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聚焦静电场中的五类图像问题
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作者 冯占余 《河北理科教学研究》 2020年第1期27-32,共6页
静电场是高中物理的重点内容,也是高考的重要考点.考查电场中基本概念时,往往会给出与电场分布有关的图象.掌握各个图象的特点,理解其斜率、截距、"面积"对应的物理意义,有利于顺利解决电场中的图象问题,同时能全面地理解电... 静电场是高中物理的重点内容,也是高考的重要考点.考查电场中基本概念时,往往会给出与电场分布有关的图象.掌握各个图象的特点,理解其斜率、截距、"面积"对应的物理意义,有利于顺利解决电场中的图象问题,同时能全面地理解电场中的基本概念和规律. 展开更多
关键词 静电场 图象问题
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Deep Neural Network-Based Generation of Planar CH Distribution through Flame Chemiluminescence in Premixed Turbulent Flame
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作者 Lei Han Qiang Gao +4 位作者 Dayuan Zhang zhanyu feng Zhiwei Sun Bo Li Zhongshan Li 《Energy and AI》 2023年第2期22-30,共9页
Flame front structure is one of the most fundamental characteristics and, hence, vital for understanding combustion processes. Measuring flame front structure in turbulent flames usually needs laser-based diagnostic t... Flame front structure is one of the most fundamental characteristics and, hence, vital for understanding combustion processes. Measuring flame front structure in turbulent flames usually needs laser-based diagnostic techniques, mostly planar laser-induced fluorescence (PLIF). The equipment of PLIF, burdened with lasers, is often too sophisticated to be configured in harsh environments. Here, to shed the burden, we propose a deep neural network-based method to generate the structures of flame fronts using line-of-sight CH* chemiluminescence that can be obtained without the use of lasers. A conditional generative adversarial network (CGAN) was trained by simultaneously recording CH-PLIF and chemiluminescence images of turbulent premixed methane/air flames. Two distinct generators of the C-GAN, namely Resnet and U-net, were evaluated. The former net performs better in this study in terms of both generating snap-shot images and statistics over multiple images. For chemiluminescence imaging, the selection of the camera’s gate width produces a trade-off between the signal-to-noise (SNR) ratio and the temporal resolution. The trained C-GAN model can generate CH-PLIF images from the chemiluminescence images with an accuracy of over 91% at a Reynolds number of 5000, and the flame surface density at a higher Reynolds number of 10,000 can also be effectively estimated by the model. This new method has the potential to achieve the flame characteristics without the use of laser and significantly simplify the diagnosing system, also with the potential for high-speed flame diagnostics. 展开更多
关键词 Turbulent flame front Neural network Conditional generative adversarial nets Laser diagnostics CHEMILUMINESCENCE
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