Sustainable Futures in a Changing World – Reflections from the 5th International Conference on Sustainable Futures: Environmental, Technological, Social and Economic Matters (ICSF 2024) DOI Open Access
Arnold Kiv, Сергій Олексійович Семеріков, Pavlo P. Nechypurenko

et al.

IOP Conference Series Earth and Environmental Science, Journal Year: 2024, Volume and Issue: 1415(1), P. 011001 - 011001

Published: Dec. 1, 2024

This paper presents an overview of the 5th International Conference on Sustainable Futures: Environmental, Technological, Social, and Economic Matters (ICSF 2024), held in May 2024. The conference brought together over 250 researchers, practitioners, educators from 19 countries to share cutting-edge research innovative solutions across a wide range sustainability-related disciplines. proceedings cover diverse topics, including climate change, disaster risk reduction, sustainable infrastructure, education for sustainability, environmental engineering, business practices. Key themes that emerged include integration digital technologies sustainability efforts, impacts global crises development, importance interdisciplinary approaches. showcased both theoretical advancements practical applications, with particular focus addressing United Nations Development Goals. highlights conference’s role fostering dialogue collaboration address pressing challenges shape more future.

Language: Английский

Optimization of off-grid hybrid renewable energy systems for cost-effective and reliable power supply in Gaita Selassie Ethiopia DOI Creative Commons

Elsabet Ferede Agajie,

Takele Ferede Agajie, Isaac Amoussou

et al.

Scientific Reports, Journal Year: 2024, Volume and Issue: 14(1)

Published: May 13, 2024

Abstract This paper explores scenarios for powering rural areas in Gaita Selassie with renewable energy plants, aiming to reduce system costs by optimizing component numbers meet demands. Various scenarios, such as combining solar photovoltaic (PV) pumped hydro-energy storage (PHES), utilizing wind PHES, and integrating a hybrid of PV, wind, have been evaluated based on diverse criteria, encompassing financial aspects reliability. To achieve the results, meta-heuristics Multiobjective Gray wolf optimization algorithm (MOGWO) Grasshopper (MOGOA) were applied using MATLAB software. Moreover, optimal sizing has investigated real-time assessment data meteorological from Sillasie, Ethiopia. Metaheuristic techniques employed pinpoint most favorable loss power supply probability (LPSP) least cost (COE) total life cycle (TLCC) system, all while meeting operational requirements various scenarios. The Multi-Objective Grey Wolf Optimization technique outperformed Algorithm problem, suggested results. Furthermore, MOGWO findings, PV-Wind-PHES demonstrated lowest COE (0.126€/kWh) TLCC (€6,897,300), along satisfaction village's demand LPSP value. In PV-Wind-PHSS scenario, are 38%, 18%, 2%, 1.5% lower than those Wind-PHS PV-PHSS at 0%, according Overall, this research contributes valuable insights into design implementation sustainable solutions remote communities, paving way enhanced access environmental sustainability.

Language: Английский

Citations

16

Hybrid salp swarm maximum power point tracking algorithm for photovoltaic systems in highly fluctuating environmental conditions DOI Creative Commons
Mohd Nasrul Izzani Jamaludin, Mohammad Faridun Naim Tajuddin, Tarek Younis

et al.

Scientific Reports, Journal Year: 2025, Volume and Issue: 15(1)

Published: Jan. 3, 2025

The maximum power delivered by a photovoltaic system is greatly influenced atmospheric conditions such as irradiation and temperature surrounding objects like trees, raindrops, tall buildings, animal droppings, clouds. partial shading caused these the rapidly changing parameters make point tracking (MPPT) challenging. This paper proposes hybrid MPPT algorithm that combines benefits of salp swarm (SSA) hill climbing (HC) techniques. As long rate change irradiance does not exceed specific limit, HC mode applied to track global (GMPP). Once high in detected, SSA activated. Moreover, proposed employs concept boundary handle fast slow fluctuating patterns. A comprehensive comparative evaluation SSA-HC with state-of-the-art algorithms has been undertaken. Four distinct cases have examined, including varying rates conditions. validated tested using developed hardware setup, simulated MATLAB for solar (PV) systems, compared standard HC. performance capability this technique at both steady-state dynamic under rapid gradual changes demonstrates its superiority over recent algorithms.

