In the context of high penetration of renewables, the need to build dynamic models of power system components based on accessible measurement data has become urgent. To address this challenge, firstly, a neural ordinary differential equations (ODE) module and a neural differential-algebraic equations (DAE) module are proposed to form a data-driven modeling framework that accurately captures components' dynamic characteristics and flexibly adapts to various interface settings. Secondly, analytical models and data-driven models learned by the neural ODE and DAE modules are integrated together and simulated simultaneously using unified transient stability simulation methods. Finally, the neural ODE and DAE modules are implemented with Python and made public on GitHub. Using the portal measurements, three simple but representative cases of excitation controller modeling, photovoltaic power plant modeling, and equivalent load modeling of a regional power network are carried out in the IEEE-39 system and 2383wp system. Neural dynamic model-integrated simulations are compared with the original model-based ones to verify the feasibility and potentiality of the proposed neural ODE and DAE modules.
翻译:在可再生能源高渗透的情况下,迫切需要在可获得的测量数据的基础上建立动力系统组件动态模型,为了应对这一挑战,首先提议建立一个神经普通差分方程式模块和一个神经差分数方程式模块,以形成一个数据驱动模型框架,准确捕捉各组成部分的动态特征,灵活地适应各种界面环境;其次,将神经极分和DAE模块所学的分析模型和数据驱动模型结合起来,同时使用统一的瞬时稳定性模拟方法进行模拟;最后,与Python一起实施神经差分方程式和DAE模块,并在GitHub上公布;利用门户测量,在IEEEE-39系统和2383wp系统中开展了三个简单但具有代表性的引力控制器模型、光电厂模型和对一个区域电网的同等负荷模型。