防止恶意软件在无线传感器网络中传播:用于控制的混合优化算法

Madhavarapu Chandan, S. G. Santhi, T. Srinivasa Rao
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引用次数: 0

摘要

恶意软件传播是 WSN 中的一个重要安全问题,但传统的恶意软件传播预防方法很少考虑攻击和防御过程对恶意软件传播的影响。阻止传感器节点的恶意软件传播需要先进的方法。通过混合优化算法,提出了一个新的决策问题,即最优控制问题。在提出的控制系统中,通过 BUBEO 分析最佳系统参数,以防止恶意软件在 WSN 中传播。具体而言,考虑的传感器节点状态包括易感、感染、感染和休眠、恢复、恢复和休眠以及最终死亡。系统参数的调整将根据感染性传感器节点恢复的概率和感染性传感器节点进入睡眠状态的概率进行适配性计算评估。这种优化调整策略可确保防止恶意软件的传播。最后,通过比较其他最先进的模型,成功评估和验证了所提出的 BUBEO-PMPWSN 模型的性能。在时间为 500 时,BUBEO-PMPWSN 恢复了 250 个节点,而 HGS、BOA、HBA、COOT 和 HHO 的恢复节点数分别为 123、115、236、172 和 180。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Preventing malware propagation in wireless sensor networks: Hybrid optimization algorithm for controlling
Malware transmission is a significant security issue in WSN, however, the influence of the attack and defensive processes on malware propagation is rarely taken into account in traditional malware propagation prevention methods. Advanced methods are in need to stop the propagation of malware of sensor nodes. With the formulation of representing dynamics among states, a new decision-making problem as the optimal control problem via hybrid optimization algorithm. The proposing model is termed as Butterfly Updated Bald Eagle Optimization based Prevention of Malware Propagation in Wireless Sensor Network (BUBEO-PMPWSN). In the proposed controlling system, optimal system parameters are analyzed via the BUBEO for preventing malware propagation in WSN. Particularly, the sensor node states considered are Susceptible, Infectious, Infectious and sleeping, recovered, Recovered and sleeping, and finally Dead. The system parameter tuning will be under the evaluation of fitness calculation under probability of infectious sensor node becoming recovered and the probability of infectious sensor node entering sleeping state. This optimal tuning strategy ensures the preventing of malware propagation. Finally, the performance of proposed BUBEO-PMPWSN model is evaluated and validated successfully by comparing other state-of-the-art models. The BUBEO-PMPWSN achieved 250 recovered nodes for time 500, while the HGS, BOA, HBA, COOT, and HHO scored 123, 115, 236, 172, and 180, respectively, for recovered nodes.
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