Article ID Journal Published Year Pages File Type
1832865 Nuclear Instruments and Methods in Physics Research Section A: Accelerators, Spectrometers, Detectors and Associated Equipment 2006 7 Pages PDF
Abstract

A three-layer feed-forward artificial neural network (ANN) with a back-propagation learning algorithm was used to predict the minimum detectable activity (AD) of radionuclides (226Ra, 238U, 235U, 40K, 232Th, 134Cs, 137Cs and 7Be) in environmental soil samples as a function of measurement time. The ANN parameters (learning rate, momentum, number of epochs, and the number of nodes in the hidden layer) were optimized simultaneously employing a variable-size simplex method. The optimized ANN model revealed satisfactory predictions, with correlation coefficients between experimental and predicted values 0.9517 for 232Th (sample with 238U/232Th ratio of 1.14) to 0.9995 for 40K (sample with 238U/232Th ratio of 0.43). Neither the differences between the measured and the predicted AD values nor the correlation coefficients were influenced by the absolute values of AD for the investigated radionuclides.

Related Topics
Physical Sciences and Engineering Physics and Astronomy Instrumentation
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