论文标题
用于辐射温度法中误差分析的新方法,并应用于工业炉
A novel method for error analysis in radiation thermometry with application to industrial furnaces
论文作者
论文摘要
准确的温度测量对于对工业炉的适当监视和控制至关重要。但是,测量不确定性是这种关键参数的风险。当使用光谱带辐射温度计时,必须考虑某些仪器和环境误差,例如目标表面发射率的不确定性,周围物体的反射辐射或大气吸收和发射,仅举几例。可以使用测量模型(也称为误差校正模型)对测量辐射的不希望贡献进行分离。本文介绍了一种预算在石化炉方案中温度测量过程中预算大量错误和不确定性的方法。还通过基于深度学习的测量校正模型提供了连续的监视系统,以允许域专家实时分析炉子的运行。为了验证拟议系统的功能,提出了石化厂中的现实应用程序案例。拟议的解决方案证明了精确的工业炉监测的可行性,从而提高了运营安全性并提高了此类能源密集型系统的效率。
Accurate temperature measurements are essential for the proper monitoring and control of industrial furnaces. However, measurement uncertainty is a risk for such a critical parameter. Certain instrumental and environmental errors must be considered when using spectral-band radiation thermometry techniques, such as the uncertainty in the emissivity of the target surface, reflected radiation from surrounding objects, or atmospheric absorption and emission, to name a few. Undesired contributions to measured radiation can be isolated using measurement models, also known as error-correction models. This paper presents a methodology for budgeting significant sources of error and uncertainty during temperature measurements in a petrochemical furnace scenario. A continuous monitoring system is also presented, aided by a deep-learning-based measurement correction model, to allow domain experts to analyze the furnace's operation in real-time. To validate the proposed system's functionality, a real-world application case in a petrochemical plant is presented. The proposed solution demonstrates the viability of precise industrial furnace monitoring, thereby increasing operational security and improving the efficiency of such energy-intensive systems.