Detection and prevention of black-hole and wormhole attacks in wireless sensor network using optimized LSTM

Mohan V. Pawar, Anuradha Jagadeesan
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引用次数: 3

Abstract

Purpose This study aims to present a novel system for detection and prevention of black hole and wormhole attacks in wireless sensor network (WSN) based on deep learning model. Here, different phases are included such as assigning the nodes, data collection, detecting black hole and wormhole attacks and preventing black hole and wormhole attacks by optimal path communication. Initially, a set of nodes is assumed for carrying out the communication in WSN. Further, the black hole attacks are detected by the Bait process, and wormhole attacks are detected by the round trip time (RTT) validation process. The data collection procedure is done with the Bait and RTT validation process with attribute information. The gathered data attributes are given for the training in which long short-term memory (LSTM) is used that includes the attack details. This is used for attack detection process. Once they are detected, those attacks are removed from the network using the optimal path selection process. Here, the optimal shortest path is determined by the improvement in the whale optimization algorithm (WOA) that is called as fitness rate-based whale optimization algorithm (FR-WOA). This shortest path communication is carried out based on the multi-objective function using energy, distance, delay and packet delivery ratio as constraints. Design/methodology/approach This paper implements a detection and prevention of attacks model based on FR-WOA algorithm for the prevention of attacks in the WSNs. With this, this paper aims to accomplish the desired optimization of multi-objective functions. Findings From the analysis, it is found that the accuracy of the optimized LSTM is better than conventional LSTM. The energy consumption of the proposed FR-WOA with 35 nodes is 7.14% superior to WOA and FireFly, 5.7% superior to grey wolf optimization and 10.3% superior to particle swarm optimization. Originality/value This paper develops the FR-WOA with optimized LSTM detecting and preventing black hole and wormhole attacks from WSN. To the best of the authors’ knowledge, this is the first work that uses FR-WOA with optimized LSTM detecting and preventing black hole and wormhole attacks from WSN.
基于优化LSTM的无线传感器网络黑洞和虫洞攻击检测与预防
目的提出一种基于深度学习模型的无线传感器网络黑洞和虫洞攻击检测与预防系统。其中包括节点分配、数据采集、检测黑洞和虫洞攻击以及通过最优路径通信防止黑洞和虫洞攻击等不同阶段。最初,在WSN中假设一组节点来进行通信。此外,黑洞攻击通过诱饵过程检测,虫洞攻击通过往返时间(RTT)验证过程检测。数据收集过程是通过带有属性信息的Bait和RTT验证过程完成的。收集到的数据属性用于训练,其中使用了包括攻击细节的长短期记忆(LSTM)。用于攻击检测过程。一旦它们被检测到,这些攻击就会使用最优路径选择过程从网络中移除。这里,最优最短路径是通过对鲸鱼优化算法(WOA)的改进来确定的,称为基于适应度的鲸鱼优化算法(FR-WOA)。该最短路径通信基于多目标函数,以能量、距离、时延和分组传送率为约束条件。设计/方法/方法本文实现了一种基于FR-WOA算法的攻击检测与预防模型,用于wsn中的攻击预防。为此,本文旨在实现多目标函数的理想优化。从分析中发现,优化后的LSTM的精度优于传统的LSTM。所提出的35节点FR-WOA的能耗比WOA和FireFly优化的能耗高7.14%,比灰狼优化的能耗高5.7%,比粒子群优化的能耗高10.3%。本文开发了一种基于优化LSTM的无线传感器网络黑洞和虫洞攻击检测和防御算法。据作者所知,这是第一个使用FR-WOA和优化的LSTM检测和防止来自WSN的黑洞和虫洞攻击的工作。
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