结合激光雷达和时域频率分析,加强对振动响应的空间理解

Oliver L. Geißendörfer;Christoph Holst
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引用次数: 0

摘要

对物体的周期性行为进行分析,大多使用固定在物体表面的惯性测量单元(IMU)或全球导航卫星系统(GNSS)传感器。要将观测数据连接起来,前提条件是传感器必须在空间和时间上被分配到相同的参考框架中。使用光探测和测距(LiDAR)观测可实现单个传感器内数据点的非接触、时间同步和空间连接。因此,我们可以进一步分析频谱中的共同信号属性,从而找到观测数据之间的联系和相似性。由于观测数据在空间上是连续的,因此我们可以对其进行离散化处理。然而,时域提供了多种方法,可同时估算频率并对不同空间位置的属性进行连续建模。在这项工作中,我们开发了在时域中处理激光雷达数据的潜力,以利用传感器的非接触式观测及其在空间和时间上的采样率。我们利用连续点及其空间邻域来实现时空连接,从而直接建立二维空间振荡模型。此外,我们还计算了估计变量的不确定性,以验证我们的解决方案。因此,我们的方法为描述和评估空间连接区域的运动和振动提供了机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combining LiDAR and Time-Domain Frequency Analysis for Enhanced Spatial Understanding of Vibration Responses
Analyzing objects concerning their periodic behavior is mostly performed with inertial measurement units (IMUs) or global navigation satellite system (GNSS) sensors fixed to its surface. For connecting observations, sensors have to be assigned to the same reference frame in space and time as a prerequisite. Using light detection and ranging (LiDAR) observations enables contactless, time-synchronized, and spatially connected data points within a single sensor. Therefore, common signal properties are further analyzed in the spectrum to find connections and similarities between observations. Since observations are spatially continuous we can discretize them and traditionally process them. However, the time domain offers a diversity of ways to simultaneously estimate frequencies and continuously model properties at different spatial locations. Within this work, we exploit the potential of processing LiDAR data in the time domain to make use of the sensor’s contactless observations and its sampling rate in space and time. Consecutive points and their spatial neighborhoods are used to implement temporal as well as spatiotemporal connections to directly model oscillations in 2-D space. Moreover, we compute an uncertainty of estimated variables to qualify our solution. Consequently, our approach offers the opportunity to describe as well as evaluate movements and vibrations of spatially connected areas.
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