NGMO:一种用于工业信息物理系统入侵检测的新型几何平均优化器

Yunhang Yao;Zhiyong Zhang;Kejing Zhao;Peng Wang;Ruirui Wu
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引用次数: 0

摘要

工业网络物理系统(CPS)正遭受各种恶意攻击,面临着日益严峻的安全挑战。尽管基于机器学习的入侵检测系统可以帮助用户快速检测工业CPS中的攻击,但特征冗余和模型超参数的调优阻碍了进一步的检测性能。本文设计了一种新型几何均值优化器(NGMO),在优化模型超参数的同时过滤冗余工业特征。该算法在种群初始化和跳代阶段引入了良好的点集和动态对立学习策略,增强了算法的搜索能力。在此基础上,将NGMO与三种梯度增强决策树模型相结合,用于工业CPS中的入侵检测。最后,使用来自工业场景的四个数据集和一个实际案例来评估NGMO的有效性。实验结果表明,该算法在减少时间消耗的同时提高了模型检测精度。因此,所提出的NGMO可以有效地增强工业CPS的安全性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
NGMO: A Novel Geometric Mean Optimizer for Intrusion Detection in Industrial Cyber-Physical Systems
Industrial cyber-physical systems (CPS) are experiencing various malicious attacks and encountering increasing security challenges. Although machine learning-based intrusion detection systems can help users quickly detect attacks in industrial CPS, feature redundancy and the tuning of model hyperparameters hinder further detection performance. In this study, a Novel Geometric Mean Optimizer (NGMO) is designed to filter redundant industrial features while optimizing the hyperparameters of model. The proposed NGMO incorporates good point sets and dynamic opposition learning strategies during the population initialization and generation hopping phases to enhance the search capabilities of algorithm. Furthermore, the NGMO is combined with three gradient boosting decision tree models for intrusion detection in industrial CPS. Finally, four datasets from industrial scenarios and a real-world case are used to evaluate the effectiveness of NGMO. The experimental results show that NGMO can reduce time consumption while improving model detection accuracy. Therefore, the proposed NGMO can effectively enhance the security of industrial CPS.
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