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Enhancing model characterization of PEM Fuel cells with human memory optimizer including sensitivity and uncertainty analysis

Abdullah M. Shaheen, Abdullah Alassaf, Ibrahim Alsaleh, Attia A. El‐Fergany

2024Ain Shams Engineering Journal16 citationsDOIOpen Access PDF

Abstract

This paper presents a novel attempt to identify the seven unknown proton exchange membrane (PEM) Fuel Cells (PEMFCs)’ parameters. The sum of quadratic deviations (SQD) between the appropriate estimated model-based and the measured dataset points is used to define the cost function. A human memory optimizer (HMO) is employed to decide on the best PEMFC parameters within acceptable boundaries. The AVISTA SR-12, BCS 500-W, NedStack PS6 6-kW, and 250-W units are four different real-world datasets of commercial PEMFCs stacks that are used to test the applied HMO method. The SQD’s values for AVISTA SR-12, BCS 500-W, NedStack PS6 6-kW and 250-W units are 0.000142335, 0.0116978, 2.145700, and 0.331371, respectively (all in V 2 ). The findings demonstrate that the PEMFC model is accurately characterized by the HMO, with sensitivity analysis performed using Monte-Carlo indicators, Sobol indices, and sensitivity metrics. The HMO-based approach has good efficacy in obtaining smooth convergence patterns and the lowest values of SQDs.

Topics & Concepts

Sensitivity (control systems)Characterization (materials science)Proton exchange membrane fuel cellFuel cellsComputer scienceMaterials scienceNuclear engineeringEngineeringNanotechnologyChemical engineeringElectronic engineeringFuel Cells and Related MaterialsAdvanced Battery Technologies ResearchMachine Learning in Materials Science
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