改进提升小波方法在GNSS/INS组合导航接收机中的应用

Linlin Zhao, Haiyang Quan
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摘要

在GNSS/INS组合导航系统中,低成本MEMS传感器的噪声和偏置不稳定性会导致严重的定位误差,从而限制了系统在单机模式下的定位精度和位置、速度和姿态误差的快速增长。为了满足GNSS/INS组合导航接收机对MEMS传感器尺寸和成本有严格限制的降噪要求,提出了一种改进的提升小波方法,并对其进行了改进,以适应实际嵌入式平台的实时响应场景。首先分析了MEMS传感器的误差模型,并引入了Allan方差法。其次,介绍了一种改进的提升小波变换算法的原理。我们通过递归阈值选择对算法进行了改进,使其能够在嵌入式系统中工作。用C语言对算法进行了编码和编译,平稳仿真和Allan方差结果验证了算法的有效性。最后,我们成功地将该算法移植到自主研制的捷联式GNSS/INS组合导航接收机软件中。实验结果表明,该方法有效地降低了低成本MEMS传感器的随机噪声,有利于提高组合导航系统的精度和稳定性。
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Application of an Improved Lifting Wavelet Method in the GNSS/INS Integrated Navigation Receiver
The noise and bias instability of low-cost MEMS sensors can cause serious location errors in the GNSS/INS integrated navigation system which limit the accuracy and errors in terms of position, velocity and attitude grow rapidly in stand-alone mode. In order to satisfy the de-noising requirements of MEMS sensors for the GNSS/INS integrated navigation receivers that have strict restrictions in size and cost, an improved lifting wavelet method is proposed which is modified to fit the scenario of real-time response in practical embedded platforms. Firstly, we analyzed the error model of the MEMS sensors and introduced Allan variance method. Secondly, principle of an improved lifting wavelet transform algorithm is introduced. We modified the algorithm by recursive threshold selection which made it possible to work in the embedded system. The algorithm is coded and compiled in C language and stationary simulation and Allan variance results verified the effectiveness of the algorithm. Finally, we successfully transplanted the algorithm into the software of a self-developed strap-down GNSS/INS integrated navigation receiver. The experiment results indicate that the method is beneficial to the improvement of the accuracy and stability of the integrated navigation system by effectively reducing the random noise of the low-cost MEMS sensors.
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