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Online heat flux estimation using artificial neural network as a digital filter approach

机译:使用人工神经网络作为数字滤波方法的在线热通量估算

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摘要

Surface heat flux estimation using temperature measurement data from the interior points is known as inverse heat conduction problem (IHCP). Several methods have been developed as solution techniques for IHCP's including analytical and numerical approaches. Digital filter representation for IHCP solution (Woodbury and Beck, 2013; Beck et al., 1985) is one of the methods which can be used for near real-time heat flux estimation. In this study, artificial neural network (ANN) is utilized as a digital filter, for near real-time heat flux estimation using temperature measurement data. Considering temperatures as the inputs and heat flux as the output, the weights can be interpreted as filter coefficients. The proposed approach is used for both constant and temperature dependent material properties. The method developed is tested through several test cases using exact solutions and numerical models. The results show that ANN can be used as a digital filter method for near real-time surface heat flux estimation. The advantages and disadvantages of the method are also discussed.
机译:使用来自内部点的温度测量数据进行的表面热通量估算被称为逆热传导问题(IHCP)。已经开发出几种方法作为IHCP的解决方法,包括分析和数值方法。用于IHCP解决方案的数字滤波器表示(Woodbury和Beck,2013; Beck等,1985)是可用于近实时热通量估计的方法之一。在这项研究中,人工神经网络(ANN)被用作数字滤波器,用于使用温度测量数据进行近实时热通量估算。将温度作为输入,将热通量作为输出,则权重可以解释为滤波器系数。所提出的方法用于恒定和随温度变化的材料特性。所开发的方法通过使用精确解和数值模型的多个测试案例进行测试。结果表明,人工神经网络可以用作近实时地表热通量估计的数字滤波方法。还讨论了该方法的优缺点。

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