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Anomaly IoT Node Detection Based on Local Outlier Factor and Time Series 被引量:2

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摘要 The heterogeneous nodes in the Internet of Things(IoT)are relatively weak in the computing power and storage capacity.Therefore,traditional algorithms of network security are not suitable for the IoT.Once these nodes alternate between normal behavior and anomaly behavior,it is difficult to identify and isolate them by the network system in a short time,thus the data transmission accuracy and the integrity of the network function will be affected negatively.Based on the characteristics of IoT,a lightweight local outlier factor detection method is used for node detection.In order to further determine whether the nodes are an anomaly or not,the varying behavior of those nodes in terms of time is considered in this research,and a time series method is used to make the system respond to the randomness and selectiveness of anomaly behavior nodes effectively in a short period of time.Simulation results show that the proposed method can improve the accuracy of the data transmitted by the network and achieve better performance.
出处 《Computers, Materials & Continua》 SCIE EI 2020年第8期1063-1073,共11页 计算机、材料和连续体(英文)
基金 This work is partially supported by the Ministry of Education of China(www.moe.gov.cn)under grant Nos.201802123091(received by F.W.)and 201802123068(received by Z.W.) Scientific Project of CAFUC(www.cafuc.edu.cn)under grant Nos.F2017KF02 and J2018-3(both received by Z.W.) Teaching Reform Project of CAFUC(www.cafuc.edu.cn)under grant No.E2020044(received by Z.W.).
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