...
首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >Adaptive estimation of noise covariance matrices in real-time preprocessing of geophysical data
【24h】

Adaptive estimation of noise covariance matrices in real-time preprocessing of geophysical data

机译:地球物理数据实时预处理中噪声协方差矩阵的自适应估计

获取原文
获取原文并翻译 | 示例
           

摘要

Modern data acquisition systems record large volumes of data which are often not suitable for direct computer processing-a first stage of preprocessing (or data "editing") is usually needed. In earlier work G. Noriega et al. (1992) the authors have developed an algorithm for multichannel data preprocessing, based on Kalman filtering and suitable for real-time geophysical data collection applications. The present work presents results of further investigations in the area of adaptive methods for estimation of noise covariance matrices Q and R, within the time-variant, fixed-lag Kalman filtering framework of the original problem. An algorithm is developed whereby asymptotically normal, unbiased, and consistent estimates are produced based on the correlation-innovations method introduced by Mehra (1970). This provides for direct estimation of R, and leads to a set of (n.m/sup 2/) equations, not linearly independent, from which an appropriate subset must be selected to achieve estimation of up to (n.m) unknowns in Q. For the model considered (n=m.M, with M=4 the single-channel system order, and n and m the state and measurement vector dimensions respectively), an explicit algorithm has been developed far estimation of the (m.m) unknowns in Q, based on a least squares fit of a subset of the equations available. A new approach is also introduced to ensure positive-definiteness of the covariance matrices. Since the time variant nature of the model prevents direct application of the adaptive algorithm, a parallel implementation is proposed. A first processor implements the time variant Kalman filter, using estimates of Q and R updated every N/sub s/ samples. A second processor computes these estimates, operating on the output of a steady state Kalman filter based on a simplified model, in which data editing features, responsible for rendering the model time variant, have been removed. A spike/step removal filter, and a Riccati equation solver are also implemented by this second processor. Computational requirements are analyzed and compared against those of other approaches. Simulations demonstrate the performance of the method proposed, and show it to be superior to other alternatives. An example showing application to real geophysical data is also presented.
机译:现代数据采集系统记录的大量数据通常不适合直接计算机处理-通常需要进行预处理的第一阶段(或数据“编辑”)。在早期的工作中,G。Noriega等人。 (1992)作者开发了一种基于卡尔曼滤波的多通道数据预处理算法,适用于实时地球物理数据收集应用。本工作提出了在原始问题的时变,固定滞后卡尔曼滤波框架内估算噪声协方差矩阵Q和R的自适应方法领域中进一步研究的结果。根据Mehra(1970)引入的相关性创新方法,开发了一种算法,可以渐近正常,无偏和一致地估计。这提供了对R的直接估计,并导致了一组(nm / sup 2 /)方程,这些方程不是线性独立的,必须从中选择一个适当的子集,以估计Q中最多(nm)个未知数。考虑模型(n = mM,M = 4为单通道系统阶数,n和m分别为状态和测量矢量维),已经开发了一种显式算法,用于估计Q中的(mm)未知数可用的方程式子集的最小二乘拟合。还引入了一种新方法来确保协方差矩阵的正定性。由于模型的时变性质阻止了自适应算法的直接应用,因此提出了并行实现。第一处理器使用对每N / sub s /样本更新的Q和R的估计来实现时变卡尔曼滤波器。第二个处理器基于简化的模型对稳态卡尔曼滤波器的输出进行运算,以计算这些估计,其中已删除了负责呈现模型时变的数据编辑功能。该第二处理器还实现了尖峰/阶跃消除滤波器和Riccati方程求解器。分析计算需求,并将其与其他方法的需求进行比较。仿真证明了所提出方法的性能,并表明它优于其他方法。还提供了一个示例,显示了对实际地球物理数据的应用。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号