计算机科学 ›› 2022, Vol. 49 ›› Issue (10): 353-357.doi: 10.11896/jsjkx.220700095
• 信息安全 • 上一篇
王璐1, 文武松2
WANG Lu1, WEN Wu-song2
摘要: 为了解决目前动态加载系统存在的数据处理缺陷以及系统入侵精确度低等问题,以“人工智能技术”应用为例,设计一款功能完善、实用性强的分布式入侵检测系统。首先,在完成系统架构设计和系统数据库设计的基础上,对控制中心、分区控制中心延长网络主机进行全面分析;其次,严格按照响应库相关的响应规则,制定相应的响应对策;然后,借助通信模块判断其入侵行为是否出现异常问题;再次,利用S5720S-28P-SI-AC24口核心交换机对相关数据进行交换处理;接着,选用型号为AD2032的报警响应器对外来入侵行为进行全面监视;另外,在全面分析主体通信实现方式的基础上,利用Libpcap库函数完成对入侵检测流程的科学设计;最后,从环境与参数设置、系统测试结果与分析两个方面入手,对系统性能进行全面测试。结果表明,在人工智能技术的应用背景下,所设计的分布式入侵检测系统可以获得较高的检测精确度,达到了99%,为后期安全、稳定地使用网络提供重要的平台支持。
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