Korea Advanced Institute of Science and Technology, Department of Nuclear and Quantum Engineering, Daejeon 34141, Korea.
Sensors (Basel). 2020 Nov 8;20(21):6365. doi: 10.3390/s20216365.
This study proposes a scheme to identify insider threats in nuclear facilities through the detection of malicious intentions of potential insiders using subject-wise classification. Based on electroencephalography (EEG) signals, a classification model was developed to identify whether a subject has a malicious intention under scenarios of being forced to become an insider threat. The model also distinguishes insider threat scenarios from everyday conflict scenarios. To support model development, 21-channel EEG signals were measured on 25 healthy subjects, and sets of features were extracted from the time, time-frequency, frequency and nonlinear domains. To select the best use of the available features, automatic selection was performed by random-forest-based algorithms. The k-nearest neighbor, support vector machine with radial kernel, naïve Bayes, and multilayer perceptron algorithms were applied for the classification. By using EEG signals obtained while contemplating becoming an insider threat, the subject-wise model identified malicious intentions with 78.57% accuracy. The model also distinguished insider threat scenarios from everyday conflict scenarios with 93.47% accuracy. These findings could be utilized to support the development of insider threat mitigation systems along with existing trustworthiness assessments in the nuclear industry.
本研究提出了一种通过检测潜在内部人员的恶意意图,从而识别核设施内部威胁的方案。该方案基于脑电图(EEG)信号,开发了一种分类模型,以识别在被强制成为内部威胁的情况下,主体是否具有恶意意图。该模型还可以区分内部威胁场景和日常冲突场景。为了支持模型开发,在 25 名健康受试者上测量了 21 通道 EEG 信号,并从时间、时频、频率和非线性域中提取了特征集。为了选择最佳的特征利用方式,采用基于随机森林的算法进行了自动选择。应用 k-最近邻、具有径向核的支持向量机、朴素贝叶斯和多层感知机算法进行分类。通过对思考成为内部威胁时获得的 EEG 信号进行分析,主体模型以 78.57%的准确率识别了恶意意图。该模型还以 93.47%的准确率区分了内部威胁场景和日常冲突场景。这些发现可用于支持核工业中内部威胁缓解系统的开发以及现有可信度评估。