论文标题
朝着可扩展且灵活的模拟和测试环境工具箱,用于智能微电网控制
Towards a Scalable and Flexible Simulation and Testing Environment Toolbox for Intelligent Microgrid Control
论文作者
论文摘要
微观和智能电网(MSG)在整合常规电网中可再生能源以及在偏远地区提供电源的重要作用。现代味精由于其高效率和灵活性,主要是由电力电子转换器驱动的。然而,由于对能源可用性,安全性,安全性和电压质量的最高要求在各种不同的MSG拓扑范围内,因此控制MSG是一项具有挑战性的任务。这导致对新控制概念在开发阶段进行全面测试的需求量很高,并与最新技术进行了比较,以确保其可行性。这特别适用于增强学习领域(RL)的数据驱动控制方法,其稳定性和操作行为几乎无法先验地评估。因此,提出了OpenModelica Microgroid Gym(OMG)软件包,这是一种用于仿真和控制MSG的开源软件工具箱。它能够建模和模拟任意的MSG拓扑,并为插件\&Play Controller测试提供基于Python的接口。特别是,标准化的OpenAI健身房界面允许简单的基于RL的控制器集成。除了介绍OMG工具箱外,还强调了应用程序示例,包括用于低级控制器调整的安全贝叶斯优化。
Micro- and smart grids (MSG) play an important role both for integrating renewable energy sources in conventional electricity grids and for providing power supply in remote areas. Modern MSGs are largely driven by power electronic converters due to their high efficiency and flexibility. Nevertheless, controlling MSGs is a challenging task due to highest requirements on energy availability, safety and voltage quality within a wide range of different MSG topologies. This results in a high demand for comprehensive testing of new control concepts during their development phase and comparisons with the state of the art in order to ensure their feasibility. This applies in particular to data-driven control approaches from the field of reinforcement learning (RL), whose stability and operating behavior can hardly be evaluated a priori. Therefore, the OpenModelica Microgrid Gym (OMG) package, an open-source software toolbox for the simulation and control optimization of MSGs, is proposed. It is capable of modeling and simulating arbitrary MSG topologies and offers a Python-based interface for plug \& play controller testing. In particular, the standardized OpenAI Gym interface allows for easy RL-based controller integration. Besides the presentation of the OMG toolbox, application examples are highlighted including safe Bayesian optimization for low-level controller tuning.