16:20 〜 16:30
[3507-19-12] 高速度イメージングとDeep Learning支援による銅マット-スラグ形成の理解に向けた現状と将来展望
司会:小池 克明(京都大学)
キーワード:銅製錬、懸垂燃焼試験、高速顕微イメージング、畳み込みニューラルネットワーク
An analysis based on a convolutional neural network (CNN) was carried out to classify the different combustion patterns of Cu concentrate-SiO2 mixtures tablets under oxidation gas to estimate their combustion behavior and phase changes. A suspended-combustion-test method involving high-speed digital microscopy and thermal measurements was employed to characterize the combustion behavior of each sample. The time series images-based pattern recognition method enabled the calculation of the chemical composition of the blended concentrates by transforming the network output into a probability distribution. The combustion of the blended-concentrate tablet was different from that of each single-concentrate tablet in terms of the combustion pattern like shapes of the molten part, and the temperature profiles. It can be interpreted that the change in the free surface shape of a tablet plays an important role in combustion pattern recognition, therefore when blended samples were used as training data as well as single samples, a good correlation could be obtained between the measured and predicted values of its chemical compositions. Predicting the combustion patterns of Cu concentrates by constructing a CNN database comprising further experiments with various Cu concentrates and blending conditions should be possible.