A Support Vector Machines Security Assessment Method Based on Group Decision-Marking for Electric Power Information System

Xiaorong Cheng, Yan Wei, Xin Geng
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引用次数: 8

Abstract

In accordance with the characteristics and the special demands of electric power information system, this paper designs a support vector machines (SVM) risk assessment method based on group decision-marking. According to security technology indices of electric power information system, the method chooses the mode of expert scoring, based on the group decision-marking, to calculate integrated value of each index, which is as a training sample used to train SVM, and it forecasts risk level for the system. Finally, it verifies the correctness of the method by analyzing results of the examples of the electric power information system security assessment. The experiment shows that the method can not only forecast the current risk level of the electric power system with a high accuracy rate, but also reduce the influence of the subjective factors in some degree.
基于群决策的电力信息系统支持向量机安全评估方法
根据电力信息系统的特点和特殊需求,设计了一种基于群体决策的支持向量机(SVM)风险评估方法。该方法根据电力信息系统的安全技术指标,选择基于群体决策的专家评分模式,计算各指标的综合值,作为训练样本用于训练支持向量机,对系统进行风险等级预测。最后,通过对电力信息系统安全评估实例结果的分析,验证了该方法的正确性。实验表明,该方法不仅能够以较高的准确率预测电力系统的当前风险水平,而且在一定程度上减少了主观因素的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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