In specific conditions and crisis situations such as the pandemic of coronavirus (SARS-CoV-2), or the COVID-19 disease, e-learning systems be-came crucial for the smooth performing of teaching and other educational pro-cesses. In such scenarios, the availability of e-learning ecosystem elements is further highlighted. An indicator of the importance for securing the availability of such an ecosystem is evident from the DDoS (Distributed Denial of Service) attack on AAI@EduHr as a key authentication service for number of e-learning users in Republic of Croatia. In doing so, numerous users (teach-ers/students/administrators) were prevented from implementing and participat-ing in the planned teaching process. Given that DDoS as an anomaly of network traffic has been identified as one of the key threats to the e-learning ecosystem in crisis scenarios, this research will focus on overview of methodology for de-veloping a model for proactive detection of DDoS traffic. The challenge in de-tection is to effectively differentiate the increased traffic intensity and service requests caused by legitimate user activity (flash crowd) from the illegitimate traffic caused by a DDoS attack. The DDoS traffic detection model developed by following analyzed methodology would serve as a basis for providing further guidelines and recommendations in the form of response to events that may negatively affect the availability of e-learning ecosystem elements such as DDoS attack.
翻译:在诸如冠状病毒(SARS-COV-2)或COVID-19疾病的流行等具体条件和危机情况下,电子学习系统对于顺利教学和其他教育工作顺利进行至关重要,在这种情景中,进一步强调电子学习生态系统要素的可用性,从DDoS(分散拒绝提供服务)攻击AAI@EduHr作为克罗地亚共和国电子学习用户的一个重要认证服务机构,对确保提供这种生态系统的重要性的一个指标,明显可见于对AAI@EduHrr作为克罗地亚共和国电子学习用户的关键认证服务的攻击。在这样做时,许多用户(教师/学生/管理人员)被阻止在计划中的教学过程中执行和参加。鉴于DDoS作为网络交通的异常现象已被确定为危机情景中电子学习生态系统生态系统的关键威胁之一,这项研究将侧重于概述为主动检测DDoS流量而采用的一种模式。在合法用户攻击活动之后,通过为非法交通提供一种示范性S的检测方法,从而进一步区分为非法交通提供这种示范性S的检测。