BAI Co., Ltd, Changwon, Gyeongsangnam, South Korea.
Department of Electrical Engineering, Changwon National University, Changwon, Gyeongsangnam, South Korea.
PLoS One. 2023 Nov 29;18(11):e0294657. doi: 10.1371/journal.pone.0294657. eCollection 2023.
A saturated iron-core type superconducting fault current limiter (SI-SFCL) can effectively restrict the magnitude of the fault current and alleviate the strain on circuit breakers in DC power systems. Design of a superconducting coil (SC), which is one of the key tasks in the SI-SFCL design, requires guaranteeing a sufficient magnetic field, ensuring optimization of the shape and size, minimizing the wire cost, and satisfying the safety and stability of operation. Generally, finite element method (FEM) is used to calculate and evaluate the operating characteristics of SCs, from which it is possible to determine their optimal design parameters. When the coil is complex and large, the simulation time may range from hours to days, and if input parameters change even slightly, the simulations have to be redone from scratch. Recent advances in deep learning represent the ability to be effective for modeling and optimizing complex problems from training data or in real-time. In this paper, we presented a combination of the FEM simulation and deep Q-network (DQN) algorithm to optimize the SC design of a lab-scale SI-SFCL for a DC power system. The detailed design process and options for the SC of SI-SFCL were proposed. In order to analyze the characteristics related to the electromagnetic properties and operational features of the SC, a 3D FEM model was developed. Then, a DQN model was constructed and integrated with the FEM simulation for training and optimizing the design parameters of the SC in real-time. The obtained results of this study have the potential to effectively optimize the design parameters of large-scale SI-SFCL development for high-voltage DC power systems.
饱和铁芯型超导故障限流器(SI-SFCL)可以有效地限制故障电流的大小,并减轻直流电力系统中断路器的负担。超导线圈(SC)的设计是 SI-SFCL 设计的关键任务之一,需要保证足够的磁场,优化形状和尺寸,最小化线材成本,并满足运行的安全和稳定性。通常,有限元法(FEM)用于计算和评估 SC 的运行特性,从中可以确定其最佳设计参数。当线圈复杂且较大时,模拟时间可能从几小时到几天不等,如果输入参数稍有变化,则必须从头开始重新进行模拟。深度学习的最新进展代表了从训练数据或实时中对复杂问题进行建模和优化的有效能力。在本文中,我们提出了将有限元模拟和深度 Q 网络(DQN)算法相结合,以优化用于直流电力系统的实验室规模 SI-SFCL 的 SC 设计。提出了 SI-SFCL 的 SC 的详细设计过程和选项。为了分析与 SC 的电磁特性和运行特性相关的特性,开发了一个 3D FEM 模型。然后,构建了一个 DQN 模型,并将其与 FEM 模拟集成在一起,以实时训练和优化 SC 的设计参数。这项研究的结果有可能有效地优化用于高压直流电力系统的大规模 SI-SFCL 开发的设计参数。