This study proposes a novel feature extraction approach for radionuclide identification to increase the precision of identification of the gamma-ray energy spectrum set.For easier utilization of the information contai...This study proposes a novel feature extraction approach for radionuclide identification to increase the precision of identification of the gamma-ray energy spectrum set.For easier utilization of the information contained in the spectra,the vectors of the gamma-ray energy spectra from Euclidean space,which are fingerprints of the different types of radionuclides,were mapped to matrices in the Banach space.Subsequently,to make the spectra in matrix form easier to apply to image-based deep learning frameworks,the matrices of the gamma-ray energy spectra were mapped to images in the RGB color space.A deep convolutional neural network(DCNN)model was constructed and trained on the ImageNet dataset.The mapped gamma-ray energy spectrum images were applied as inputs to the DCNN model,and the corresponding outputs of the convolution layers and fully connected layers were transferred as descriptors of the images to construct a new classification model for radionuclide identification.The transferred image descriptors consist of global and local features,where the activation vectors of fully connected layers are global features,and activations from convolution layers are local features.A series of comparative experiments between the transferred image descriptors,peak information,features extracted by the histogram of the oriented gradients(HOG),and scale-invariant feature transform(SIFT)using both synthetic and measured data were applied to 11 classical classifiers.The results demonstrate that although the gamma-ray energy spectrum images are completely unfamiliar to the DCNN model and have not been used in the pre-training process,the transferred image descriptors achieved good classification results.The global features have strong semantic information,which achieves an average accuracy of 92.76%and 94.86%on the synthetic dataset and measured dataset,respectively.The results of the statistical comparison of features demonstrate that the proposed approach outperforms the peak-searching-based method,HOG,and SIFT on the synthetic and measured datasets.展开更多
The wavelet transform (WT) method has been employed to decompose an original geophysical signal into a series of components containing different information about reservoir features such as pore fluids, lithology, a...The wavelet transform (WT) method has been employed to decompose an original geophysical signal into a series of components containing different information about reservoir features such as pore fluids, lithology, and pore structure. We have developed a new method based on WT energy spectra analysis, by which the signal component reflecting the reservoir fluid property is extracted. We have successfully processed real log data from an oil field in central China using this method. The results of the reservoir fluid identification agree with the results of well tests.展开更多
Biomass has a tendency to adsorb mercury from the flue gas emissions from fossil fuel combustion. In this paper, we have established an experimental table of the adsorption of mercury vapor by rice husk ash according ...Biomass has a tendency to adsorb mercury from the flue gas emissions from fossil fuel combustion. In this paper, we have established an experimental table of the adsorption of mercury vapor by rice husk ash according to the method described in the Chinese national standard GB/T 5009.17-1996. The experimental stud)' was made using rice husk ash samples of different types and at different temperatures. The results show that the carbon content of the rice husk ash was 3.81% after treatment for 1 h at 600℃, the mercury removal rate was above 95%, but the adsorption efficiency was below 20% after incineration for 4 h. The adsorption efficiency of rice husk ash treated by H202 or HCI was very low, while the adsorption efficiency was very high when rice husk ash was pyrolytically carbonized or basified by NaOH; the adsorption efficiency ofbasified rice husk ash sample was up to 98.5%. The carbon content of rice husk ash could affect the adsorption of mercury to some degree, but the internal structure of the rice husk ash samples was a more important factor for adsorption.展开更多
基金supported by the National Defense Fundamental Research Project(No.JCKY2020404C004)Sichuan Science and Technology Program(No.22NSFSC0044).
文摘This study proposes a novel feature extraction approach for radionuclide identification to increase the precision of identification of the gamma-ray energy spectrum set.For easier utilization of the information contained in the spectra,the vectors of the gamma-ray energy spectra from Euclidean space,which are fingerprints of the different types of radionuclides,were mapped to matrices in the Banach space.Subsequently,to make the spectra in matrix form easier to apply to image-based deep learning frameworks,the matrices of the gamma-ray energy spectra were mapped to images in the RGB color space.A deep convolutional neural network(DCNN)model was constructed and trained on the ImageNet dataset.The mapped gamma-ray energy spectrum images were applied as inputs to the DCNN model,and the corresponding outputs of the convolution layers and fully connected layers were transferred as descriptors of the images to construct a new classification model for radionuclide identification.The transferred image descriptors consist of global and local features,where the activation vectors of fully connected layers are global features,and activations from convolution layers are local features.A series of comparative experiments between the transferred image descriptors,peak information,features extracted by the histogram of the oriented gradients(HOG),and scale-invariant feature transform(SIFT)using both synthetic and measured data were applied to 11 classical classifiers.The results demonstrate that although the gamma-ray energy spectrum images are completely unfamiliar to the DCNN model and have not been used in the pre-training process,the transferred image descriptors achieved good classification results.The global features have strong semantic information,which achieves an average accuracy of 92.76%and 94.86%on the synthetic dataset and measured dataset,respectively.The results of the statistical comparison of features demonstrate that the proposed approach outperforms the peak-searching-based method,HOG,and SIFT on the synthetic and measured datasets.
基金This research is sponsored by Nation Natural Science Foundation of China (No.50404001 and No.50374048).
文摘The wavelet transform (WT) method has been employed to decompose an original geophysical signal into a series of components containing different information about reservoir features such as pore fluids, lithology, and pore structure. We have developed a new method based on WT energy spectra analysis, by which the signal component reflecting the reservoir fluid property is extracted. We have successfully processed real log data from an oil field in central China using this method. The results of the reservoir fluid identification agree with the results of well tests.
文摘Biomass has a tendency to adsorb mercury from the flue gas emissions from fossil fuel combustion. In this paper, we have established an experimental table of the adsorption of mercury vapor by rice husk ash according to the method described in the Chinese national standard GB/T 5009.17-1996. The experimental stud)' was made using rice husk ash samples of different types and at different temperatures. The results show that the carbon content of the rice husk ash was 3.81% after treatment for 1 h at 600℃, the mercury removal rate was above 95%, but the adsorption efficiency was below 20% after incineration for 4 h. The adsorption efficiency of rice husk ash treated by H202 or HCI was very low, while the adsorption efficiency was very high when rice husk ash was pyrolytically carbonized or basified by NaOH; the adsorption efficiency ofbasified rice husk ash sample was up to 98.5%. The carbon content of rice husk ash could affect the adsorption of mercury to some degree, but the internal structure of the rice husk ash samples was a more important factor for adsorption.