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基于自组织神经网络的燃烧诊断研究
引用本文:周怀春,韩才元,朱和平,崔和平,张正方.基于自组织神经网络的燃烧诊断研究[J].控制理论与应用,1994,11(5):600-603.
作者姓名:周怀春  韩才元  朱和平  崔和平  张正方
作者单位:华中理工大学动力系,华中理工大学自动控制系
摘    要:自组织神经网络原理被尝试应用到燃烧诊断系统中,网络的输入是从稳定和非稳定燃烧工况下获取的火焰辐射信号的频谱估计值。经过自组织训练后,网络对不同燃烧工况下的输入具有明显不同的输出,通过验证证实了这种方法能检测到的燃烧火焰信号进行有效的处理,从而获取燃烧状态稳定与否的信息。

关 键 词:神经网络  燃烧诊断  燃烧火焰信号  锅炉
收稿时间:1993/2/15 0:00:00
修稿时间:1994/4/9 0:00:00

Simulation on Combustion Diagnosis Based on Self-Organized Neural Networks
ZHOU Huaichun,HAN Caiyuan,ZHU Heping and CUI Heping,ZHANG Zhengfang.Simulation on Combustion Diagnosis Based on Self-Organized Neural Networks[J].Control Theory & Applications,1994,11(5):600-603.
Authors:ZHOU Huaichun  HAN Caiyuan  ZHU Heping and CUI Heping  ZHANG Zhengfang
Affiliation:Department of Power Engineering, Huazhong University of Science and Technology
Abstract:In this paper, the self-organized neural networks were applied into a diagnostic system for combustion.The input signal of the neural networks was the power spectrum estimation of the flame signal from stable and unstable combustion states. Through trained by self-organization , the networks had different output maps for flame signals detected from stable and unstable combustion states. Verification showeed that this way can process efficiently the combustion flame signal detected, and such information can be obtained that whether the combustion state is stable or not.
Keywords:neural network  self-organization  combustion diagnosis  
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