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A novel real-time adaptive suboptimal recursive state estimation scheme for nonlinear discrete dynamic systems with non-Gaussian noise

机译:具有非高斯噪声的非线性离散动态系统的实时自适应次优递归状态估计新方法

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摘要

A real-time state filtering and prediction scheme which is adaptive, recursive, and suboptimal is proposed for discrete time nonlinear dynamic systems with either Gaussian or non-Gaussian noise. The proposed scheme (PR) estimates states adaptively whenever both the observation is available and there exists a non-zero and finite number of real state roots of the observation model, otherwise the PR estimates states non-adaptively. The PR state transition and observation functions are as general as the state transition and observation functions for particle filters. The PR is based upon discrete noise approximation, state quantization, and a suboptimal implementation of multiple hypothesis testing. The PR first detects state estimate divergence points along the time axis, and then state estimate divergences are prevented by introducing new admissible state quantization levels; whereas the extended Kalman filter (EKF), sampling importance resampling (SIR) particle filter (bootstrap filter), and auxiliary sampling importance resampling (ASIR) particle filter produce diverging state estimates from actual state values for many dynamic models. The PR uses state transition functions in order to calculate transition probabilities from gates to gates. If these transition probabilities are somehow available, then state transition functions are not needed for state estimation with the PR; whereas state transition functions are necessary for state estimation with both particle filters and the EKF. The PR is very suitable for state estimation with either constraints imposed on state estimates or missing observations. The PR is more general than grid-based estimation approaches. Monte Carlo simulations have shown the effectiveness of the PR, that is, the PR performance is better than the performances of the EKF, SIR, and ASIR particle filters for many nonlinear models with white Gaussian noise, four examples of which are presented in the paper.
机译:针对具有高斯或非高斯噪声的离散时间非线性动态系统,提出了一种自适应,递归和次优的实时状态滤波和预测方案。每当观测值都可用并且观测模型的存在非零且有限数量的真实状态根时,建议的方案(PR)自适应地估计状态,否则PR进行非自适应状态估计。 PR状态转换和观察功能与粒子过滤器的状态转换和观察功能一样普遍。 PR基于离散噪声近似,状态量化和多重假设测试的次佳实现。 PR首先检测沿时间轴的状态估计差异点,然后通过引入新的可允许状态量化级别来防止状态估计差异;而扩展卡尔曼滤波器(EKF),采样重要性重采样(SIR)粒子滤波器(自举滤波器)和辅助采样重要性重采样(ASIR)粒子滤波器会从许多动态模型的实际状态值中得出不同的状态估计值。 PR使用状态转换函数来计算从一个门到另一个门的转换概率。如果以某种方式可获得这些转换概率,则不需要状态转换函数来进行PR的状态估计;而状态转换函数对于使用粒子滤波器和EKF进行状态估计是必需的。 PR非常适合于状态估计,或者对状态估计施加约束或缺少观察值。 PR比基于网格的估计方法更通用。蒙特卡洛仿真显示了PR的有效性,也就是说,对于许多具有高斯白噪声的非线性模型,PR性能要优于EKF,SIR和ASIR粒子滤波器的性能,本文给出了四个示例。

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