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首页> 外文期刊>Journal of Zhejiang University. Science, A >Parameters optimization and nonlinearity analysis of grating eddy current displacement sensor using neural network and genetic algorithm
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Parameters optimization and nonlinearity analysis of grating eddy current displacement sensor using neural network and genetic algorithm

机译:使用神经网络和遗传算法光栅涡流位移传感器参数优化和非线性分析

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A grating eddy current displacement sensor (GECDS) can be used in a watertight electronic transducer to realize long range displacement or position measurement with high accuracy in difficult industry conditions. The parameters optimization of the sensor is essential for economic and efficient production. This paper proposes a method to combine an artificial neural network (ANN) and a genetic algorithm (GA) for the sensor parameters optimization. A neural network model is developed to map the complex relationship between design parameters and the nonlinearity error of the GECDS, and then a GA is used in the optimization process to determine the design parameter values, resulting in a desired minimal nonlinearity error of about 0.11%. The calculated nonlinearity error is 0.25%. These results show that the proposed method performs well for the parameters optimization of the GECDS.
机译:光栅涡流位移传感器(GECDS)可用于防水电子换能器,以实现困难的行业条件下具有高精度的远程位移或位置测量。传感器的参数优化对于经济和高效的生产是必不可少的。本文提出了一种将人工神经网络(ANN)和遗传算法(GA)组合的方法,用于传感器参数优化。开发了一种神经网络模型来映射设计参数与GECD的非线性误差之间的复杂关系,然后在优化过程中使用GA以确定设计参数值,从而导致约0.11%的期望最小非线性误差。 。计算的非线性误差为0.25%。这些结果表明,该方法对GECD的参数优化表现良好。

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