Language: Английский

Citations

2

Advanced efficient energy management strategy based on state machine control for multi-sources PV-PEMFC-batteries system DOI Creative Commons
Badreddine Kanouni, Abd Essalam Badoud, Saad Mekhilef

et al.

Scientific Reports, Journal Year: 2024, Volume and Issue: 14(1)

Published: April 5, 2024

Language: Английский

Citations

13

Experimental validation of a low-cost maximum power point tracking technique based on artificial neural network for photovoltaic systems DOI Creative Commons
A. Abou‐Zeid,

Hadeer Gaber Eleraky,

Ahmed Kalas

et al.

Scientific Reports, Journal Year: 2024, Volume and Issue: 14(1)

Published: Aug. 7, 2024

Maximum power point tracking (MPPT) is a technique involved in photovoltaic (PV) systems for optimizing the output of solar panels. Traditional solutions like perturb and observe (P&O) Incremental Conductance (IC) are commonly utilized to follow MPP under various environmental circumstances. However, these algorithms suffer from slow speed low dynamics fast-changing environment conditions. To cope with demerits, data-driven artificial neural network (ANN) algorithm MPPT proposed this paper. By leveraging learning capabilities ANN, PV operating can be adapted dynamic changes irradiation temperature. Consequently, it offers promising environments as well overcoming limitations traditional techniques. In paper, simulations verification experimental validation ANN-MPPT presented. Additionally, analyzed compared methods. The numerical findings indicate that, examined methods, approach achieves highest efficiency at 98.16% shortest time 1.3 s.

Language: Английский

Citations

13

Multi-objective energy management in a renewable and EV-integrated microgrid using an iterative map-based self-adaptive crystal structure algorithm DOI Creative Commons

R. Arul,

Karthik Nagarajan,

Mohit Bajaj

et al.

Scientific Reports, Journal Year: 2024, Volume and Issue: 14(1)

Published: July 8, 2024

Abstract The use of plug-in hybrid electric vehicles (PHEVs) provides a way to address energy and environmental issues. Integrating large number PHEVs with advanced control storage capabilities can enhance the flexibility distribution grid. This study proposes an innovative management strategy (EMS) using Iterative map-based self-adaptive crystal structure algorithm (SaCryStAl) specifically designed for microgrids renewable sources (RESs) PHEVs. goal is optimize multi-objective scheduling microgrid wind turbines, micro-turbines, fuel cells, solar photovoltaic systems, batteries balance power store excess energy. aim minimize operating costs while considering impacts. optimization problem framed as nonlinear constraints, fuzzy logic aid decision-making. In first scenario, optimized all RESs installed within predetermined boundaries, in addition grid connection. second operates turbine at rated power. third case involves integrating into three charging modes: coordinated, smart, uncoordinated, utilizing standard RES SaCryStAl showed superior performance operation cost, emissions, execution time compared traditional CryStAl other recent methods. proposed achieved optimal solutions scenario cost emissions 177.29 €ct 469.92 kg, respectively, reasonable frame. it yielded values 112.02 196.15 respectively. Lastly, achieves 319.9301 €ct, 160.9827 128.2815 uncoordinated charging, coordinated smart modes Optimization results reveal that outperformed evolutionary algorithms, such differential evolution, CryStAl, Grey Wolf Optimizer, particle swarm optimization, genetic algorithm, confirmed through test cases.

Language: Английский

Citations

10

A high-speed MPPT based horse herd optimization algorithm with dynamic linear active disturbance rejection control for PV battery charging system DOI Creative Commons

AL-Wesabi Ibrahim,

Jiazhu Xu, Imad Aboudrar

et al.

