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Data-driven Symbolic Regression for Identification of Nonlinear Dynamics in Power Systems

机译:数据驱动符号回归,用于识别电力系统中非线性动力学

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The paper describes a data-driven system identification method tailored to power systems and demonstrated on models of synchronous generators (SGs). In this work, we extend the recent sparse identification of nonlinear dynamics (SINDy) modeling procedure to include the effects of exogenous signals and nonlinear trigonometric terms in the library of elements. We show that the resulting framework requires fairly little in terms of data, and is computationally efficient and robust to noise, making it a viable candidate for online identification in response to rapid system changes. The proposed method also shows improved performance over linear data-driven modeling. While the proposed procedure is illustrated on a SG example in a multi-machine benchmark, it is directly applicable to the identification of other system components (e.g., dynamic loads) in large power systems.
机译:本文描述了一种针对电力系统定制的数据驱动系统识别方法,并在同步发电机(SGS)的型号上进行了说明。在这项工作中,我们扩展了最近的非线性动力学(SINDY)建模程序的稀疏识别,包括外源信号和非线性三角术语在元素库中的影响。我们表明所产生的框架在数据方面需要相当少,并且对噪声进行计算有效和鲁棒,使其成为在线识别的可行候选者,以响应于快速系统的变化。所提出的方法还显示出在线性数据驱动建模的改进性能。虽然所提出的程序在多机基准中的SG示例中示出,但它直接适用于在大型电力系统中的其他系统组件(例如,动态载荷)的识别。

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