Litcius/Paper detail

Recursive Least Squares and Adaptive Kalman Filter-Based State and Parameter Estimation for Series Arc Fault Detection on DC Microgrids

Kaushik Gajula, Lalit Kishore Marepalli, Xiu Yao, Luis Herrera

2021IEEE Journal of Emerging and Selected Topics in Power Electronics25 citationsDOI

Abstract

In this article, we present a recursive least squares (RLS) and adaptive Kalman filter (AKF)-based state and parameter estimation (SE and PE) for series arc fault (SAF) detection and identification on dc microgrids. It is evident from the state-of-the-art research on dc SAFs that due to the lack of zero crossings and low current of the fault, the detection/identification of a SAF is difficult. Furthermore, due to the unplanned placement of sensors and the effect of SAF’s noise signatures on the adjacent sensors, we present a RLS-based SE for voltages and injection currents. The injection currents and nodal voltages from the states are then used by the AKF for a quick SAF detection, by estimating line admittances on the microgrid. The simulation results, control hardware in loop (CHIL), and experimental results are presented to manifest the SE–PE technique’s potential.

Topics & Concepts

Kalman filterRecursive least squares filterControl theory (sociology)Fault (geology)Series (stratigraphy)Extended Kalman filterState (computer science)Arc (geometry)Fault detection and isolationLeast-squares function approximationArc-fault circuit interrupterComputer scienceAdaptive filterMathematicsEngineeringAlgorithmVoltageStatisticsElectrical engineeringArtificial intelligenceShort circuitSeismologyControl (management)EstimatorGeologyActuatorGeometryBiologyPaleontologyElectrical Fault Detection and ProtectionRisk and Safety AnalysisReliability and Maintenance Optimization