Multi-objective optimal power flow with wind–solar–tidal systems including UPFC using Adaptive Improved Flower Pollination Algorithm(AIFPA) DOI
Basudeb Mondal,

Susanta Dutta,

Soumen Biswas

и другие.

Smart Science, Год журнала: 2024, Номер 12(3), С. 495 - 518

Опубликована: Июнь 4, 2024

Among the most significant non-linear challenges for power network design and smooth functioning of current modern updated system networks is optimum flow (OPF) problem. Importance electrical modeling has recently come to light due incremental use energy from renewable sources in systems networks. The goal wind, solar tidal recreate issue OPF. In this work, Weibull, Lognormal, also Gumbel probability distribution functions were applied simulate uncertainties photovoltaic, system. Additionally, by adding test scenarios unpredictable involving minimization cost function, loss active power, voltage deviation, increase stability voltage. accordance with chosen thermal producing units, solutions evaluated using different locations IEEE 30-bus testing that incorporate sources. proposed planning problem was solved multi-objective function where unified controller are utilized as flexible AC transmission controllers via introduced optimization algorithms simulation outcomes aforementioned technique have been compared Multi Objective Adaptive Guided Differential Evolution algorithms. adaptive improved flower pollination algorithm (AIFPA) a strong reliable presented work. AIFPA can efficiently deal many kinds high-complexity objective regions situations. Utilizing an system, suggested approaches' performance examined range functions. results obtained effective finding optimal solution meta-heuristic reported literature.

Язык: Английский

Optimal Power Flow for Hybrid AC/DC Electrical Networks Configured With VSC-MTDC Transmission Lines and Renewable Energy Sources DOI
Hüseyin Bakır, Uğur Güvenç, Serhat Duman

и другие.

IEEE Systems Journal, Год журнала: 2023, Номер 17(3), С. 3938 - 3949

Опубликована: Март 21, 2023

This article presents the single objective optimal power flow (OPF) formulation incorporating both renewable energy sources, and voltage source converter-based multiterminal direct current transmission lines, simultaneously. To solve formulated OPF problem, powerful metaheuristic optimization algorithms including adaptive guided differential evolution, marine predators algorithm, atom search optimization, stochastic fractal (SFS), fitness-distance balance-based SFS (FDB-SFS) are employed. The performance of is tested for minimization fuel cost, pollutant emissions thermal generators, deviation, active loss in a modified IEEE 30-bus network. simulation results give that FDB-SFS achieved best on cost ( $786.5361 \, {\$}/\text{h}$ ), with valve point effect notation="LaTeX">$815.6644 \,{\$}/\text{h}$ emission-carbon tax notation="LaTeX">$820.5991 ). In addition, reduced deviation values by 14.2587% 6.7438% compared to SFS. nonparametric Wilcoxon Friedman statistical test confirmed an effective robust algorithm can be used introduced problem.

Язык: Английский

Процитировано

13

Improved stochastic fractal search algorithm involving design operators for solving parameter extraction problems in real-world engineering optimization problems DOI
Evren İşen, Serhat Duman

Applied Energy, Год журнала: 2024, Номер 365, С. 123297 - 123297

Опубликована: Апрель 27, 2024

Язык: Английский

Процитировано

4

Learning search algorithm: framework and comprehensive performance for solving optimization problems DOI Creative Commons
Chiwen Qu, Xiaoning Peng,

Qilan Zeng

и другие.

Artificial Intelligence Review, Год журнала: 2024, Номер 57(6)

Опубликована: Май 9, 2024

Abstract In this study, the Learning Search Algorithm (LSA) is introduced as an innovative optimization algorithm that draws inspiration from swarm intelligence principles and mimics social learning behavior observed in humans. The LSA optimizes search process by integrating historical experience real-time information, enabling it to effectively navigate complex problem spaces. By doing so, enhances its global development capability provides efficient solutions challenging tasks. Additionally, improves collective capacity incorporating teaching active behaviors within population, leading improved local capabilities. Furthermore, a dynamic adaptive control factor utilized regulate algorithm’s exploration abilities. proposed rigorously evaluated using 40 benchmark test functions IEEE CEC 2014 2020, compared against nine established evolutionary algorithms well 11 recently algorithms. experimental results demonstrate superiority of algorithm, achieves top rank Friedman rank-sum test, highlighting power competitiveness. Moreover, successfully applied solve six real-world engineering problems 15 UCI datasets feature selection problems, showcasing significant advantages potential for practical applications problems.

Язык: Английский

Процитировано

4

Enhanced artificial hummingbird algorithm for global optimization and engineering design problems DOI
Hüseyin Bakır

Advances in Engineering Software, Год журнала: 2024, Номер 194, С. 103671 - 103671

Опубликована: Май 16, 2024

Язык: Английский

Процитировано

4

Multi-objective optimal power flow with wind–solar–tidal systems including UPFC using Adaptive Improved Flower Pollination Algorithm(AIFPA) DOI
Basudeb Mondal,

Susanta Dutta,

Soumen Biswas

и другие.

Smart Science, Год журнала: 2024, Номер 12(3), С. 495 - 518

Опубликована: Июнь 4, 2024

Among the most significant non-linear challenges for power network design and smooth functioning of current modern updated system networks is optimum flow (OPF) problem. Importance electrical modeling has recently come to light due incremental use energy from renewable sources in systems networks. The goal wind, solar tidal recreate issue OPF. In this work, Weibull, Lognormal, also Gumbel probability distribution functions were applied simulate uncertainties photovoltaic, system. Additionally, by adding test scenarios unpredictable involving minimization cost function, loss active power, voltage deviation, increase stability voltage. accordance with chosen thermal producing units, solutions evaluated using different locations IEEE 30-bus testing that incorporate sources. proposed planning problem was solved multi-objective function where unified controller are utilized as flexible AC transmission controllers via introduced optimization algorithms simulation outcomes aforementioned technique have been compared Multi Objective Adaptive Guided Differential Evolution algorithms. adaptive improved flower pollination algorithm (AIFPA) a strong reliable presented work. AIFPA can efficiently deal many kinds high-complexity objective regions situations. Utilizing an system, suggested approaches' performance examined range functions. results obtained effective finding optimal solution meta-heuristic reported literature.

Язык: Английский

Процитировано

4