基于油罐地面沉降监测中光学传感器温度分布先验的温度不确定性降低算法

Tao Liu, Tao Jiang, Gang Liu, Changsen Sun
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引用次数: 0

摘要

油罐的地面沉降(GS)决定了其结构的完整性和商业服务。然而,地面沉降监测面临着挑战,特别是由于白天油罐周围的太阳辐射引起的显著温差。为解决这一问题,本文挖掘了一个先验值,并在此基础上提出了一种温度不确定性降低算法。该先验值具有水箱周围温度的空间高斯分布,并通过数值模拟和实际测试进行了验证。此外,结合均匀封装的传感器探头和温度的空间先验,验证了温度不确定性也是高斯分布的。然后,可以通过高斯拟合来捕捉整体温度不确定性,并将其去除。经实际测试验证,温度不确定性降低了 91%,这种方法通过减少与温度相关的不确定性,使 GS 传感器能够有效地进行日间监测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Temperature Uncertainty Reduction Algorithm Based on Temperature Distribution Prior for Optical Sensors in Oil Tank Ground Settlement Monitoring
Ground settlement (GS) in an oil tank determines its structural integrity and commercial service. However, GS monitoring faces challenges, particularly due to the significant temperature differences induced by solar radiation around the tank in daytime. To address this problem, this paper digs out a prior and proposes a temperature uncertainty reduction algorithm based on that. This prior has a spatial Gaussian distribution of temperature around the tank, and numerical simulation and practical tests are conducted to demonstrate it. In addition, combining uniformly packaged sensor probes and the spatial prior of temperature, the temperature uncertainty is verified to be Gaussian-distributed too. Then, the overall temperature uncertainty can be captured by Gaussian fitting and then removed. The practical test verified a 91% reduction rate in temperature uncertainty, and this approach enables GS sensors to effectively perform daytime monitoring by mitigating temperature-related uncertainties.
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