基于人工智能的电力公司终端漏洞挖掘系统研究与应用

Y.J. Gu, Yu Yang, Heting Li
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引用次数: 0

摘要

在能源互联网时代,地市级供电企业面临着大量底层终端设备。传统的人工漏洞检测存在批量处理效率低、漏洞检测率不稳定等缺点。本文将漏洞挖掘与人工智能相结合,采用双向LSTM网络。将特征学习作为漏洞自动挖掘模块的核心算法,并在苏州古城世界级城市配电网示范工程中进行了实践应用。应用结果表明,基于人工智能的终端漏洞挖掘系统可以大大提高终端设备高风险漏洞的自动发现能力和分析效率,并能有效改善传统方法无法批量、模块化的缺陷。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research and Application of Terminal Vulnerability Mining System of Electric Power Company Based on Artificial Intelligence
In the era of Energy Internet, prefecture and municipal power supply companies are faced with a large number of underlying terminal equipment. Traditional manual detection of vulnerabilities has the disadvantages of low batch processing efficiency and unstable vulnerability detection rate. This article combines vulnerability mining and artificial intelligence, using bidirectional LSTM network. Feature learning is used as the core algorithm of the automatic vulnerability mining module, and has been applied in practice in the world-class urban power distribution network demonstration project in the ancient city of Suzhou. The application results show that the terminal vulnerability mining system based on artificial intelligence can greatly improve the automatic discovery ability and analysis efficiency of terminal equipment high-risk vulnerabilities, and can effectively improve the defects of traditional methods that cannot be batched and modularized.
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