Litcius/Paper detail

Symbolic Regression for Data-Driven Dynamic Model Refinement in Power Systems

Andrija T. Saria, Aleksandar A. Sarić, Mark K. Transtrum, A.M. Stanković

2020IEEE Transactions on Power Systems23 citationsDOI

Abstract

This paper describes a data-driven symbolic regression identification method tailored to power systems and demonstrated on different synchronous generator (SG) models. In this work, we extend the sparse identification of nonlinear dynamics (SINDy) modeling procedure to include the effects of exogenous signals (measurements), nonlinear trigonometric terms in the library of elements, equality, and boundary constraints of expected solution. 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 SINDy-based model identification is integrated with the manifold boundary approximation method (MBAM) for the reduction of the differential-algebraic equations (DAE)-based SG dynamic models (decrease in the number of states and parameters). The proposed procedure is illustrated on an SG example in a real-world 441-bus and 67-machine benchmark.

Topics & Concepts

Identification (biology)Nonlinear systemElectric power systemSymbolic regressionSystem identificationComputer scienceGenerator (circuit theory)Benchmark (surveying)Noise (video)Nonlinear system identificationDynamical systems theoryAlgorithmBoundary (topology)Symbolic data analysisTrigonometrySystem dynamicsData modelingPower (physics)MathematicsArtificial intelligenceTheoretical computer scienceDatabaseGeometryQuantum mechanicsGeographyBiologyBotanyImage (mathematics)Mathematical analysisGenetic programmingPhysicsGeodesyModel Reduction and Neural NetworksPower System Optimization and StabilityReal-time simulation and control systems