磁涡流传感器励磁系统设计的粒子群优化

Rukhshinda Wasif, M. Tokhi, J. Rudlin, R. Marks, G. Shirkoohi, Zhangfang Zhao, Fang-wei Duan
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引用次数: 1

摘要

磁涡流和漏磁传感器的检测能力取决于试样的磁化水平。虽然低磁化场强使检测缺陷变得困难,但较高的磁化水平会增加背景噪声以及传感器的尺寸和重量。此外,在磁化电路中使用的强力磁铁难以处理,并对健康和安全构成潜在危害。有限元建模被广泛应用于磁化磁轭的优化设计。建模软件进行基于人工智能的优化的能力有限,并且需要大量的迭代。这可能很耗时,而且计算成本很高。提出了一种利用粒子群优化算法设计磁涡流传感器励磁系统的优化方法。通过数值模拟确定了算法的目标函数和输入变量。对该算法与遗传算法和人工蜂群算法的性能进行了比较研究。通过实验验证了算法所得的传感器设计参数。结果表明,粒子群算法是一种快速、高效的悬架优化设计算法。
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Particle swarm optimization of excitation system design of magnetic eddy current sensor
The detection capability of magnetic eddy current and magnetic flux leakage sensors depends on the magnetization level in the test specimen. While low magnetization field intensity makes it difficult to detect defects, higher magnetization levels increase background noise as well as the size and weight of the sensors. Moreover, powerful magnets are used in the magnetization circuit that is difficult to handle and pose potential health and safety hazards. Finite element modelling is widely used for the optimization of the design of magnetization yokes. Modelling softwares are limited in their ability to conduct artificial intelligence-based optimization and require a large number of iterations. This can be time-consuming and computationally expensive. An optimization technique using particle swarm optimization algorithm for designing the excitation system for magnetic eddy current sensors is presented in this paper. Numerical simulation is used to determine the objective function and input variables for the algorithm. A comparative study is carried out to evaluate the algorithm's performance against genetic and artificial bee colony algorithms. The sensor design parameters obtained using the algorithm results are validated through experiments. The results show that the PSO is a fast and computationally efficient algorithm for optimizing the yoke design.
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