Developing a neural network model for magnetic yoke structure

H. Ravanbod, E. Norouzi
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引用次数: 2

Abstract

Magnetic flux leakage technique is used extensively to detect and characterize defects in natural gas and oil transmission pipelines. The amount of magnetic flux introduced into the test sample is an important factor in the resolution of flaw detection. It depends on the power of permanent magnets and the geometrical design of the magnetic yoke. Finite element method (FEM) is the most widely used method of analyzing magnetic yoke due to its power, accuracy and straightforwardness. On the other hand its calculations are so complicated and time consuming, and every single modification in the parameters of the problem requires a new run. In this paper, we present an innovative method to overcome the problem of heavy calculations. In this method an artificial neural network (ANN) is trained to simulate the behavior of the magnetic yoke for different design parameters with an acceptable error. Afterwards the trained ANN calculates the desired output (usually generated flux) for a new design of the yoke by generalization of the already seen samples. This new method has got two advantages over the traditional FEM. First it is very fast and second it is flexible due to modifications in parameters.
建立了磁轭结构的神经网络模型
漏磁技术广泛应用于天然气和石油输送管道缺陷的检测和表征。引入试样的磁通量是影响探伤分辨率的一个重要因素。它取决于永磁体的功率和磁轭的几何设计。有限元法是目前应用最广泛的一种分析磁轭的方法,具有强大、准确和简单等优点。另一方面,它的计算是如此复杂和耗时,并且在问题的参数的每一个修改都需要一个新的运行。在本文中,我们提出了一种创新的方法来克服繁重的计算问题。该方法通过训练人工神经网络,在可接受的误差范围内模拟不同设计参数下磁轭的行为。然后,经过训练的人工神经网络通过对已知样本的概化,计算出新设计的轭的期望输出(通常是生成的通量)。与传统有限元法相比,该方法具有两个优点。首先,它非常快,其次,由于参数的修改,它是灵活的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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