The increasing critical dependencies on Internetof-Things (IoT) have raised security concerns; its application on the critical infrastructures (CIs) for power generation has come under massive cyber-attack over the years. Prior research efforts to understand cybersecurity from Cyber Situational Awareness (CSA) perspective fail to critically consider the various Cyber Situational Awareness (CSA) security vulnerabilities from a human behavioural perspective in line with the CI. This study evaluates CSA elements to predict cyber-attacks in the power generation sector. Data for this research article was collected from IPPs using the survey method. The analysis method was employed through Partial Least Squares Structural Equation Modeling (PLS-SEM) to assess the proposed model. The results revealed negative effects on people and cyber-attack, but significant in predicting cyber-attacks. The study also indicated that information handling is significant and positively influences cyber-attack. The study also reveals no mediation effect between the association of People and Attack and Information and Attack. It could result from an effective cyber security control implemented by the IPPs. Finally, the study also shows no sign of network infrastructure cyber-attack predictions. The reasons could be because managers of IPPs had adequate access policies and security measures in place.
翻译:在互联网上越来越严重的依赖性引起了安全问题;多年来,对发电关键基础设施(CIs)的应用受到大规模网络攻击;从网络状况认识角度理解网络网络安全的研究先前的努力未能按照CI从人类行为的角度认真考虑各种网络情况认识(CSA)安全弱点。这项研究从人类行为的角度评价了CSA要素,以预测发电部门的网络攻击。该研究文章的数据是利用调查方法从IPPs收集的。分析方法是通过部分最低广场结构衡平模型(PLS-SEM)来评估拟议模型的。研究结果揭示出对人和网络攻击的负面影响,但在预测网络攻击方面意义重大。研究还表明,信息处理对网络攻击有着重大和积极的影响。这项研究还揭示出人与攻击与攻击和攻击之间的联系之间没有任何调解效应。研究还表明,通过IPPs实施有效的网络安全控制可以产生这一结果。最后,研究还表明,在评估拟议模型时,没有显示网络基础设施网络攻击预测措施的迹象。访问政策的理由可能是充分的,因为管理者有适当的访问政策。