A fuzzy logic energy management strategy for a photovoltaic/diesel/battery hybrid ship based on experimental database
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Authors
Yuan, Y
Zhang, T
Shen, B
Yan, X
Long, T
Publication Date
2018Journal Title
Energies
ISSN
1996-1073
Publisher
MDPI AG
Volume
11
Issue
9
Type
Article
Metadata
Show full item recordCitation
Yuan, Y., Zhang, T., Shen, B., Yan, X., & Long, T. (2018). A fuzzy logic energy management strategy for a photovoltaic/diesel/battery hybrid ship based on experimental database. Energies, 11 (9) https://doi.org/10.3390/en11092211
Abstract
<jats:p>Energy management strategy is a key technology of hybrid power ships. In recent years, renewable energy ship technologies have become a popular research field and one promising development direction to realize reasonable utilization of energy resource, as well as energy conservation and emission reduction. Among these technologies, the solar energy hybrid ship technology is currently attracting attention all over the word. In this paper, a 5000-car space solar energy hybrid ship is used as the research objective, and an energy management strategy that is based on fuzzy logic is proposed to distribute the ship power generation, solar energy, and battery output power according to the ship’s electrical load demand, and the fuzzification and stochasticity of solar energy. By comparing the simulation results with real ship testing results, it is identified that the proposed fuzzy logic energy management strategy can optimize the operation conditions of individual power generation sources, improve the overall performance of power system, and reduce the ship’s overall fuel consumption.</jats:p>
Keywords
solar energy, fuzzy logic, hybrid power ship, energy management strategy
Identifiers
External DOI: https://doi.org/10.3390/en11092211
This record's URL: https://www.repository.cam.ac.uk/handle/1810/283103
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