Development of Dynamic Intelligent Risk Management Approach

Azadeh Sarkheyli, Arezoo Sarkheyli-Hägele, W. Song
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Abstract

A dynamic Risk Management (RM) provides monitoring, recognition, assessment, and follow-up action to reduce the risk whenever it rises. The main problem with dynamic RM (when applied to plan for, how the unknown risk in unexpected conditions should be addressed in information systems) is to design an especial control to recover/avoid of risks/attacks that is proposed in this research. The methodology, called Dynamic Intelligent RM (DIRM) is comprised of four phases which are interactively linked; (1) Aggregation of data and information (2) Risk identification (3) RM using an optional control and (4) RM using an especial control. This study, therefore, investigated the use of artificial neural networks to improve risk identification via adaptive neural fuzzy interface systems and control specification using learning vector quantization. Further experimental investigations are needed to estimate the results of DIRM toward unexpected conditions in the real environment.
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动态智能风险管理方法的发展
动态风险管理(RM)提供监控、识别、评估和后续行动,以便在风险上升时降低风险。动态风险管理的主要问题(当应用于计划时,如何处理信息系统中意外情况下的未知风险)是设计一个特殊的控制来恢复/避免风险/攻击,这是本研究提出的。该方法被称为动态智能RM (DIRM),由四个相互关联的阶段组成;(1)数据和信息的汇总(2)风险识别(3)使用可选控制的风险管理和(4)使用特殊控制的风险管理。因此,本研究探讨了利用人工神经网络通过自适应神经模糊接口系统和学习向量量化控制规范来改进风险识别。需要进一步的实验研究来估计DIRM在真实环境中针对意外条件的结果。
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