Sensor Fault Detection and Signal Improvement using Predictive Filters

Hugo Kerhascoet, P. Merien, J. Laurent, E. Senn, F. Hauville
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Abstract

Navigation systems used in racing boats require sensors to be more and more sophisticated in order to obtain accurate information in real time. To meet the need for accuracy of the surface speed measurement, the mechanical sensor paddle wheel has been replaced by the ultrasonic sensor. This ultrasonic sensor measures the water speed precisely and with very good linearity. Furthermore, by its principle of operation, it measures the water flow several centimetres from the sensor, which puts it outside the boundary layer, the region close to the hull where the flow is disturbed. However, this sensor has several drawbacks: it is quite sensitive and if the flow contains too many air bubbles, the sensor picks them up, which can happen quite frequently on boat with a planing hull. Another limitation of this sensor is its low frequency measurement rate. In this paper, we explain the techniques used based on Kalman filters to address these shortcomings, firstly by identifying the inaccurate measurements caused by inadvertent dropouts, then by improving the useful sensor frequency with GNSS data fusion.
基于预测滤波器的传感器故障检测和信号改进
赛艇导航系统对传感器的要求越来越高,以获得准确的实时信息。为了满足表面速度测量精度的要求,机械传感器桨轮已被超声波传感器所取代。这种超声波传感器可以精确地测量水流速度,并具有很好的线性。此外,根据其工作原理,它测量距离传感器几厘米的水流,这将其置于边界层之外,即靠近船体的水流受到干扰的区域。然而,这种传感器有几个缺点:它非常敏感,如果水流中含有太多的气泡,传感器就会把它们捡起来,这种情况在有滑行船体的船上经常发生。该传感器的另一个限制是其低频测量速率。在本文中,我们解释了基于卡尔曼滤波器的技术来解决这些缺点,首先通过识别由无意丢失引起的不准确测量,然后通过GNSS数据融合提高有用的传感器频率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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