Litcius/Paper detail

Data Analytics Based Power Quality Investigations in Emerging Electric Power System Using Sparse Decomposition

Monika Sharma, Bharat Singh Rajpurohit, Samar Agnihotri, S. N. Singh

2022IEEE Transactions on Power Delivery14 citationsDOI

Abstract

Modern electric grid usages extensive non-linear loads leading to the increased harmonic current injection in the system. This paper proposes a data-driven algorithm based on a sparse decomposition approach with the Overcomplete Hybrid Dictionary (OHD) and provides in-depth mathematical analysis to detect and mitigate harmonics in emerging electric power systems. The sparse decomposition method is widely used in image processing applications with significant advantages to big-data applications. However, its application is not properly addressed in electric grids’ applications despite massive data generation in a smart grid environment. Hence, in this paper, the performance evaluation of a sparse decomposition-based algorithm using a greedy approach is proposed and carried out in a real-time simulation environment for Distribution Static Compensator (DSTATCOM) application for the real-time detection, classification, and mitigation of PQ events to show its suitability and effectiveness. Finally, the experimental results on a small-scale laboratory setup are presented to validate the effectiveness of the proposed sparse-based control algorithm for DSTATCOM in real-time applications. The comparative result shows that the proposed sparse-based method is advantageous for off-line PQ signal processing and capable of real-time detection, classification, and control of the power apparatus for harmonics mitigation.

Topics & Concepts

Computer scienceElectric power systemHarmonicsSmart gridSparse approximationPower (physics)AlgorithmEngineeringVoltageElectrical engineeringPhysicsQuantum mechanicsPower Quality and HarmonicsMachine Fault Diagnosis TechniquesEnergy Load and Power Forecasting