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Multi-rate Kalman filtering for the data fusion of displacement and acceleration response measurements in dynamic system monitoring

机译:多速率卡尔曼滤波用于动态系统监测中位移和加速度响应测量的数据融合

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摘要

Many damage detection and system identification approaches benefit from the availability of both acceleration and displacement measurements. This is particularly true in the case of suspected non-linear behavior and permanent deformations. In civil and mechanical structural modeling accelerometers are most often used, however displacement sensors, such as non-contact optical techniques as well as GPS-based methods for civil structures are becoming more common. It is suggested, where possible, to exploit the inherent redundancy in the sensor information and combine the collocated acceleration and displacement measurements in a manner which yields highly accurate motion data. This circumvents problematic integration of accelerometer data that causes low-frequency noise amplification, and potentially more problematic differentiation of displacement measurements which amplify high-frequency noise. Another common feature of displacement-based sensing is that the high-frequency resolution is limited, and often relatively low sampling rates are used. In contrast, accelerometers are often more accurate for higher frequencies and higher sampling rates are often available. The fusion of these two data types must, therefore, combine data sampled at different frequencies. A multi-rate Kalman filtering approach is proposed to solve this problem. In addition, a smoothing step is introduced to obtain improved accuracy in the displacement estimate when it is sampled at lower rates than the corresponding acceleration measurement. Through trials with simulated data the procedure's effectiveness is shown to be quite robust at a variety of noise levels and relative sample rates for this practical problem.
机译:许多损伤检测和系统识别方法都受益于加速度和位移测量的可用性。在怀疑的非线性行为和永久变形的情况下尤其如此。在民用和机械结构建模中,最常使用加速度计,但是位移传感器,例如非接触式光学技术以及基于GPS的用于民用结构的方法正变得越来越普遍。建议在可能的情况下利用传感器信息中的固有冗余,并以产生高精度运动数据的方式组合并置的加速度和位移测量值。这避免了加速度计数据的有问题的积分,该积分会导致低频噪声放大,并且可能会引起位移测量结果的差异化,从而放大高频噪声。基于位移的感测的另一个共同特征是高频分辨率受到限制,并且通常使用相对较低的采样率。相反,对于更高的频率,加速度计通常更准确,并且通常可获得更高的采样率。因此,这两种数据类型的融合必须组合以不同频率采样的数据。为了解决这个问题,提出了一种多速率卡尔曼滤波方法。此外,引入了平滑步骤,以在位移估计值比相应的加速度测量值更低的采样率下获得更高的位移估计精度。通过对模拟数据的试验,该程序在针对该实际问题的各种噪声水平和相对采样率下的有效性非常可靠。

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