论文标题
使用依赖的马尔可夫链和改进的灰狼优化的电力网络物理系统风险区域预测
Power Cyber-Physical System Risk Area Prediction Using Dependent Markov Chain and Improved Grey Wolf Optimization
论文作者
论文摘要
现有的电力网络物理系统(CPS)风险预测结果由于无法反映组件的实际物理特征和特定的操作状态而不准确。本文提出了一种基于依赖马尔可夫链的新方法用于Power CPS风险区域预测。首先要表征非均匀功率CPS耦合网络的负载和约束,可以用作节点状态判断标准。考虑到耦合网络之间的组件节点异构主义和相互依赖性,然后构建了基于依赖马尔可夫链的功率CPS风险区域预测模型。随后开发了通过自适应位置调整策略和跨最佳解决方案策略改进的交叉自适应灰狼优化算法,以优化预测模型。使用IEEE 39-BA 110测试系统的仿真结果验证了所提出方法的有效性和优越性。
Existing power cyber-physical system (CPS) risk prediction results are inaccurate as they fail to reflect the actual physical characteristics of the components and the specific operational status. A new method based on dependent Markov chain for power CPS risk area prediction is proposed in this paper. The load and constraints of the non-uniform power CPS coupling network are first characterized, and can be utilized as a node state judgment standard. Considering the component node isomerism and interdependence between the coupled networks, a power CPS risk regional prediction model based on dependent Markov chain is then constructed. A cross-adaptive gray wolf optimization algorithm improved by adaptive position adjustment strategy and cross-optimal solution strategy is subsequently developed to optimize the prediction model. Simulation results using the IEEE 39-BA 110 test system verify the effectiveness and superiority of the proposed method.