气体传感器实验数据的软硬件平滑特点

Zhanna Mukanova, S. Atanov, M. Jamshidi
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引用次数: 1

摘要

在进行实验研究时,经常记录数量的数值,这些数值通常伴随着一些误差,这些误差不仅与测量技术、仪器测量误差有关,而且还与噪声的存在有关。在这方面,研究人员自然希望最小化测量误差和噪声是可以理解的。为了解决这一问题,在处理实验数据时,需要对结果进行近似处理,即对曲线数据进行平滑处理。本文基于使用可移动传感器MQ-135和ME2-O2-F20的实验室基准实验获得的数据,对一些最有效的平滑算法进行了比较分析。使用软件应用SCA(平滑曲线应用程序)实现平滑算法的应用,该应用程序允许消除硬件测量噪声。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Features of Hardware and Software Smoothing of Experimental Data of Gas Sensors
When conducting experimental studies, numerical values of quantities are often recorded, which are often measured with some error associated not only with the measurement technique, the error measurement of instruments, but also with the presence of noise. In this regard, the natural desire of researchers to minimize measurement errors and noise is understandable. To solve this problem, when processing experimental data, it is necessary to use the approximation of the results, i.e. smoothing the curve data. This article provides a comparative analysis of some of the most effective smoothing algorithms based on data obtained experimentally using a laboratory benchmark with removable sensors MQ-135 and ME2-O2-F20. The application of smoothing algorithms was implemented using the software application SCA (Smoothing Curve Application) which allowed to cancel hardware measurement noise.
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