Scientific Reports, Journal Year: 2025, Volume and Issue: 15(1)

Published: Jan. 25, 2025

This study first proposes an innovative method for optimizing the maximum power extraction from photovoltaic (PV) systems during dynamic and static environmental conditions (DSEC) by applying horse herd optimization algorithm (HHOA). The HHOA is a bio-inspired technique that mimics motion cycles of entire horses. Next, linear active disturbance rejection control (LADRC) was applied to monitor HHOA's reference voltage output. LADRC, known managing uncertainties disturbances, improves anti-interference capacity point tracking (MPPT) speeds up system's response rate. Then, in comparison traditional (perturb & observe; P&O) metaheuristic algorithms (conventional particle swarm optimization; CPSO, grasshopper GHO, deterministic PSO; DPSO) through DSEC, simulations results demonstrate combination HHOA-LADRC can successfully track global peak (GMP) with less fluctuations quicker convergence time. Finally, experimental investigation proposed accomplished NI PXIE-1071 Hardware-In-Loop (HIL) prototype. output findings show effectiveness provided may approach value higher than 99%, showed rate converging oscillations detection mechanism.

Language: Английский

Citations

1

Enhancing PEM fuel cell efficiency with flying squirrel search optimization and Cuckoo Search MPPT techniques in dynamically operating environments DOI Creative Commons

Assala Bouguerra,

Abd Essalam Badoud, Saad Mekhilef

et al.

Scientific Reports, Journal Year: 2024, Volume and Issue: 14(1)

Published: June 17, 2024

Abstract This study looks into how to make proton exchange membrane (PEM) fuel cells work more efficiently in environments that change over time using new Maximum Power Point Tracking (MPPT) methods. We evaluate the efficacy of Flying Squirrel Search Optimization (FSSO) and Cuckoo (CS) algorithms adapting varying conditions, including fluctuations pressure temperature. Through meticulous simulations analyses, explores collaborative integration these techniques with boost converters enhance reliability productivity. It was found FSSO consistently works better than CS, achieving an average increase 12.5% power extraction from PEM a variety operational situations. Additionally, exhibits superior adaptability convergence speed, maximum point (MPP) 25% faster CS. These findings underscore substantial potential as robust efficient MPPT method for optimizing cell systems. The contributes quantitative insights advancing green energy solutions suggests avenues future exploration hybrid optimization

Language: Английский

Citations

6

Enhancing residential energy access with optimized stand-alone hybrid solar-diesel-battery systems in Buea, Cameroon DOI Creative Commons
Isaac Amoussou, Eriisa Yiga Paddy,

Takele Ferede Agajie

et al.

Scientific Reports, Journal Year: 2024, Volume and Issue: 14(1)

Published: July 5, 2024

Abstract This study examined the optimal size of an autonomous hybrid renewable energy system (HRES) for a residential application in Buea, located southwest region Cameroon. Two systems, PV-Battery and PV-Battery-Diesel, have been evaluated order to determine which was better option. The goal this research propose dependable, low-cost power source as alternative unreliable highly unstable electricity grid Buea. decision criterion proposed HRES cost (COE), while system’s dependability constraint loss supply probability (LPSP). crayfish optimization algorithm (COA) used optimize component sizes HRES, results were contrasted those obtained from whale (WOA), sine cosine (SCA), grasshopper (GOA). MATLAB software model components, criteria, constraints single-objective problem. after simulation LPSP less than 1% showed that COA outperformed other three techniques, regardless configuration. Indeed, COE using 0.06%, 0.12%, lower provided by WOA, SCA, GOA algorithms, respectively, Likewise, PV-Battery-Diesel configuration, 0.065%, 0.13%, 0.39% respectively. A comparative analysis outcomes two configurations indicated configuration exhibited 4.32% comparison Finally, impact reduction on assessed decrease resulted increase owing nominal capacity diesel generator.

Language: Английский

Citations

5

Enhanced photovoltaic panel diagnostics through AI integration with experimental DC to DC Buck Boost converter implementation DOI Creative Commons
Chouaib Labiod,

Redha Meneceur,

Ali Bebboukha

et al.

Scientific Reports, Journal Year: 2025, Volume and Issue: 15(1)

Published: Jan. 2, 2025

Language: Английский

Citations

0

IWOA-RNN: An improved whale optimization algorithm with recurrent neural networks for traffic flow prediction DOI Creative Commons
Zhiyou Liu,

Xinbin Li,

Zhigang Lu

et al.

Alexandria Engineering Journal, Journal Year: 2025, Volume and Issue: 117, P. 563 - 576

Published: Jan. 20, 2025

Language: Английский

Citations

0