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Attack detection in medical Internet of things using optimized deep learning: enhanced security in healthcare sector

机译:攻击检测医疗物联网使用优化的深度学习:增强安全性在医疗行业

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This paper tactics to implement the attack detection in medical Internet of things (IoT) devices using improved deep learning architecture for accomplishing the concept bring your own device (BYOD). Here, a simulation-based hospital environment is modeled where many IoT devices or medical equipment are communicated with each other. The node or the device, which is creating the attack are recognized with the support of attribute collection. The dataset pertaining to the attack detection in medical IoT is gathered from each node that is considered as features. These features are subjected to a deep belief network (DBN), which is a part of deep learning algorithm. Despite the existing DBN, the number of hidden neurons of DBN is tuned or optimized correctly with the help of a hybrid meta-heuristic algorithm by merging grasshopper optimization algorithm (GOA) and spider monkey optimization (SMO) in order to enhance the accuracy of detection. The hybrid algorithm is termed as local leader phase-based GOA (LLP-GOA). The DBN is used to train the nodes by creating the data library with attack details, thus maintaining accurate detection during testing. Design/methodology/approach: This paper has presented novel attack detection in medical IoT devices using improved deep learning architecture as BYOD. With this, this paper aims to show the high convergence and better performance in detecting attacks in the hospital network. Findings: From the analysis, the overall performance analysis of the proposed LLP-GOA-based DBN in terms of accuracy was 0.25% better than particle swarm optimization (PSO)-DBN, 0.15% enhanced than grey wolf algorithm (GWO)-DBN, 0.26% enhanced than SMO-DBN and 0.43% enhanced than GOA-DBN. Similarly, the accuracy of the proposed LLP-GOA-DBN model was 13% better than support vector machine (SVM), 5.4% enhanced than k-nearest neighbor (KNN), 8.7% finer than neural network (NN) and 3.5% enhanced than DBN. Originality/value: This paper adopts a hybrid algorithm termed as LLP-GOA for the accurate detection of attacks in medical IoT for improving the enhanced security in healthcare sector using the optimized deep learning. This is the first work which utilizes LLP-GOA algorithm for improving the performance of DBN for enhancing the security in the healthcare sector.
机译:摘要战术实施攻击检测医疗物联网(物联网)设备使用改进的深度学习体系结构完成概念带给自己的设备(BYOD)。物联网设备或环境建模医疗设备是相互沟通其他。这次袭击是公认的支持下属性集合。收集医疗物联网的攻击检测从每个节点被认为是功能。这些特性受到深刻的信念网络(DBN),这是一个深度学习的一部分算法。隐藏的神经元的DBN调整或优化正确的帮助下混合通过合并蚱蜢meta-heuristic算法优化算法(果)和蜘蛛猴为了提高优化(SMO)检测的准确性。称为地方领导分阶段果阿(LLP-GOA)。DBN用于训练节点通过创建与攻击库的数据细节,因此在测试期间保持准确的检测。设计/方法/方法:本文提出了新颖的攻击检测医疗物联网设备使用改进的深度学习体系结构BYOD。高收敛性和更好的性能在医院网络检测攻击。结果:从分析、整体性能分析的方法LLP-GOA-based DBN的准确性为0.25%比粒子群优化(PSO) -DBN,比灰太狼增强0.15%算法(拥有)-DBN,比SMO-DBN增强0.26%和比GOA-DBN增强0.43%。拟议中的LLP-GOA-DBN模型的准确性13%比支持向量机(SVM),比再提高5.4%(资讯),8.7%细比神经网络(NN)和3.5%增强DBN。混合算法称为LLP-GOA的准确检测医疗物联网的攻击改善加强医疗安全使用优化的深度学习领域。第一个工作利用LLP-GOA算法为提高DBN的性能提高医疗保健行业的安全。

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