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.
翻译:本文的主要目的是提出K-Nearest-Neighbor(KNNN)算法,以预测天然气发电涡轮机的NOx排放量。由于天气和电网要求等许多因素,发电过程是动态的和迅速变化的。燃气涡轮设备也是发电的动态部分,因为随着涡轮机时代,设备特性和热动力行为的变化,气轮机设备也是发电的动态部分。定期维修涡轮机也是发电过程的另一个动态部分,影响设备性能。利用KNNN(在相对较小的数据集方面受过培训的KNN)的这一分析得出了最准确的预测率。这一说明可以逻辑解释,因为KNNN找到与当前输入参数最近的 K 相邻方,并估计了历史上类似预测的平均值。本文包含环境天气条件、电力输出以及涡轮机性能因素,以建立一个机器学习模型来预测NOx的排放量。该模型可用于优化减少有害排放和提高总体操作效率的操作程序。如原则组成部分Algoiths(PCA)等的后期算法已经用于监测设备性工作表现变化,从而深刻地影响Slistalstalstalversalex Resulation 分析。