论文标题
对工业网络优化中应用的网络模型的调查
A Survey on the Network Models applied in the Industrial Network Optimization
论文作者
论文摘要
网络架构设计对于优化工业网络非常重要。网络体系结构的类型可以根据其规模将小型网络和大规模网络划分。图理论是用于网络拓扑建模的有效数学工具。对于小型网络,其结构通常具有常规的拓扑结构。对于大型网络,现有的研究主要集中于网络节点和边缘的随机特征。最近,受欢迎的模型包括随机网络,小世界网络和无规模网络。从网络的规模开始,这项调查总结了基于图理论和工业场景中的实际应用网络建模方法。此外,该调查提出了一种新型的网络性能指标 - 系统熵。从数学属性的角度来看,给出了其非负,单调性和凹形串联性的分析。系统熵的优点是它可以涵盖现有的常规网络,随机网络,小世界网络和无标度网络,并且具有强大的通用性。仿真结果表明,该指标可以在不同模型下实现对各种工业网络的比较。
Network architecture design is very important for the optimization of industrial networks. The type of network architecture can be divided into small-scale network and large-scale network according to its scale. Graph theory is an efficient mathematical tool for network topology modeling. For small-scale networks, its structure often has regular topology. For large-scale networks, the existing research mainly focuses on the random characteristics of network nodes and edges. Recently, popular models include random networks, small-world networks and scale-free networks. Starting from the scale of network, this survey summarizes and analyzes the network modeling methods based on graph theory and the practical application in industrial scenarios. Furthermore, this survey proposes a novel network performance metric - system entropy. From the perspective of mathematical properties, the analysis of its non-negativity, monotonicity and concave-convexity is given. The advantage of system entropy is that it can cover the existing regular network, random network, small-world network and scale-free network, and has strong generality. The simulation results show that this metric can realize the comparison of various industrial networks under different models.