Network Science and Technology Center, Rensselaer Polytechnic Institute (RPI), Troy, NY, 12180, USA.
Department of Computer Science, Rensselaer Polytechnic Institute (RPI), Troy, NY, 12180, USA.
Sci Rep. 2021 Apr 7;11(1):7645. doi: 10.1038/s41598-021-85432-x.
Data-driven risk networks describe many complex system dynamics arising in fields such as epidemiology and ecology. They lack explicit dynamics and have multiple sources of cost, both of which are beyond the current scope of traditional control theory. We construct the global economy risk network by combining the consensus of experts from the World Economic Forum with risk activation data to define its topology and interactions. Many of these risks, including extreme weather and drastic inflation, pose significant economic costs when active. We introduce a method for converting network interaction data into continuous dynamics to which we apply optimal control. We contribute the first method for constructing and controlling risk network dynamics based on empirically collected data. We simulate applying this method to control the spread of COVID-19 and show that the choice of risks through which the network is controlled has significant influence on both the cost of control and the total cost of keeping network stable. We additionally describe a heuristic for choosing the risks trough which the network is controlled, given a general risk network.
数据驱动的风险网络描述了在流行病学和生态学等领域出现的许多复杂系统动态。它们缺乏显式动态,并且具有多种成本来源,这两者都超出了传统控制理论的当前范围。我们通过结合世界经济论坛专家的共识以及风险激活数据来构建全球经济风险网络,以定义其拓扑结构和相互作用。这些风险中的许多风险,包括极端天气和剧烈通货膨胀,在活跃时都会带来重大的经济成本。我们引入了一种将网络交互数据转换为连续动态的方法,并对其应用最优控制。我们提出了一种基于经验收集数据构建和控制风险网络动态的方法。我们模拟了将该方法应用于控制 COVID-19 的传播,并表明通过网络控制的风险选择对控制成本和保持网络稳定的总成本都有重大影响。我们还描述了一种启发式方法,用于在给定一般风险网络的情况下选择通过网络控制的风险。