Vision-Guided Flame Control Using Fuzzy Logic and Neural Networks
نویسندگان
چکیده
This paper presents an application of fuzzy and neural network techniques to a vision-guided closed loop control for stationary luminous ames. The image processing technique is used to analyze and identify the process states. Fuzzy control strategy avoids the di culty in establishing a mathematical model for an ill-de ned process. Expert knowledge and training patterns can be incorporated into fuzzy rules, which are represented in the form of neurons. The use of a neural network makes it easy to increase the number of control parameters and provides the system the possibility to adjust its performance automatically. 2
منابع مشابه
Vision - Guided Flame Control
urnberg, Germany, May 1995. Vision-Guided Flame Control 1 Hans Burkhardt, Lars Oest, Wenjing Tao Technische Universit at Hamburg-Harburg, Technische Informatik I, Harburger Schlo str. 20, D-21071 Hamburg Abstract This paper is concerned with monitoring and control of combustion processes using image processing techniques. For closed-loop control we investigated two di erent approaches, namely ...
متن کاملVision-guided Flame Control 1
urnberg, Germany, May 1995. Vision-Guided Flame Control 1 Hans Burkhardt, Lars Oest, Wenjing Tao Technische Universit at Hamburg-Harburg, Technische Informatik I, Harburger Schlo str. 20, D-21071 Hamburg Abstract This paper is concerned with monitoring and control of combustion processes using image processing techniques. For closed-loop control we investigated two di erent approaches, namely ...
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تاریخ انتشار 1994