基于判别径向基网络的锅炉燃烧监测自动化

K. Sujatha, N. Pappa, U. Nambi, K. S. Kumar, C. R. R. Dinakaran
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引用次数: 12

摘要

本课题旨在将Fisher线性判别FLD分析与径向基网络RBN相结合,对某电站燃煤锅炉的燃烧质量进行监测与控制。火焰视频由CCD摄像机采集。从预处理后的图像中提取火焰图像的平均强度、火焰面积、火焰亮度、火焰方向等特征。FLD用于将n维特征尺寸减小到二维特征尺寸,以提高RBN的学习速度。将该方法的结果与传统的欧几里得距离分类器EDC进行了比较,EDC也用于寻找三组图像之间的距离。从一个连续的视频中提取出三组对应不同燃烧状态的火焰图像。通过测量得到了相应的温度和烟气中的一氧化碳含量。利用收集到的数据对Fisher线性判别径向基网络FLDRBN进行了训练和测试,并对各种算法的性能进行了评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automation of combustion monitoring in boilers using discriminant radial basis network
This research work aims at monitoring and control of the combustion quality in a power station coal fired boiler using a combination of Fisher's linear discriminant FLD analysis and radial basis network RBN. The flame video is acquired with CCD camera. The features of the flame images like average intensity, area of the flame, brightness of the flame, orientation of the flame, etc. are extracted from the preprocessed images. The FLD is applied to reduce the n-dimensional feature size to two-dimensional feature size for faster learning by the RBN. The results of the proposed technique are compared with the conventional Euclidean distance classifier EDC, which is also used to find the distance between the three groups of images. Three groups of images corresponding to different combustion conditions of the flames have been extracted from a continuous video. The corresponding temperatures and the carbon monoxide CO in the flue gas have been obtained through measurements. Training and testing of Fisher's linear discriminant radial basis network FLDRBN with the data collected have been done and the performances of the various algorithms are evaluated.
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