The main intention of developing cognitive radio technology is to solve the spectrum deficiency problem by allocating the spectrum dynamically to the unlicensed clients. An important aim of any wireless network is to ...The main intention of developing cognitive radio technology is to solve the spectrum deficiency problem by allocating the spectrum dynamically to the unlicensed clients. An important aim of any wireless network is to secure communication. It is to help the unlicensed clients to utilize the maximum available licensed bandwidth, and the cognitive network is designed for opportunistic communication technology. Selfish attacks cause serious security problem because they significantly deteriorate the performance of a cognitive network. In this paper, the selfish attacks have been identified using cooperative neighboring cognitive radio ad hoc network (COOPON). A novel technique has been proposed as ICOOPON (improvised COOPON), which shows improved performance in selfish attack detection as compared to existing technique. A comparative study has been presented to find the efficiency of proposed technique. The parameters used are throughput, packet delivery ratio and end to end delay.展开更多
As the density of wireless networks increases globally, the vulnerability of overlapped dense wireless communications to interference by hidden nodes and denial-of-service (DoS) attacks is becoming more apparent. Ther...As the density of wireless networks increases globally, the vulnerability of overlapped dense wireless communications to interference by hidden nodes and denial-of-service (DoS) attacks is becoming more apparent. There exists a gap in research on the detection and response to attacks on Medium Access Control (MAC) mechanisms themselves, which would lead to service outages between nodes. Classifying exploitation and deceptive jamming attacks on control mechanisms is particularly challengingdue to their resemblance to normal heavy communication patterns. Accordingly, this paper proposes a machine learning-based selective attack mitigation model that detects DoS attacks on wireless networks by monitoring packet log data. Based on the type of detected attack, it implements effective corresponding mitigation techniques to restore performance to nodes whose availability has been compromised. Experimental results reveal that the accuracy of the proposed model is 14% higher than that of a baseline anomaly detection model. Further, the appropriate mitigation techniques selected by the proposed system based on the attack type improve the average throughput by more than 440% compared to the case without a response.展开更多
近年来,采用工作量证明共识机制(Proof of Work,PoW)的区块链被广泛地应用于以比特币为代表的数字加密货币中.自私挖矿攻击(Selfish mining)等挖矿攻击(Mining attack)策略威胁了采用工作量证明共识机制的区块链的安全性.在自私挖矿攻...近年来,采用工作量证明共识机制(Proof of Work,PoW)的区块链被广泛地应用于以比特币为代表的数字加密货币中.自私挖矿攻击(Selfish mining)等挖矿攻击(Mining attack)策略威胁了采用工作量证明共识机制的区块链的安全性.在自私挖矿攻击策略被提出之后,研究者们进一步优化了单个攻击者的挖矿攻击策略.在前人工作的基础上,本文提出了新颖的两阶段挖矿攻击模型,该模型包含拥有单攻击者的传统自私挖矿系统与拥有两个攻击者的多攻击者系统.本文的模型同时提供了理论分析与仿真量化分析,并将两个攻击者区分为内部攻击者与外部攻击者.通过引入内部攻击者与外部攻击者的概念,本文指出传统自私挖矿系统转化为多攻击者系统的条件.本文进一步揭示了在多攻击者系统中两个攻击者将产生竞争并面临着“矿工困境”问题.攻击者间的竞争可被总结为“鲶鱼效应”:外部攻击者的出现导致内部攻击者的相对收益下降至多67.4%,因此内部攻击者需要优化攻击策略.本文提出了名为部分主动发布策略的全新挖矿攻击策略,相较于自私挖矿策略,该策略是半诚实的攻击策略.在特定场景下,部分主动发布策略可以提高攻击者的相对收益并破解攻击者面临的“矿工困境”问题.展开更多
文摘The main intention of developing cognitive radio technology is to solve the spectrum deficiency problem by allocating the spectrum dynamically to the unlicensed clients. An important aim of any wireless network is to secure communication. It is to help the unlicensed clients to utilize the maximum available licensed bandwidth, and the cognitive network is designed for opportunistic communication technology. Selfish attacks cause serious security problem because they significantly deteriorate the performance of a cognitive network. In this paper, the selfish attacks have been identified using cooperative neighboring cognitive radio ad hoc network (COOPON). A novel technique has been proposed as ICOOPON (improvised COOPON), which shows improved performance in selfish attack detection as compared to existing technique. A comparative study has been presented to find the efficiency of proposed technique. The parameters used are throughput, packet delivery ratio and end to end delay.
基金supported by the Ministry of Trade,Industry and Energy(MOTIE)under Training Industrial Security Specialist for High-Tech Industry(RS-2024-00415520)supervised by the Korea Institute for Advancement of Technology(KIAT)the Ministry of Science and ICT(MSIT)under the ICT Challenge and Advanced Network of HRD(ICAN)Program(No.IITP-2022-RS-2022-00156310)supervised by the Institute of Information&Communication Technology Planning&Evaluation(IITP).
文摘As the density of wireless networks increases globally, the vulnerability of overlapped dense wireless communications to interference by hidden nodes and denial-of-service (DoS) attacks is becoming more apparent. There exists a gap in research on the detection and response to attacks on Medium Access Control (MAC) mechanisms themselves, which would lead to service outages between nodes. Classifying exploitation and deceptive jamming attacks on control mechanisms is particularly challengingdue to their resemblance to normal heavy communication patterns. Accordingly, this paper proposes a machine learning-based selective attack mitigation model that detects DoS attacks on wireless networks by monitoring packet log data. Based on the type of detected attack, it implements effective corresponding mitigation techniques to restore performance to nodes whose availability has been compromised. Experimental results reveal that the accuracy of the proposed model is 14% higher than that of a baseline anomaly detection model. Further, the appropriate mitigation techniques selected by the proposed system based on the attack type improve the average throughput by more than 440% compared to the case without a response.
文摘近年来,采用工作量证明共识机制(Proof of Work,PoW)的区块链被广泛地应用于以比特币为代表的数字加密货币中.自私挖矿攻击(Selfish mining)等挖矿攻击(Mining attack)策略威胁了采用工作量证明共识机制的区块链的安全性.在自私挖矿攻击策略被提出之后,研究者们进一步优化了单个攻击者的挖矿攻击策略.在前人工作的基础上,本文提出了新颖的两阶段挖矿攻击模型,该模型包含拥有单攻击者的传统自私挖矿系统与拥有两个攻击者的多攻击者系统.本文的模型同时提供了理论分析与仿真量化分析,并将两个攻击者区分为内部攻击者与外部攻击者.通过引入内部攻击者与外部攻击者的概念,本文指出传统自私挖矿系统转化为多攻击者系统的条件.本文进一步揭示了在多攻击者系统中两个攻击者将产生竞争并面临着“矿工困境”问题.攻击者间的竞争可被总结为“鲶鱼效应”:外部攻击者的出现导致内部攻击者的相对收益下降至多67.4%,因此内部攻击者需要优化攻击策略.本文提出了名为部分主动发布策略的全新挖矿攻击策略,相较于自私挖矿策略,该策略是半诚实的攻击策略.在特定场景下,部分主动发布策略可以提高攻击者的相对收益并破解攻击者面临的“矿工困境”问题.