High efficiency and eco friendliness, proton exchange membrane fuel cells (PEMFCs) have become a good solution to cleaner energy solutions. However, due to the electrochemical complexity of PEMFCs and the limitations of existing optimization methods, accurately estimating PEMFC parameters to achieve optimal performance is still challenging. In this work, we propose a hybrid optimization algorithm, SCPSO, combining Particle Swarm Optimization with Mixed Mutant Slime Mold to improve precision, consistency, and computational efficiency in PEMFC parameter optimization. Six PEMFC types, BCS 500 W, Nedstack 600 W PS6, SR-12 W, Horizon H-12, Ballard Mark V, and STD 250 W Stack were applied to SCPSO and compared with seven state-of-the-art algorithms, FLA, HFPSO, PSOLC, ESMA, LSMA, DETDO, and EGJO. In all cases, SCPSO consistently outperformed all competitors with the lowest mean sum of squared error (SSE) and minimal standard deviation (e.g., [10, 10]), thus confirming its robustness and reliability. Additionally, it demonstrated the lowest number of iterations to reach the optimal solution (less than 200 iterations) and best Friedman Rank (FR = 1), signifying the best optimization to the customer. For instance, in PEMFC1, SCPSO achieved minimal SSE of 0.02549 with negligible variability (Std. = 1.05958E-15) as compared to HFPSO (Std. = 0.001998568) and DETDO (FR = 4). SCPSO's rapid convergence curves, narrow box plot spreads, and precise polarization curves were further validated across all fuel cells. SCPSO was experimentally validated and proved to be reliable with minimal deviations between predicted and experimental voltage and power outputs (e.g., RE = 0.052587% for PEMFC1 and RE = 0.016537% for PEMFC2). The average runtime of SCPSO was 3.05 s, which is faster than alternatives, and still maintains its unparalleled precision. The results of the analyses, fitting the datasets and the convergence curves confirm that the adaptive parameter tuning of SCPSO has significantly improved its performance, resulting in the highest consistency and accuracy with the fastest convergence speed. For PEMFC parameter optimization, results from SCPSO have established it as the algorithm with the strongest precision and stability and fastest computational efficiency. The extension to other energy systems and dynamic real time scenarios will be investigated in future research to enable wider adoption in sustainable energy management.
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http://dx.doi.org/10.1038/s41598-025-92528-1 | DOI Listing |
J Eukaryot Microbiol
March 2025
Department of Biological Sciences, University of Arkansas, Fayetteville, Arkansas, USA.
Pocheina and Acrasis are two genera of heterolobosean sorocarpic amoebae within Acrasidae that have historically been considered close relatives. The two genera were differentiated based on their differing fruiting body morphologies. The validity of this taxonomic distinction was challenged when a SSU rRNA phylogenetic study placed an isolate morphologically identified as "Pocheina" rosea within a clade of Acrasis rosea isolates.
View Article and Find Full Text PDFSci Rep
March 2025
Department of Electrical Engineering, Imam Khomeini Naval Science University of Nowshahr, Nowshahr, Iran.
High efficiency and eco friendliness, proton exchange membrane fuel cells (PEMFCs) have become a good solution to cleaner energy solutions. However, due to the electrochemical complexity of PEMFCs and the limitations of existing optimization methods, accurately estimating PEMFC parameters to achieve optimal performance is still challenging. In this work, we propose a hybrid optimization algorithm, SCPSO, combining Particle Swarm Optimization with Mixed Mutant Slime Mold to improve precision, consistency, and computational efficiency in PEMFC parameter optimization.
View Article and Find Full Text PDFBiophys Physicobiol
January 2025
Laboratory of Mathematical and Physical Ethology, Research Center of Mathematics for Social Creativity, Research Institute for Electronic Science, Hokkaido University, Sapporo, Hokkaido 001-0020, Japan.
Transport networks spanning the entire body of an organism are key infrastructures for achieving a functional system and facilitating the distribution of nutrients and signals. The large amoeba-like organism has gained attention as a useful model for studying biological transport networks owing to its visible and rapidly adapting vein structure. Using particle-tracking velocimetry, we measured the flow velocity of protoplasmic streaming over the entire body of plasmodia during the development of its intricate vein network.
View Article and Find Full Text PDFJ R Soc Interface
March 2025
Department of Biology, University of Graz, Graz, Austria.
is a slime mould that forms complex networks, making it an ideal model organism for studying network formation and adaptation. We introduce a novel viscometer capable of accurately measuring extracellular slime matrix (ECM) viscosity in small biological samples, overcoming the limitations of conventional instruments. Using this device, we measured the relative kinematic viscosity and developed continuous models to predict network size over time as a function of ECM viscosity.
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February 2025
Faculty of Computers and Information, Minia University, Minia, Egypt.
The Parrot Optimizer (PO) has recently emerged as a powerful algorithm for single-objective optimization, known for its strong global search capabilities. This study extends PO into the Multi-Objective Parrot Optimizer (MOPO), tailored for multi-objective optimization (MOO) problems. MOPO integrates an outward archive to preserve Pareto optimal solutions, inspired by the search behavior of Pyrrhura Molinae parrots.
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