Determining NOx And SOx Emissions by Soft Sensor

P. Bangert
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Abstract

The NOx and SOx output of a combined heat and power plant is studied with the aim of replacing the physical sensor array with a mathematical formula that can compute the emissions rather than measure them. The model is determined using machine learning from historical measurements and uses neural networks. As the model can be cheaply deployed, will not drift, and will not malfunction or fail, the model has significant added value over a physical sensor. We find that the accuracy of the model is comparable to the accuracy of the measurement and is thus suitable for a full replacement.
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用软传感器测定NOx和SOx排放
研究了热电联产电厂的氮氧化物和硫氧化物输出,目的是用数学公式代替物理传感器阵列,可以计算排放而不是测量它们。该模型使用机器学习从历史测量中确定,并使用神经网络。由于该模型可以廉价部署,不会漂移,不会故障或失败,因此该模型比物理传感器具有显著的附加价值。我们发现该模型的精度与测量的精度相当,因此适合全面更换。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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