论文标题
火星科学实验室在火星表面进行的剥落大气温度测量
Denoising Atmospheric Temperature Measurements Taken by the Mars Science Laboratory on the Martian Surface
论文作者
论文摘要
在本文中,我们分析了来自火星科学实验室的两个温度传感器的数据,该数据自2012年8月以来一直在火星中活跃。从漫游车获得的温度测量值嘈杂,必须对其进行处理和验证,然后才能交付给科学界。当前,一个简单的移动平均值(MA)过滤器用于执行信号降解。这种基本方法的应用取决于以下假设:噪声是固定的,并且在统计上独立于信号的基础结构,这是在这种恶劣环境中的一个可争议的假设。在本文中,我们分析了两种替代方法处理温度传感器测量值的应用:离散小波变换(DWT)和Hilbert-Huang Transform(HHT)。我们考虑两个不同的数据集,一个属于当前的火星测量活动,另一个属于热真空测试。这些数据集的处理允许将随机噪声与其他系统创建的干扰分开。实验表明,在给定情况下,MA过滤器可能会提供有用的结果。但是,所提出的方法可以更好地适合所有现实场景,同时提供了识别和分析其他有趣的信号特征和工件的可能性,这些特征和工件可以在后来进行研究和分类。要处理的大量数据使计算效率成为此任务中的重要要求。考虑到计算成本和过滤性能,我们提出基于DWT的方法更适合此应用。
In the present article we analyze data from two temperature sensors of the Mars Science Laboratory, which has been active in Mars since August 2012. Temperature measurements received from the rover are noisy and must be processed and validated before being delivered to the scientific community. Currently, a simple Moving Average (MA) filter is used to perform signal denoising. The application of this basic method relies on the assumption that the noise is stationary and statistically independent from the underlying structure of the signal, an arguable assumption in this kind of harsh environment. In this paper, we analyze the application of two alternative methods to process the temperature sensor measurements: the Discrete Wavelet Transform (DWT) and the Hilbert-Huang Transform (HHT). We consider two different datasets, one belonging to the current Martian measurement campaigns, and the other to the Thermal Vacuum Tests. The processing of these datasets allows to separate the random noise from the interference created by other systems. The experiments show that the MA filter may provide useful results under given circumstances. However, the proposed methods allow a better fitting for all the realistic scenarios, while providing the possibility to identify and analyze other interesting signal features and artifacts that could be later studied and classified. The large amount of data to be processed makes computational efficiency an important requirement in this mission. Considering the computational cost and the filtering performance, we propose the method based on DWT as more suitable for this application.