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Application of Fast Dynamic Allan Variance for the Characterization of FOGs-Based Measurement While Drilling

机译:快速动态艾伦方差在基于FOG的随钻测量表征中的应用

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摘要

The stability of a fiber optic gyroscope (FOG) in measurement while drilling (MWD) could vary with time because of changing temperature, high vibration, and sudden power failure. The dynamic Allan variance (DAVAR) is a sliding version of the Allan variance. It is a practical tool that could represent the non-stationary behavior of the gyroscope signal. Since the normal DAVAR takes too long to deal with long time series, a fast DAVAR algorithm has been developed to accelerate the computation speed. However, both the normal DAVAR algorithm and the fast algorithm become invalid for discontinuous time series. What is worse, the FOG-based MWD underground often keeps working for several days; the gyro data collected aboveground is not only very time-consuming, but also sometimes discontinuous in the timeline. In this article, on the basis of the fast algorithm for DAVAR, we make a further advance in the fast algorithm (improved fast DAVAR) to extend the fast DAVAR to discontinuous time series. The improved fast DAVAR and the normal DAVAR are used to responsively characterize two sets of simulation data. The simulation results show that when the length of the time series is short, the improved fast DAVAR saves 78.93% of calculation time. When the length of the time series is long (6 × 105 samples), the improved fast DAVAR reduces calculation time by 97.09%. Another set of simulation data with missing data is characterized by the improved fast DAVAR. Its simulation results prove that the improved fast DAVAR could successfully deal with discontinuous data. In the end, a vibration experiment with FOGs-based MWD has been implemented to validate the good performance of the improved fast DAVAR. The results of the experience testify that the improved fast DAVAR not only shortens computation time, but could also analyze discontinuous time series.
机译:由于温度变化,高振动和突然断电,光纤陀螺仪(FOG)随钻测量(MWD)的稳定性可能随时间而变化。动态艾伦方差(DAVAR)是艾伦方差的滑动版本。这是一个实用的工具,可以表示陀螺仪信号的非平稳行为。由于普通DAVAR花费的时间太长,无法处理较长的时间序列,因此已经开发了一种快速的DAVAR算法来加快计算速度。但是,对于不连续的时间序列,常规DAVAR算法和快速算法都将变得无效。更糟糕的是,基于FOG的MWD地下设备经常会工作几天。地面上收集的陀螺仪数据不仅非常耗时,而且有时会在时间轴上不连续。在本文中,基于DAVAR的快速算法,我们对快速算法(改进的快速DAVAR)进行了进一步的改进,以将快速DAVAR扩展到不连续的时间序列。改进的快速DAVAR和常规DAVAR用于响应地表征两组模拟数据。仿真结果表明,当时间序列的长度较短时,改进的快速DAVAR可以节省78.93%的计算时间。当时间序列的长度较长时(6×10 10 5 sup),改进的快速DAVAR可将计算时间减少97.09%。具有缺失数据的另一组模拟数据的特征在于改进的快速DAVAR。仿真结果表明,改进后的快速DAVAR可以成功处理不连续数据。最后,已经进行了基于FOG的MWD振动实验,以验证改进的快速DAVAR的良好性能。经验的结果证明,改进的快速DAVAR不仅可以缩短计算时间,还可以分析不连续的时间序列。

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