...
首页> 外文期刊>Computational Materials Science >Determination of the compositions of NiMnGa magnetic shape memory alloys using hybrid evolutionary algorithms
【24h】

Determination of the compositions of NiMnGa magnetic shape memory alloys using hybrid evolutionary algorithms

机译:混合进化算法确定NiMnGa磁性形状记忆合金的成分

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

Magnetic shape memory (MSM) alloys are a new class of actuator materials with high actuation frequency, energy density and strain. MSM effect occurs in alloys, which exhibit a martensitic transformation and are ferromagnetic. It involves, under effect of magnetic field, a high strain achieved via reorientation of twinned martensite plates. The major problem is that even a slight change in the alloy's composition causes drastic changes in the martensitic transformation temperature (MTT) and MSM effect is only possible in the martensitic region. Therefore, it is crucial to be able to predict the MTT of any NiMnGa alloy. Artificial neural networks (ANN) with their learning and generalization ability may act as a suitable tool to predict the MTTs of NiMnGa alloys. ANNs are generally used when the problem cannot be explicitly described by an algorithm, a set of equations, or a set of rules. A genetic algorithm (GA) is a search technique used in computing to find true or approximate solutions to optimization and search problems. In a previous study, in order to predict the MTT, the performance of a multi-layer perceptron has been studied. Training and validation stages of the approach are performed by using data sets from many separate analysis results and our chemical analysis results were used for testing. In this paper, as an inverse design approach, we concentrated on finding the composition of any NiMnGa alloy by using the MTT as the input in our ANN model. To build an advanced solution, we used GA and ANN in a hybrid manner to obtain the composition values. In order to compare the performance of the candidate solutions obtained from alternative methods, the required fitness function for the MTT was determined by the ANN developed in the previous study. Solution quality was used as the crosscheck parameters for the comparison of results obtained from either method.
机译:磁形状记忆(MSM)合金是一类新型的执行器材料,具有高的执行频率,能量密度和应变。 MSM效应发生在表现出马氏体相变且具有铁磁性的合金中。它涉及在磁场的作用下,通过孪晶马氏体板的重新定向获得的高应变。主要问题在于,即使合金成分的微小变化也会引起马氏体转变温度(MTT)的急剧变化,而MSM效应仅在马氏体区域才可能发生。因此,至关重要的是能够预测任何NiMnGa合金的MTT。具有学习和泛化能力的人工神经网络(ANN)可以作为预测NiMnGa合金MTT的合适工具。当无法通过算法,一组方程式或一组规则明确描述问题时,通常使用ANN。遗传算法(GA)是一种搜索技术,用于计算中,以找到用于优化和搜索问题的真实或近似解决方案。在先前的研究中,为了预测MTT,已经研究了多层感知器的性能。该方法的培训和验证阶段是通过使用来自许多单独分析结果的数据集执行的,我们的化学分析结果用于测试。在本文中,作为一种逆向设计方法,我们专注于通过使用MTT作为我们的ANN模型的输入来找到任何NiMnGa合金的成分。为了构建高级解决方案,我们以混合方式使用了GA和ANN来获取成分值。为了比较从其他方法获得的候选解决方案的性能,MTT所需的适应度函数由先前研究中开发的ANN确定。溶液质量用作交叉检查参数,用于比较从任何一种方法获得的结果。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号