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Temperature prediction of the molten salt collector tube using BP neural network

机译:基于BP神经网络的熔盐集热管温度预测。

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The collector tubes in a receiver play a vital role in the solar power tower system, and directly influence the cost of the power generation. Fast forecast of the temperatures of the collector tubes from the limited number of the temperature measurement data is important. Different from the common computational fluid dynamics prediction method, in this study a back-propagation neural network method is developed to fast acquire the temperature of the receiver, such as the peak temperatures of the inner and outer surfaces, and the outlet mean temperature and the outlet highest temperature of the molten salt. The numerical simulations are implemented to validate the feasibility and effectiveness of the proposed method. Moreover, in the proposed method the temperatures of the tube wall and the molten salt can be fast forecasted without the thermal physical parameters of materials, the boundary conditions or the initial conditions, and the solution of the complicated governing equations.
机译:接收器中的集热管在太阳能塔式系统中起着至关重要的作用,并直接影响发电成本。从有限数量的温度测量数据中快速预测集热管的温度非常重要。与普通的计算流体动力学预测方法不同,本研究开发了一种反向传播神经网络方法,以快速获取接收器的温度,例如内,外表面的峰值温度,出口平均温度和出口温度最高的熔盐。通过数值模拟验证了所提方法的可行性和有效性。此外,在所提出的方法中,可以快速预测管壁和熔融盐的温度,而无需考虑材料的热物理参数,边界条件或初始条件以及复杂的控制方程式的求解。

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