Title :
3D-2 Frequency Discrimination of Ultrasonic Signal Using Neural Networks for Grain Size Estimation
Author :
Unluturk, Mehmet S. ; Simko, Peter ; Saniie, Jafar
Author_Institution :
Izmir Univ. of Econ., Izmir
Abstract :
A neural network model has been developed to discriminate the frequency signatures inherent to ultrasonic microstructure scattering signals consisting of multiple irresolvable echoes of random amplitude and arrival time. A practical method which is called the grain power spectrum neural network (GPSNN) has been studied. This model is also compared with two other neural network models, called grain autocorrelation neural network (GACNN) and the grain amplitude neural network (GANN). The materials tested for grain size discrimination were three steel blocks type 1018 (two blocks were heat-treated at 1600 and 2000 degrees Fahrenheit for 4 hours) with grain sizes of 14 microns (ASTM No. 9), 24 microns (ASTM No. 7) and 50 microns (ASTM No. 5). Experimental grain signals were obtained using a broadband transducer with a 5 MHz center frequency and the measurements were made in the Rayleigh scattering region. A set of 2565 training sequences was utilized to train the neural network. A new set of 855 testing sequences was acquired to test the GPSNN, GACNN and GANN performance. Overall, GPSNN and GACNN achieved an average recognition performance of 94% and 90% respectively. This high level of recognition suggests that the GPSNN is a promising method for ultrasonic nondestructive testing and grain size estimation. In contrast, GANN failed to sort the grain scattering signals and was able to correctly classify the signal only 50% of the time.
Keywords :
acoustic signal processing; electrical engineering computing; grain size; learning (artificial intelligence); neural nets; steel; ultrasonic materials testing; ultrasonic transducers; GACNN comaprison; GANN comparison; GPSNN; Rayleigh scattering region; broadband ultrasonic transducer; echo amplitude; echo arrival time; frequency 5 MHz; grain amplitude neural network; grain autocorrelation neural network; grain power spectrum neural network; neural network training; neural networks; size 14 mum; size 24 mum; size 50 mum; temperature 1600 degF; temperature 2000 degF; time 4 h; training sequence; type 1018 steel block; ultrasonic grain size estimation; ultrasonic microstructure scattering signal; ultrasonic nondestructive testing; ultrasonic signal frequency discrimination; Autocorrelation; Building materials; Frequency estimation; Grain size; Materials testing; Microstructure; Neural networks; Rayleigh scattering; Steel; Transducers;
Conference_Titel :
Ultrasonics Symposium, 2007. IEEE
Conference_Location :
New York, NY
Print_ISBN :
978-1-4244-1384-3
Electronic_ISBN :
1051-0117
DOI :
10.1109/ULTSYM.2007.48