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dc.contributor.authorXin, Qin
dc.contributor.authorAlazab, Mamoun
dc.contributor.authorGarcía Díaz, Vicente
dc.contributor.authorMontenegro-Marin, Carlos Enrique
dc.contributor.authorGonzález-Crespo, Rubén
dc.date2022
dc.date.accessioned2022-10-26T10:18:55Z
dc.date.available2022-10-26T10:18:55Z
dc.identifier.citationXin, Q., Alazab, M., Díaz, V. G., Montenegro-Marin, C. E., & Crespo, R. G. (2022). A deep learning architecture for power management in smart cities. Energy Reports, 8, 1568-1577.
dc.identifier.issn23524847
dc.identifier.urihttps://reunir.unir.net/handle/123456789/13727
dc.description.abstractSustainable energy management is an inexpensive approach for improved energy use. However, the research used does not focus on cutting-edge technology possibilities in an Internet of things (IoT). This paper includes the needs for today's distributed generation, households, and industries in proposing smart resource management deep learning model. A deep learning architecture of power management (DLA-PM) is presented in this article. It predicts future power consumption for a short period and provides effective communication between power distributors and customers. To keep power consumption and supply constant, mobile devices are linked to a universal IoT cloud server connected to the intelligent grids in the proposed design. An effective brief forecast decision-making method is followed by various preprocessing strategies to deal with electrical data. It conducts extensive tests with RMSE reduced by 0.08 for both residential and business data sources. Significant strengths include refined device-based, real-time energy administration via a shared cloud-based server data monitoring system, optimized selection of standardization technology, a new energy prediction framework, a learning process with decreased time, and lower error rates. In the proposed architecture, mobile devices link to a universal IoT cloud server communicating with the corresponding intelligent grids such that the power consumption and supply phenomena continually continue. It utilizes many preprocessing strategies to cope with the diversity of electrical data, follows an effective short prediction decision-making method, and executes it using resources. For residential and business data sources, it runs comprehensive trials with RMSE lowered by 0.08.es_ES
dc.language.isoenges_ES
dc.publisherElsevier Ltdes_ES
dc.relation.ispartofseries;vol. 8
dc.relation.urihttps://www.sciencedirect.com/science/article/pii/S235248472101492X?via%3Dihubes_ES
dc.rightsopenAccesses_ES
dc.subjectdeep learninges_ES
dc.subjectinternet of thingses_ES
dc.subjectpower managementes_ES
dc.subjectwireless communicationes_ES
dc.subjectScopuses_ES
dc.subjectJCRes_ES
dc.titleA deep learning architecture for power management in smart citieses_ES
dc.typeArticulo Revista Indexadaes_ES
reunir.tag~ARIes_ES
dc.identifier.doihttp://dx.doi.org/10.1016/j.egyr.2021.12.053


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