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Comparison between a neural model and a thermographic model in estimating the thickness of scale in water pipes

机译:神经模型与热成像模型估算水管厚度的比较

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Cracks in metallic structures used in nuclear power plants may occur because to their continuous operation. To avoid accidents that will have serious consequences for the environment it is necessary to carry out non-destructive tests in the context of preventive maintenance. In this work, we present a simulation based on the 3D finite element method to detect the scale presence in a steel water pipe. We studied the effects of thickness and diameter of the pipe on the tartar detection. Then we studied the pipe thermal response as a function of scale thickness. Using the absolute thermal contrast, we made a comparison between a neural model and a thermo graphic model to estimate the scale thickness in steel water pipes. We found that the neural model results are better than the thermo graphic model.
机译:由于它们的连续操作,可能发生核电厂使用的金属结构中的裂缝。为了避免对环境产生严重后果的事故,有必要在预防性维护的背景下进行非破坏性测试。在这项工作中,我们介绍了一种基于3D有限元方法的模拟,以检测钢水管中的比例。我们研究了管道厚度和直径对牙垢检测的影响。然后我们将管道热响应作为尺度厚度的函数研究。使用绝对热对比度,我们在神经模型和热图模型之间进行了比较,以估算钢水管道中的规模厚度。我们发现神经模型结果优于热图形模型。

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