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Prior knowledge processing for initial state of Kalman filter

机译:卡尔曼滤波器初始状态的先验知识处理

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The paper deals with a specification of the prior distribution of the initial state for Kalman filter. The subjective prior knowledge, used in state estimation, can be highly uncertain. In practice, incorporation of prior knowledge contributes to a good start of the filter. The present paper proposes a methodology for selection of the initial state distribution, which enables eliciting of prior knowledge from the available expert information. The proposed methodology is based on the use of the conjugate prior distribution for models belonging to the exponential family. The normal state-space model is used for demonstrating the methodology. The paper covers processing of the prior knowledge for state estimation, available in the form of simulated data. Practical experiments demonstrate the processing of prior knowledge from the urban traffic control area, which is the main application of the research.
机译:本文讨论了卡尔曼滤波器初始状态的先验分布规范。用于状态估计的主观先验知识可能非常不确定。实际上,结合先验知识有助于过滤器的良好启动。本文提出了一种用于选择初始状态分布的方法,该方法能够从可用的专家信息中获取先验知识。所提出的方法是基于对属于指数族的模型使用共轭先验分布。正常状态空间模型用于说明该方法。本文涵盖了用于状态估计的先验知识的处理,可以通过模拟数据的形式获得。实践实验证明了对城市交通管制区先验知识的处理,这是本研究的主要应用。

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