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Power law noise identification using the LAG 1 autocorrelation by overlapping samples

机译:使用LAG 1自相关通过重叠样本进行幂律噪声识别

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There are various random errors in the fiber optical gyroscope (FOG) output signal. At the aim of improving its accuracy, it is need to identify the kinds of errors. The most common method for power law noise identification is simply to observe the slope of a log-log plot of the Allan or modified Allan deviation versus averaging time, either manually or by fitting a line to it. The lag 1 autocorrelation method is a new method for power law noise identification that can determine the dominant noise type for all common noise processes, from phase or frequency data, for all averaging factors, in a consistent and analytic manner. This paper describes an improvement of it by overlapping samples, which improves the confidence of the resulting stability estimate at the expense of greater computational time.
机译:光纤陀螺仪(FOG)输出信号中存在各种随机误差。为了提高其准确性,需要识别错误的种类。幂律噪声识别的最常用方法是简单地手动或通过在其上拟合一条线来观察艾伦或修改后的艾伦偏差的对数-对数图相对于平均时间的斜率。滞后1自相关方法是一种用于幂律噪声识别的新方法,它可以以一致且解析的方式,根据相位或频率数据,所有平均因子,确定所有常见噪声过程的主要噪声类型。本文描述了通过重叠样本进行的改进,从而以更大的计算时间为代价提高了所得稳定性估计值的置信度。

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