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Verification of a Neural Network Based Predictive Emission Monitoring Module for an RB211-24C Gas Turbine

机译:基于神经网络的RB211-24C燃气轮机预测排放监测模块的验证

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This paper presents a verification of a Predictive Emission Monitoring (PEM) model developed for a non-DLE RB211-24C gas turbine used at a natural gas compressor station on the TransCanada Pipeline System in Alberta, Canada. The basis and methodology of the PEM model is first described, and its predictions were compared to recent Continuous Emission Monitoring (CEM) data obtained at different engine load conditions varying from 10 to 19 MW (site condition). The PEM model is based on an optimized Neural Network (NN) architecture which takes 6 fundamental engine parameters as input variables. The model predicts NOx (dry) as an output variable. The NN was trained using CEM measurements comprising four sets of actual emission data collected over four different dates in four different seasons during 2000, and at different operating conditions covering the range of the engine operating parameters. The PEM model was then implemented in the station Compressor Equipment Health Monitoring (CEHM) system and NOx predictions were reported online on a minutely basis for several months and NOx emission trends were captured and analyzed. Comparison between predictions and stack measurements shows a fairly good agreement between the PEM and CEM data within +10 ppm (dry).
机译:本文介绍了为加拿大艾伯塔省TransCanada管道系统的天然气压缩机站上使用的非DLE RB211-24C燃气轮机开发的预测排放监测(PEM)模型的验证。首先描述了PEM模型的基础和方法,并将其预测与最近的连续排放监测(CEM)数据进行了比较,这些数据是在10 MW至19 MW的不同发动机负载条件(现场条件)下获得的。 PEM模型基于优化的神经网络(NN)架构,该架构采用6个基本发动机参数作为输入变量。该模型将NOx(干燥)预测为输出变量。使用CEM测量值对NN进行了训练,该测量值包括在2000年的四个不同季节中的四个不同日期,在覆盖发动机运行参数范围的不同运行条件下收集的四组实际排放数据。然后在站点压缩机设备运行状况监视(CEHM)系统中实施PEM模型,并在几分钟内每分钟在线报告NOx预测,并捕获和分析NOx排放趋势。预测结果与烟囱测量值之间的比较表明,PEM和CEM数据在+10 ppm(干)范围内有相当好的一致性。

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