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Application of Kalman filtering to real-time preprocessing of geophysical data

机译:卡尔曼滤波在地球物理数据实时预处理中的应用

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摘要

An algorithm for automatic preprocessing of multiple data sequences in real-time is proposed. Based on a fixed-lag Kalman filter approach, it models the signal using a state vector that consists of the signal, its first three differences, and a special variable used to implement data editing functions. The smoothed output lessens some of the noise problems encountered in practice, and the method provides mechanisms for identification and removal of spikes, identification and measurement of steps, and filling of data gaps. Two versions of the algorithm are developed, one based on the conventional form of the Kalman filter, and one using a sequential processing technique. The computational requirements of each are analyzed and compared. An alternate approach for fixed-lag smoothing based on a one-step forward predictor and an L-step backward sweep, with L being the fixed lag, is also considered. It is shown that despite the greater complexity of the model used in the algorithms proposed, for L<30 the computational requirements are very similar to those of the alternate method.
机译:提出了一种实时自动预处理多个数据序列的算法。基于固定滞后卡尔曼滤波器方法,它使用状态向量对信号进行建模,该状态向量由信号,信号的前三个差值和用于实现数据编辑功能的特殊变量组成。平滑的输出减轻了实践中遇到的一些噪声问题,该方法提供了用于识别和消除尖峰,识别和测量步长以及填补数据空白的机制。开发了两种算法,一种基于卡尔曼滤波器的传统形式,另一种使用顺序处理技术。分析和比较每个计算要求。还考虑了一种替代方法,该方法基于单步前向预测变量和L步向后扫描,其中L为固定滞后,用于固定滞后平滑。结果表明,尽管在所提出的算法中使用的模型更加复杂,但是对于L <30,计算要求与替代方法的要求非常相似。

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