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首页> 外文期刊>Applied thermal engineering: Design, processes, equipment, economics >Online, quasi-real-time analysis of high-resolution, infrared, boiling heat transfer investigations using artificial neural networks
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Online, quasi-real-time analysis of high-resolution, infrared, boiling heat transfer investigations using artificial neural networks

机译:在线,准实时分析高分辨率,红外,沸腾的传热调查使用人工神经网络

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摘要

We present a machine learning methodology that can be used online and quasi-real-time (i.e., as fast as we can practically run an experiment) to accelerate the analysis of infrared, boiling heat transfer investigations. Precisely, we use feed-forward artificial neural networks with one layer of hidden neurons to measure bubble growth time, bubble period, and nucleation site density directly from the radiation recorded by the high-speed infrared camera. We test and validate the methodology against saturated pool boiling experiments with water, run on both plain and nanoengineered surfaces. Using such a technique, we have measurements of the quantities above within a few seconds from the moment the camera records the boiling surface radiation, with a regression coefficient of 0.95 or higher compared to reference measurements obtained by conventional, time-consuming, image processing techniques.
机译:我们提出了一种机器学习方法,可以在线和准实时使用(即,尽可能快地运行实验)以加速红外线,沸腾传热调查的分析。 精确地,我们使用具有一层隐蔽神经元的前馈人工神经网络来测量泡沫生长时间,泡沫周期和成核位点密度直接由高速红外相机记录的辐射。 我们测试并验证与水的饱和池沸腾实验的方法,在平原和纳米工程表面上运行。 使用这种技术,我们在相机记录沸点辐射的那一刻几秒钟内的数量测量,与通过常规,耗时的图像处理技术获得的参考测量相比,回归系数为0.95或更高的回归系数 。

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