MATHEMATICS AND STATISTICS (ALHAMBRA), cilt.7, sa.1, ss.1-9, 2019 (Scopus)
Excess air coefficient (λ) is the most
important parameter characterizing the combustion
efficiency. Conventional measurement of λ is practiced by
way of the flue analyze device with high market priced.
Estimating of the λ from flame images is crucial in
perspective of the combustion control because of
decreasing structural dead time of the combustion process.
Beside, estimation systems can be used continuously in a
closed loop control system, unlike conventional analyzers.
This paper represents a basic λ prediction system with a
neural network for small scale nut coal burner equipped
with a CCD camera. The proposed estimation system has
two inputs. First input is stack gas temperature simply
measuring from the flue. To choose the second input,
eleven different matrix parameters have been evaluated
together with flue gas temperature values and performed by
matrix-based multiple linear regression analysis. As a
result of these analyses, it has been seen that the trace of
image matrix obtained from the flame image provides
higher accuracy than the other matrix parameters. This
instantaneous trace value of image source matrix is then
filtered from high frequency dynamics by means of a low
pass filter. Experimental data of the inputs and λ are
synchronously matched by a neural network. Trained
algorithm has reached R=0.984 in terms of accuracy. It is
seen from the result that proposed estimating system using
flame image with assistance of the stack gas temperature
can be preferred in combustion control systems.