A learning probabilistic boolean network model of a smart grid with applications in system maintenance

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hdl:2117/423964
Document typeArticle
Defense date2024-12-01
Rights accessOpen Access
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Abstract
Probabilistic Boolean Networks can capture the dynamics of complex biological systems as well as other non-biological systems, such as manufacturing systems and smart grids. In this proof-of-concept manuscript, we propose a Probabilistic Boolean Network architecture with a learning process that significantly improves the prediction of the occurrence of faults and failures in smart-grid systems. This idea was tested in a Probabilistic Boolean Network model of the WSCC nine-bus system that incorporates Intelligent Power Routers on every bus. The model learned the equality and negation functions in the different experiments performed. We take advantage of the complex properties of Probabilistic Boolean Networks to use them as a positive feedback adaptive learning tool and to illustrate that these networks could have a more general use than previously thought. This multi-layered PBN architecture provides a significant improvement in terms of performance for fault detection, within a positive-feedback network structure that is more tolerant of noise than other techniques.
CitationRivera, P. [et al.]. A learning probabilistic boolean network model of a smart grid with applications in system maintenance. "Energies", 1 Desembre 2024, vol. 17, núm. 24, article 6399.
ISSN1996-1073
Publisher versionhttps://www.mdpi.com/1996-1073/17/24/6399
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