论文标题

天然燃气轮机发电厂中通过过程分析和预测建模对NOX的环境污染预测

Environmental Pollution Prediction of NOx by Process Analysis and Predictive Modelling in Natural Gas Turbine Power Plants

论文作者

Rezazadeh, Alan

论文摘要

本文的主要目的是提出用于预测天然气电气发电涡轮机的NOX排放的K-Nearest-neger(KNN)算法。由于天气和电网要求等许多因素,产生电力的过程是动态的,并且迅速变化。燃气轮机设备也是发电的动态部分,因为随着涡轮机的年龄,设备特性和热力学行为会发生变化。定期维护涡轮机也是电气生成过程的另一个动态部分,影响设备的性能。使用KNN发现的该分析在相对较小的数据集上训练会产生最准确的预测率。可以从逻辑上解释此语句,因为KNN找到了与当前输入参数最近的K邻邻域,并估计了与预测相似的观察值的额定平均值。 本文结合了环境天气条件,电气输出以及涡轮的性能因素,以建立机器学习模型以预测NOX排放。该模型可用于优化减少有害排放和提高总体运营效率的操作过程。潜在算法(例如原理成分算法(PCA))已用于监视设备性能行为变化,从而深深影响过程参数,因此确定了NOX排放。在整个论文中,都使用了机器学习绩效评估(例如多元分析,聚类和残差分析)的典型统计方法。

The main objective of this paper is to propose K-Nearest-Neighbor (KNN) algorithm for predicting NOx emissions from natural gas electrical generation turbines. The process of producing electricity is dynamic and rapidly changing due to many factors such as weather and electrical grid requirements. Gas turbine equipment are also a dynamic part of the electricity generation since the equipment characteristics and thermodynamics behavior change as the turbines age. Regular maintenance of turbines are also another dynamic part of the electrical generation process, affecting the performance of equipment. This analysis discovered using KNN, trained on relatively small dataset produces the most accurate prediction rates. This statement can be logically explained as KNN finds the K nearest neighbor to the current input parameters and estimates a rated average of historically similar observations as prediction. This paper incorporates ambient weather conditions, electrical output as well as turbine performance factors to build a machine learning model to predict NOx emissions. The model can be used to optimize the operational processes for reduction in harmful emissions and increasing overall operational efficiency. Latent algorithms such as Principle Component Algorithms (PCA) have been used for monitoring the equipment performance behavior change which deeply influences process paraments and consequently determines NOx emissions. Typical statistical methods of machine learning performance evaluations such as multivariate analysis, clustering and residual analysis have been used throughout the paper.

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