大运动范围双轴倾角仪的人工神经网络标定

Ilija Jovanovic, Shaghayegh Khodabakhshian Khonsari, J. Enright
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引用次数: 0

摘要

对残差空间存在细微尺度不规则的传感器进行有效标定,需要大量密集的标定数据集。对于双轴电解倾角计,这些不规则分布不均匀,集中在驱动数据分辨率要求的小区域。使用均匀间隔采样查找表导致不规则区域被过度采样,增加了校准过程的负担。人工神经网络具有优化分配有限数量的可训练参数以最小化残差的能力。这样做的好处是可以减少数据收集需求和内存需求。在本文中,我们比较了神经网络的残差模型精度,并查找了温度变化的双轴倾角仪的表。我们通过将可训练参数等同于查找表数据来控制神经网络的大小,并通过样本点的数量来控制数据采集。为了避免神经网络的偏置,我们在均匀的数据采样位置引入随机扰动。对于温度相关的验证,我们发现与查找表相比,神经网络将正交测量通道之间的性能差异减少了99%。
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Artificial Neural Network Calibration of Wide Range of Motion Biaxial Inclinometers
Effective calibration of sensors with fine-scale irregularities in their residual space requires large and dense calibration datasets. For the case of biaxial electrolytic inclinometers, these irregularities are not evenly distributed and concentrate in small regions that drive data resolution requirements. Using evenly spaced sampling for look up tables results in less irregular regions being over-sampled, burdening the calibration process. Artificial neural networks have the capability to optimally distribute a limited number of trainable parameters to minimize the residuals. This can have the benefit of reducing data collection requirements as well as reducing memory requirements. In this paper, we compare the residual model accuracy of a neural networks and look up tables for biaxial inclinometers with temperature variability. We control for neural network size by equating trainable parameters to lookup table data and control for data acquisition by the number of sample points. To avoid biasing the neural network, we introduce random perturbation to otherwise uniform data sampling locations. For temperature dependent validation, we found that the neural network reduced the difference in performance between the orthogonal measurement channels by 99% as compared to a look up table.
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