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Iteration Bayesian Reweighed Algorithm for Optical Carrier-Based Microwave Interferometry Sensing

机译:基于光载波的微波干涉测量的迭代贝叶斯加权算法

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摘要

This paper proposes a novel iteration Bayesian reweighed (IBR) algorithm to obtain accurate estimates of a measurement parameter that uses only a few noisy measurement data. The method is applied to optimize the frequency fluctuation in an optical carrier-based microwave interferometry (OCMI) system. The algorithm iteratively estimates the frequency of the S-parameter valley point by collecting training samples to rebalance the weights between prior samples, which reduces the impact of noise in the system. Simulation shows that the estimated result of this algorithm is closer to the true value than that of the maximum likelihood estimation (MLE) using the same amount of measured data. Under the influence of system noise, this algorithm optimizes the frequency fluctuation of the S-parameter and reduces the impact of individual measured data. In this study, we applied the algorithm in the strain sensing experiment and compared it with the MLE. When axial strain changes 240 με, the IBR algorithm yields a deviation of 36 με, which is a significant reduction from 138 με (using the MLE method). Moreover, the average error rate decreases from 25% to 3% (with the MLE method), suggesting that the linear fitting degree of the estimated results and accuracy of the system are improved. Moreover, the algorithm has a wide range of applicability, for it can handle different application models in the OCMI system and the systems with frequency fluctuation problems.
机译:本文提出了一种新颖的迭代贝叶斯重称(IBR)算法,以获取仅使用少量噪声测量数据的测量参数的准确估计值。该方法用于优化基于光载波的微波干涉测量(OCMI)系统中的频率波动。该算法通过收集训练样本来重新平衡先前样本之间的权重,从而迭代估算S参数谷点的频率,从而减少了系统噪声的影响。仿真表明,与使用相同数量的测量数据的最大似然估计(MLE)相比,该算法的估计结果更接近真实值。在系统噪声的影响下,该算法优化了S参数的频率波动并减少了单个测量数据的影响。在这项研究中,我们将该算法应用于应变传感实验,并将其与MLE进行了比较。当轴向应变变化240με时,IBR算法产生的偏差为36με,与138με(使用MLE方法)相比有明显降低。而且,平均误差率从25%下降到3%(使用MLE方法),这表明估计结果的线性拟合度和系统精度得到了提高。此外,该算法具有广泛的适用性,因为它可以处理OCMI系统和存在频率波动问题的系统中的不同应用模型。

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