4.7 Article

Probabilistic Optimal Power Flow Solution Using a Novel Hybrid Metaheuristic and Machine Learning Algorithm

期刊

MATHEMATICS
卷 10, 期 17, 页码 -

出版社

MDPI
DOI: 10.3390/math10173036

关键词

machine learning; probabilistic optimal power flow; renewable energy sources

资金

  1. King Saud University, Riyadh, Saudi Arabia [RSP-2021/307]

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This study proposes a novel hybrid optimization technique based on a machine learning approach and transient search optimization to solve the optimal power flow problem. The proposed technique successfully reduces the generation costs and demonstrates the robustness and applicability of the hybrid ML-TSO algorithm in solving classical and probabilistic OPF problems.
This paper proposes a novel hybrid optimization technique based on a machine learning (ML) approach and transient search optimization (TSO) to solve the optimal power flow problem. First, the study aims at developing and evaluating the proposed hybrid ML-TSO algorithm. To do so, the optimization technique is implemented to solve the classical optimal power flow problem (OPF), with an objective function formulated to minimize the total generation costs. Second, the hybrid ML-TSO is adapted to solve the probabilistic OPF problem by studying the impact of the unavoidable uncertainty of renewable energy sources (solar photovoltaic and wind turbines) and time-varying load profiles on the generation costs. The evaluation of the proposed solution method is examined and validated on IEEE 57-bus and 118-bus standard systems. The simulation results and comparisons confirmed the robustness and applicability of the proposed hybrid ML-TSO algorithm in solving the classical and probabilistic OPF problems. Meanwhile, a significant reduction in the generation costs is attained upon the integration of the solar and wind sources into the investigated power systems.

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