CGA-ELM:网络安全态势预测模型

Yanqiang Tang, Chenghai Li
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引用次数: 1

摘要

智能优化算法与神经网络相结合是一种有效的网络安全态势预测方法,但简单的组合方法不能根据现有状态动态调整参数,降低了预测精度。为了更准确、快速地获得预测结果,结合云模型的随机性和稳定性、遗传算法的全局搜索能力和隐式并行性以及极限学习机的快速学习能力,提出了一种自适应云改进遗传算法优化极限学习机(CGA-ELM)预测模型。首先,利用正态云的正态分布特征,提高遗传算法的交叉率和突变率;其次,采用改进的遗传算法对极值学习机的初始权值和偏差进行优化;仿真结果表明,与传统GA-ELM相比,该算法的预测精度提高了4.9%,收敛速度提高了64.28%。CGA-ELM具有较好的预测效果和鲁棒性。(抽象)
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CGA-ELM:A network security situation prediction model
The combination of intelligent optimization algorithm and neural network is an efficient method for network security situation prediction, but the simple combination method can not dynamically adjust the parameters according to the existing state, which reduces the prediction accuracy. In order to get the prediction results more accurately and quickly, combined with the randomness and stability of cloud model, the global search ability and implicit parallelism of genetic algorithm and the fast learning ability of extreme learning machine, an adaptive Cloud Improved Genetic Algorithm Optimization Extreme Learning Machine (CGA-ELM) prediction model is proposed. Firstly, the crossover rate and mutation rate of genetic algorithm are improved by using the normal distribution characteristics of normal cloud. Secondly, the initial weight and deviation of extreme learning machine are optimized by the improved genetic algorithm. The simulation results show that, compared with the traditional GA-ELM, the prediction accuracy of CGA-ELM is improved by 4.9%, and the convergence speed is accelerated by 64.28%. CGA-ELM has better prediction effect and robustness. (Abstract)
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