论文标题
网络物理网络优化方法的最新调查
The State-of-the-Art Survey on Optimization Methods for Cyber-physical Networks
论文作者
论文摘要
网络物理系统(CPS)越来越复杂,并且经常通过关键的基础设施系统,产品和服务整合到现代社会中。因此,在各种情况下,这些复杂系统的可靠功能需要可靠的功能,从由于衰老而到网络攻击。确实,开发恢复破坏基础设施系统的有效策略仍然是一个重大挑战。迄今为止,评估网络物理基础设施的论文越来越多,但是仍缺乏针对数学建模和不同优化方法的全面审查。因此,本评论论文评估了有关CP面临破坏的优化技术的文献,以合成有关该域中当前方法的关键发现。在对所有主要科学数据库进行广泛评估后,总共审查了108篇相关研究论文。确定确定性和随机配方的主要数学建模实践和优化方法是根据解决方案方法(确切的,启发式,元式 - heuristic),目标函数和网络大小对它们进行分类的。我们还执行关键字集群和书目耦合分析,以总结当前的研究趋势。讨论了优化算法的可扩展性的未来研究需求。总体而言,需要通过数据驱动的方法和机器学习来授权的更可扩展的优化解决方案算法,以为决策者和从业者提供可靠的决策支持系统。
Cyber-Physical Systems (CPS) are increasingly complex and frequently integrated into modern societies via critical infrastructure systems, products, and services. Consequently, there is a need for reliable functionality of these complex systems under various scenarios, from physical failures due to aging, through to cyber attacks. Indeed, the development of effective strategies to restore disrupted infrastructure systems continues to be a major challenge. Hitherto, there have been an increasing number of papers evaluating cyber-physical infrastructures, yet a comprehensive review focusing on mathematical modeling and different optimization methods is still lacking. Thus, this review paper appraises the literature on optimization techniques for CPS facing disruption, to synthesize key findings on the current methods in this domain. A total of 108 relevant research papers are reviewed following an extensive assessment of all major scientific databases. The main mathematical modeling practices and optimization methods are identified for both deterministic and stochastic formulations, categorizing them based on the solution approach (exact, heuristic, meta-heuristic), objective function, and network size. We also perform keyword clustering and bibliographic coupling analyses to summarize the current research trends. Future research needs in terms of the scalability of optimization algorithms are discussed. Overall, there is a need to shift towards more scalable optimization solution algorithms, empowered by data-driven methods and machine learning, to provide reliable decision-support systems for decision-makers and practitioners.