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Security Situation Prediction based on Hybrid Rice Optimization Algorithm and Back Propagation Neural Network

机译:基于混合稻米优化算法和BP神经网络的安全形势预测

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摘要

Research on network security situation awareness is currently a research hotspot in the field of network security. It is one of the easiest and most effective methods to use the BP neural network for security situation prediction. However, there are still some problems in BP neural network, such as slow convergence rate, easy to fall into local extremum, etc. On the other hand, some common used evolutionary algorithms, such as genetic algorithm (GA) and particle swarm optimization (PSO), easily fall into local optimum. Hybrid rice optimization algorithm is a newly proposed algorithm with strong search ability, so the method of this paper is proposed. This article describes in detail the use of BP network security posture prediction method. In the proposed method, HRO is used to train the connection weights of the BP network. Through the advantages of HRO global search and fast convergence, the future security situation of the network is predicted, and the accuracy of the situation prediction is effectively improved.
机译:网络安全态势感知研究是当前网络安全领域的研究热点。使用BP神经网络进行安全状况预测是最简单,最有效的方法之一。但是,BP神经网络仍然存在诸如收敛速度慢,易于陷入局部极值等问题。另一方面,一些常用的进化算法,例如遗传算法(GA)和粒子群优化( PSO),很容易陷入局部最优状态。杂交水稻优化算法是一种新提出的搜索能力强的算法,因此提出了本文的方法。本文详细介绍了使用BP网络的安全状态预测方法。在提出的方法中,HRO用于训练BP网络的连接权重。通过HRO全局搜索和快速收敛的优点,可以预测网络的未来安全状况,并有效地提高了状况预测的准确性。

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