首页> 外文会议>Intelligent Robots and Systems, 1999. IROS '99. Proceedings. 1999 IEEE/RSJ International Conference on >State estimation based on observations simultaneously corrupted by random noise with known distribution and uncertainties with known bounds
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State estimation based on observations simultaneously corrupted by random noise with known distribution and uncertainties with known bounds

机译:基于观测的状态估计,观测同时被具有已知分布的随机噪声破坏和具有已知边界的不确定性破坏

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This paper presents a new approach for estimating the state of a linear dynamic system when two different types of uncertainties are present simultaneously. The first type of uncertainty is a stochastic process with given distribution. The second type of uncertainty is only known to be bounded, the exact underlying distribution is unknown. This includes inequality constraints between state variables, geometric tolerances, and bounded noise sources which are possibly correlated. For this generalized uncertainty model, a new recursive estimator has been developed. The new estimator unifies Kalman filtering and set theoretic filtering. It converges to a Kalman filter, when the bounded uncertainty goes to zero, and it converges to a set theoretic filter, when the stochastic noise vanishes. In the case of mixed uncertainties, the new estimator provides solution sets that are uncertain in a statistical sense.
机译:当两种不同类型的不确定性同时存在时,本文提出了一种估计线性动态系统状态的新方法。第一种不确定性是具有给定分布的随机过程。第二种类型的不确定性仅已知是有界的,确切的基础分布是未知的。这包括状态变量之间的不等式约束,几何公差和可能相关的有界噪声源。对于这种广义不确定性模型,已经开发了一种新的递归估计器。新的估算器统一了卡尔曼滤波和设定理论滤波。当有界不确定性变为零时,它收敛到一个卡尔曼滤波器,而当随机噪声消失时,它收敛到一个集合理论滤波器。在不确定性混合的情况下,新的估算器会提供在统计意义上不确定的解决方案集。

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