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Interrelationship of single-filter and multiple-model adaptive algorithms

机译:单滤波器和多模型自适应算法的相互关系

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摘要

An equivalent filter bank structure for multiple model adaptive estimation (MMAE) is developed that uses the residual and state estimates from a single Kalman filter and linear transforms to produce equivalent residuals of a complete Kalman filter bank. The linear transforms, which are a function of the differences between the system models used by the various Kalman filters, are developed for modeling differences in the system input matrix, the output matrix, and the state transition matrix. The computational cost of this new structure is compared with the cost of the standard Kalman filter bank (SKFB) for each of these modeling differences. This structure is quite similar to the generalized likelihood ratio (GLR) structure, where the linear transforms can be used to compute the matched filters used in the GLR approach. This approach produces the best matched filters in the sense that they truly represent the time history of the residuals caused by a physically motivated failure model.
机译:开发了一种用于多模型自适应估计(MMAE)的等效滤波器组结构,该结构使用来自单个卡尔曼滤波器的残差和状态估计值以及线性变换来产生完整卡尔曼滤波器组的等效残差。线性变换是各种卡尔曼滤波器使用的系统模型之间差异的函数,用于对系统输入矩阵,输出矩阵和状态转换矩阵中的差异进行建模。针对这些建模差异中的每一个,将这种新结构的计算成本与标准卡尔曼滤波器组(SKFB)的成本进行比较。这种结构与广义似然比(GLR)结构非常相似,在广义似然比结构中,线性变换可用于计算GLR方法中使用的匹配滤波器。从某种意义上说,这种方法可以产生最佳匹配的滤波器,因为它们真正代表了由物理动机的故障模型引起的残差的时间历史。

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