4.5 Article

Modelling, Parameter Identification, and Experimental Validation of a Lead Acid Battery Bank Using Evolutionary Algorithms

Journal

ENERGIES
Volume 11, Issue 9, Pages -

Publisher

MDPI
DOI: 10.3390/en11092361

Keywords

modelling; lead-acid battery; parameter identification; genetic algorithms; experimental validation

Categories

Funding

  1. Implementacion de un programa de desarrollo e investigacion de energias renovables en el departamento del Choco [BPIN:20130000100285]
  2. COLCIENCIAS (Administrative Department of Science, Technology and Innovation of Colombia) scholarship program PDBCEx
  3. COLDOC 586
  4. Corporacion Universitaria Comfacauca, Popayan-Colombia

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Accurate and efficient battery modeling is essential to maximize the performance of isolated energy systems and to extend battery lifetime. This paper proposes a battery model that represents the charging and discharging process of a lead-acid battery bank. This model is validated over real measures taken from a battery bank installed in a research center placed at El Choco, Colombia. In order to fit the model, three optimization algorithms (particle swarm optimization, cuckoo search, and particle swarm optimization + perturbation) are implemented and compared, the last one being a new proposal. This research shows that the identified model is able to estimate real battery features, such as state of charge (SOC) and charging/discharging voltage. The comparison between simulations and real measures shows that the model is able to absorb reading problems, signal delays, and scaling errors. The approach we present can be implemented in other types of batteries, especially those used in stand-alone systems.

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