首页> 外文会议>IEEE Symposium Series on Computational Intelligence >Maintaining Diversity in an SVM integrated Case Based GA for Solar Flare Prediction
【24h】

Maintaining Diversity in an SVM integrated Case Based GA for Solar Flare Prediction

机译:在基于SVM集成案例的遗传算法中保持多样性,用于太阳耀斑预测

获取原文

摘要

Unusually intense solar flares may cause serious calamities such as damages of electricuclear power plants. It is thereupon highly demanded, but is quite difficult, to predict intense solar flares due to the imbalanced character of the available data. To cope with this problem, we have heretofore developed and applied a Case Based Genetic Algorithm (CBGALO) that contains a Local Optimizer, which is a Support Vector Machine (SVM). However, the prediction performance significantly depends on input data for learning. Hereupon, CBGALO is further extended by a Case Based automatically restartable Good combination searching GA for both learning features and input data (CBRsGcmbGA). Even the powerful but computationally expensive Deep Learning cannot automatically (evolutionarily, in our approach) search the learning data. Our approach solved this problem a little better by the case-based approach. However, it became obvious that even this work suffers from the typical GA effect in falling into local optima. To improve the results, we hence developed newly a diversity maintenance approach that inserts good individuals with large Hamming distance into the case base as elite individuals in GA’s population. In 2 out of 3 classes of solar flares, the performance of our new approach became as high as the best ones among the conventional world top records. Namely, even in those ≥ C class solar flares, our approach applying the Hamming distance to increase diversity had as high a performance 0.662 as compared with the conventional world top record 0.650.
机译:异常强烈的太阳耀斑可能导致电/核电厂损坏的严重灾难。它是非常需要的,但是很难预测由于可用数据的性质不平衡的强烈的太阳耀斑。为了应对这个问题,我们已经开始开发并应用了基于案例的遗传算法(CBGALO),该遗传算法(CBGALO)包含一个本地优化器,它是支持向量机(SVM)。但是,预测性能显着取决于学习的输入数据。介绍,CBGALO通过基于案例的基于案例进行扩展,用于学习功能和输入数据(CBRSGCMBGA)。即使是强大但计算昂贵的深度学习也不能自动(在我们的方法中进化地)搜索学习数据。我们的方法通过基于案例的方法更好地解决了这个问题。然而,显而易见的是,即使这项工作也遭受典型的GA效应落入本地最佳效果。为了提高结果,我们开发了新的一种多样性维护方法,将良好的个人插入大汉明距离的案件基础,作为GA人口中的精英个体。在3级太阳耀斑中,我们的新方法的表现变得高度与传统世界顶级记录中最好的。即,即使在那些≥C级太阳耀斑中,我们的方法也适用汉明距离增加多样性,与传统世界顶部记录0.650相比,性能0.662。

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