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Renewable Energy and Demand Uncertainty-aware Stochastic Allocation and Management of Soft Open Points for Simultaneous Reduction of Harmonic Distortion, Voltage Deviations and Losses
Journal article   Peer reviewed

Renewable Energy and Demand Uncertainty-aware Stochastic Allocation and Management of Soft Open Points for Simultaneous Reduction of Harmonic Distortion, Voltage Deviations and Losses

Hasan Ebrahimi, Farhad Shahnia, Nazila Nikdel and Sadjad Galvani
Computers & electrical engineering, Vol.123(Pt. C), 110208
2025

Abstract

Data clustering Harmonic distortion NSGA-II Soft open point TOPSIS Uncertainty
The uncertainty of renewable energies and demand complicates the management of harmonically polluted distribution networks. Power electronics-based soft open points (SOPs) are a promising solution as they can precisely control the power flow in the network. This paper proposes a novel stochastic SOP allocation and management approach by properly optimizing its operational set points. The proposal's key emphasis is simultaneously alleviating harmonic distortion, voltage deviation, and power loss by the optimal allocation and management of the SOPs. This is realized through optimal control of active and reactive power flow and the cautious injection of harmonic currents through the allocated and managed SOPs. The proposal employs the K-means data clustering technique to discern appropriate parameters’ uncertainties, while the Cholesky decomposition method and the Nataf transformation technique are combined to handle the existing correlations amongst various uncertainties proficiently. The proposal uses the non-dominated sorting genetic algorithm II (NSGA-II) to solve the formulated optimization problem by extracting the Pareto front solutions set, while the final solution is selected using the technique of ordering the preference by similarity to the ideal solution (TOPSIS). The proposal's performance is evaluated and verified through numerical studies on modified IEEE 33 and 118 bus networks.

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#7 Affordable and Clean Energy

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Collaboration types
Domestic collaboration
International collaboration
Citation topics
4 Electrical Engineering, Electronics & Computer Science
4.18 Power Systems & Electric Vehicles
4.18.204 Smart Grid Optimization
Web Of Science research areas
Computer Science, Hardware & Architecture
Computer Science, Interdisciplinary Applications
Engineering, Electrical & Electronic
ESI research areas
Computer Science
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