Intrusion Detection-Data Security Protection Scheme Based on Particle Swarm-BP Network Algorithm in Cloud Computing Environment

Zhun Wang, Xue Chen
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Abstract

Aiming at the problems of low detection rate and high false detection rate of intrusion detection algorithms in the traditional cloud computing environment, an intrusion detection-data security protection scheme based on particle swarm-BP network algorithm in a cloud computing environment is proposed. First, based on the four modules of data collection, data preprocessing, feature selection, and intrusion detection, the overall framework of the intrusion detection model is constructed by designing corresponding functions. Then, by introducing the decision tree algorithm, the overfitting is reduced and the data processing speed of the model is improved, and on this basis, the feature selection is carried out through the “gain rate” optimization method, which reduces the redundant information of the feature vector. Finally, by introducing the Particle Swarm Optimization (PSO) algorithm into the optimization of the initial weights and thresholds of the BP neural network, the BP neural network is improved based on the momentum factor and adaptive learning rate, and the high detection rate and low false detection rate are realized. Through simulation experiments, the proposed intrusion detection method and the other three methods are compared and analyzed under the same conditions. The results show that the detection rate and false detection rate of the method proposed in this paper are the best under five different types of sample data, the highest detection rate reaches 95.72%, and the lowest false detection rate drops to 2.03%. The performance of the proposed algorithm is better than that of the other two comparison algorithms.
云计算环境下基于粒子群- bp网络算法的入侵检测-数据安全防护方案
针对传统云计算环境下入侵检测算法检测率低、误检率高的问题,提出了一种基于粒子群- bp网络算法的云计算环境下入侵检测-数据安全防护方案。首先,基于数据采集、数据预处理、特征选择和入侵检测四个模块,通过设计相应的功能,构建了入侵检测模型的总体框架;然后,通过引入决策树算法,减少过拟合,提高模型的数据处理速度,在此基础上,通过“增益率”优化方法进行特征选择,减少特征向量的冗余信息。最后,将粒子群优化(PSO)算法引入BP神经网络初始权值和阈值的优化中,基于动量因子和自适应学习率对BP神经网络进行改进,实现了高检测率和低误检率。通过仿真实验,对所提出的入侵检测方法与其他三种方法在相同条件下进行了对比分析。结果表明,本文提出的方法在5种不同类型的样本数据下的检出率和误检率都是最好的,最高检出率达到95.72%,最低误检率下降到2.03%。该算法的性能优于其他两种比较算法。
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