Pregled bibliografske jedinice broj: 26531
Prediction the jominy curves by means of neural networks
Prediction the jominy curves by means of neural networks // Proceedings of the 4th ASM Heat Treatment and Surface Engineering Conference in Europe / Firrao, Donato ; Mittemeijer, J. Eric (ur.).
Milano: Associazione Italiana di Metallurgia, 1998. str. 353-361 (poster, međunarodna recenzija, cjeloviti rad (in extenso), znanstveni)
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Naslov
Prediction the jominy curves by means of neural
networks
Autori
Filetin, Tomislav ; Majetić, Dubravko ; Žmak, Irena
Vrsta, podvrsta i kategorija rada
Radovi u zbornicima skupova, cjeloviti rad (in extenso), znanstveni
Izvornik
Proceedings of the 4th ASM Heat Treatment and Surface Engineering Conference in Europe
/ Firrao, Donato ; Mittemeijer, J. Eric - Milano : Associazione Italiana di Metallurgia, 1998, 353-361
Skup
4th ASM Heat Treatment and Surface Engineering Conference in Europe
Mjesto i datum
Firenca, Italija, 19.10.1998. - 21.10.1998
Vrsta sudjelovanja
Poster
Vrsta recenzije
Međunarodna recenzija
Ključne riječi
steels ; jominy curve ; prediction of properties ; artificial neural network
Sažetak
Accurate prediction of hardenability based on the chemical composition is very important for steel production as well as for its users. An attempt has bees made to establish a non-lionear static discrete-time neuron model, the so-called Static Elementary processor (SEP). Based on the SEP neurons, a Static Multy Layer Perceptron Neural Network is proposed to predict a Jominy hardness curve from chemical composition. To accelerate the convergence of proposed static error-back propagation learning method, the momentum method is applied. The learning results are presented in terms that are insensitive to learning data range and allow easy comparison with other learning algorithms, inedendent of machine architecture or simulator implementation. In the learning process datasets with 121 heats are used - comprising samples from 40 steel grades with different chemical composition. The mean error between measured nad predicted hardness data and standard deviation for testing dataset (60 heats - samples from 203 heats in question) is comparable with other published methods of prediction. The additional testing of three smaller groups - Cr- steels ; Cr-Ni-Mo (Ni-Cr-Mo) steels for hardening and tempering and Cr-Mo, Cr-Ni (Ni-Cr), Cr-Ni-Mo (Ni-Cr-Mo) steels for carburizing shows better accuracy then by testing with heterogeneous dataset.
Izvorni jezik
Engleski
Znanstvena područja
Strojarstvo
POVEZANOST RADA
Ustanove:
Fakultet strojarstva i brodogradnje, Zagreb