Implementation of linear prediction techniques in state estimation

Naeem Khan, Muhammad Irfan Khattak, M. Khan, Faheem Khan, Latif Ullah Khan, S. Salam, D. Gu
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引用次数: 12

Abstract

Three different linear prediction coefficients (LPC) techniques are employed lo restore missing data in the process of state estimation. The conventional Normal Equation method has been found computationally expensive. Alternatively. Levinson Durbin Algorithm (LDA) considerably reduces this computational cost by avoiding the larger matrix inversions involved in the computation of LPC. However, LDA has been found suffering from a larger dynamic range in the values of LPC, An alternate method - Leroux Gueguen Algorithm (LGA) eliminates the problem associated with dynamic range in a stationary-point scenario by taking the application of Schwartz inequality in computation of this method. The main course of this work is to reduce the computational complexity of the Normal Equation when integrated with Kalman filter with that of LDA and LGA methods which do not require on matrix inversion in the computation of LPCs.
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线性预测技术在状态估计中的实现
采用三种不同的线性预测系数(LPC)技术来恢复状态估计过程中的缺失数据。传统的正态方程方法计算量大。另外。Levinson Durbin算法(LDA)通过避免LPC计算中涉及的较大的矩阵反转,大大降低了这种计算成本。然而,LDA的LPC值存在较大的动态范围,另一种方法- Leroux - Gueguen算法(LGA)通过在该方法的计算中应用Schwartz不等式,消除了定点情况下的动态范围问题。本文的主要工作是降低卡尔曼滤波法与LDA和LGA法的计算复杂度,这两种方法在lpc计算中不需要矩阵反演。
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