Varying power-infeed from converter-based generation units introduces great uncertainty on system parameters such as inertia and damping. As a consequence, system operators face increasing challenges in performing dynamic security assessment and taking real-time control actions. Exploiting the widespread deployment of phasor measurement units (PMUs) and aiming at developing a fast dynamic state and parameter estimation tool, this paper investigates the performance of Physics-Informed Neural Networks (PINN) for discovering the frequency dynamics of future power systems. PINNs have the potential to address challenges such as the stronger non-linearities of low-inertia systems, increased measurement noise, and limited availability of data. The estimator is demonstrated in several test cases using a 4-bus system, and compared with state of the art algorithms, such as the Unscented Kalman Filter (UKF), to assess its performance.
翻译:因此,系统操作员在进行动态安全评估和实时控制行动时面临越来越多的挑战。 利用广泛部署散射测量单位(PMUs)和开发快速动态状态和参数估计工具,本文件调查了物理进化神经网络(PINN)的性能,以发现未来动力系统的频率动态。 PINN具有应对挑战的潜力,例如低离子系统非线性强、测量噪音增加和数据可用性有限等。在使用四轮公共汽车系统的若干试验案例中,与诸如无色卡尔曼过滤器(UKF)等艺术算法的状态相比较,都展示了测算器,以评估其性能。