出一种智能距离参数化无味滤波方法,与传统方法相比,改进了跟踪初始性能、滤波精度以及优化了系统资源。其次,针对机动目标纯方位角跟踪提出一种将交互多模型和核粒子滤波结合的方法,在维持跟踪精度的前提下,大幅减少了所需粒子数,改善了系统实时性。-This paper bearings-only tracking of maneuvering target tracking, signal transmission time delay tracking and a special class of multiple target tracking problem systematically and deeply studied. Firstly, the maneuvering target puts forward an intelligent distance parameters of unscented filtering method, compared with the traditional method, improved the initial tracking performance, the filter accuracy and the optimization of system resources. Secondly, the maneuvering target bearings-only tracking presents an interactive multiple model and kernel particle filter binding method, in the maintenance of the tracking precision, greatly reduces the required number of particles, improves the system real time.
Platform: | Size: 5805056 | Author: 于文娟 | Hits:

[matlabEKF

Description: MATLAB三种卡尔曼滤波对比,分别是扩展卡尔曼滤波EKF,不敏卡尔曼滤波UKF,粒子滤波PF。有跟踪效果和估计值误差。-MATLAB the three Kalman filtering contrast, extended Kalman filter EKF, Unscented Kalman Filter UKF, particle filter PF. Tracking effect and the estimated value of the error.
Platform: | Size: 2048 | Author: 改键 | Hits:

[AlgorithmComplete--Filter

Description: 完整的Kalman Filter、EKF、IEKF、Unscented Kalman Filter及Particle Filter滤波程序。-The complete Kalman Filter, EKF, IEKF, Unscented Kalman Filter and Particle Filter filtering procedure.
Platform: | Size: 43008 | Author: 林心 | Hits:

[OtherPF

Description: 对粒子滤波、无迹卡尔曼滤波以及扩展卡尔曼滤波的算法做了对比,表现了粒子滤波的良好特性。-Particle filtering, unscented Kalman filter and extended Kalman filter algorithm to do a comparison, the performance characteristics of a good particle filter.
Platform: | Size: 13312 | Author: li | Hits:

[matlabupf_demos

Description: Nando de Freitas' sequential Monte Carlo demos in Matlab. Unscented Particle Filter.
Platform: | Size: 47104 | Author: Comaero | Hits:

[matlab目标定位

Description: 研究目标跟踪的状态估计方法,最小二乘估计,Kalman滤波,扩展Kalman滤波,无迹Kalman滤波以及粒子滤波等,理论及MATLAB源程序。(The state estimation methods of target tracking, least square estimation, Kalman filtering, extended Kalman filtering, unscented Kalman filtering and particle filtering, theory and MATLAB source program are studied.)
Platform: | Size: 688128 | Author: zkzhlp | Hits:
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