摘要
In the rotary kiln alumina production process, because of the complexity and variability of rotary kiln burning zone conditions, some important quality index related process parameters can not be detected continuously on-line.Detecting the different burning zone conditions on-line is a key factor for the whole process automation of alumina industry. The current method depends on flame observation by naked eye.In order to realize automated recognition of burning zone conditions, a method which learned experience and knowledge from naked eye observation was proposed to recognize burning zone conditions by utilizing the image processing technique and pattern classification method.At first, features were extracted from flame images of rotary kiln burning zone and were combined with some important process parameters to constitute a hybrid feature vector.Then a model with a binary tree based SVM (support vector machine) was constructed.At last, a flame image recognition system was developed.The system was successfully applied to a domestic alumina plant, and good economic benefit was realized.
In the rotary kiln alumina production process, because of the complexity and variability of rotary kiln burning zone conditions, some important quality index related process parameters can not be detected continuously on-line. Detecting the different burning zone conditions on-line is a key factor for the whole process automation of alumina industry. The current method depends on flame observation by naked eye. In order to realize automated recognition of burning zone conditions, a method which learned experience and knowledge from naked eye observation was proposed to recognize burning zone conditions by utilizing the image processing technique and pattern classification method. At first, features were extracted from flame images of rotary kiln burning zone and were combined with some important process parameters to constitute a hybrid feature vector. Then a model with a binary tree based SVM (support vector machine) was constructed. At last, a flame image recognition system was developed. The system was successfully applied to a domestic alumina plant, and good economic benefit was realized.
出处
《化工学报》
EI
CAS
CSCD
北大核心
2008年第7期1839-1842,共4页
CIESC Journal
基金
高等学校学科创新引智计划项目(B08015)
教育部科学技术研究重大项目(308007)
国家高技术研究发展计划项目(2007AA041404)~~
关键词
回转窑烧成带
火焰图像识别系统
火焰图像处理
模式识别
alumina rotary kiln burning zone
flame image recognition system
flame image processing
pattern classification