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APPLICATION OF ARTIFICIAL NEURAL NETWORK AS DIGITAL FILTER FOR ONLINE HEAT FLUX ESTIMATION

机译:人工神经网络在线热通量估计中的应用

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Online heat flux measurement can greatly enhance the controllability in several industrial processes. Using heat flux estimation techniques based on temperature measurements is the best approach in many cases. Estimating the unknown heat flux (boundary condition) at the surface when temperature measurements are available in the interior points of the medium is an inverse heat conduction problem (IHCP). Several IHCP solution methods need the whole time domain data for the analysis and cannot be applied for real-time applications. Digital filter representation is one of the methods which can be used for near real-time heat flux estimation by using available temperature measurements. The idea of the filter algorithm is that the solution for the heat flux at any time is only affected by the recent temperature history and a few future time steps. Artificial Neural Network (ANN) is utilized in this study as a digital filter, for near real-time heat flux estimation by using temperature measurements. The performance of the ANN is compared with the digital filter coefficient method. ANN consists of a set of interconnected neurons that can evaluate outputs from inputs by feeding information through the network and adjusting the weights. Considering temperatures as the inputs and heat flux as the output, the weights can be interpreted as the filter coefficients. In using ANN, calculation of sensitivity coefficients is not needed which can lead to less computational cost. It is showed that the ANN method can estimate the heat flux closer to real-time comparing with digital filter approach. The developed method is tested through several numerical test cases using exact solutions.
机译:在线热通量测量可以大大提高若干工业过程中的可控性。使用基于温度测量的热通量估计技术是许多情况下最好的方法。当温度测量在介质的内部点中可获得温度测量时,估计表面的未知热通量(边界条件)是逆导热问题(IHCP)。几个IHCP解决方案方法需要对分析的整个时域数据,不能应用于实时应用程序。数字滤波器表示是通过使用可用温度测量来用于近实时热通量估计的方法之一。过滤算法的思想是随时对热通量的解决方案仅受到最近的温度历史和一些未来时间步长的影响。本研究中使用人工神经网络(ANN)作为数字滤波器,用于使用温度测量近实时热通量估计。将ANN的性能与数字滤波器系数法进行比较。 ANN由一组互连的神经元组成,可以通过通过网络馈送信息来评估来自输入的输出并调整权重。考虑到作为输出的输入和热通量的温度,重量可以解释为滤波器系数。在使用ANN中,不需要计算灵敏度系数,这可能导致计算成本更少。结果表明,ANN方法可以估计与数字滤波器方法相比更接近的热通量。通过使用精确解决方案通过若干数值测试用例测试开发的方法。

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