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dc.contributor.authorSingh, A. R.uk
dc.contributor.authorKumar, R. S.uk
dc.contributor.authorBallireddy, T. R. R.uk
dc.contributor.authorKhadse, C. B.uk
dc.contributor.authorBajaj, M.uk
dc.contributor.authorRubanenko, O.uk
dc.contributor.authorРубаненкo, О.uk
dc.contributor.authoruk
dc.contributor.authoruk
dc.contributor.authoruk
dc.date.accessioned2025-11-17T10:23:08Z
dc.date.available2025-11-17T10:23:08Z
dc.date.issued2025uk
dc.identifier.citationSingh A. R., Kumar R. S., Ballireddy T. R. R., Khadse C. B., Bajaj M., Rubanenko O. Concurrent extreme learningbased demand response optimizer for blockchainenabled peer-to-peer energy trading in residential microgrids // Energy Exploration & Exploitation. 2025. October 23, 2025. Electronic text data (PDF: 3,3 МБ). Р. 1-30.uk
dc.identifier.issn0144-5987uk
dc.identifier.urihttps://ir.lib.vntu.edu.ua//handle/123456789/50037
dc.description.abstractResidential microgrids (MGs) increasingly rely on decentralized energy sources and peer-to-peer energy trading mechanisms to maintain uninterrupted power distribution. However, ensuring concurrency between dynamic energy demands and supply responses remains a critical challenge, especially under fluctuating load and availability conditions. This study proposes a novel Demand Response Optimizer Model (DROM), leveraging Concurrent Extreme Learning (CEL), and blockchain (BC)-based verification to enhance fairness, responsiveness, and efficiency in energy allocation within residential MGs. The proposed DROM incorporates a feed-forward neural network architecture, in demand biasing and trading weights are adaptively computed to optimize energy dispatch. A BC framework is employed for decentralized storage and validation of transactional records, preserving system transparency, data integrity, and facilitating real-time energy trading decisions. The model operates across two user categories—Type 1 (building/peer-level) and Type 2 (residential individual)—and dynamically balances demand and response by minimizing bias while maximizing weight assignments across energy requests. The system is evaluated using real-world MG simulation data. Empirical results demonstrate that the proposed model achieves a 14.62% increase in optimal energy trading efficiency and a 14.77% improvement in demand coverage for Type 2 users. Furthermore, the framework delivers a 16.11% enhancement in power distribution and a 14.01% gain in trading reliability compared to benchmark methods. These findings underscore the effectiveness of the CEL-based BC-integrated framework in addressing concurrency, demand suppression, and equitable energy sharing in decentralized smart energy networks.uk_UA
dc.language.isouk_UAuk_UA
dc.publisherEnergy Exploration & Exploitationuk
dc.relation.ispartofEnergy Exploration & Exploitation. October 23, 2025.uk
dc.subjectBlockchainuk
dc.subjectconcurrent learninguk
dc.subjectdemanduk
dc.subjectresponseuk
dc.subjectenergy efficiencyuk
dc.subjectenergy tradinguk
dc.subjectextreme learning machineuk
dc.subjectmicrogriduk
dc.subjectpeer-to-peer networksuk
dc.titleConcurrent extreme learningbased demand response optimizer for blockchainenabled peer-to-peer energy trading in residential microgridsuk
dc.typeArticle, Scopus-WoS
dc.relation.referenceshttps://journals.sagepub.com/doi/full/10.1177/01445987251389761uk
dc.identifier.doihttp://doi.org/10.1177/01445987251389761uk
dc.identifier.orcidhttps://orcid.org/0000-0002-8197-8232uk
dc.identifier.orcidhttps://orcid.org/0000-0001-9441-8560uk
dc.identifier.orcidhttps://orcid.org/0000-0002-9476-7020uk
dc.identifier.orcidhttps://orcid.org/0000-0002-4719-8734uk
dc.identifier.orcidhttps://orcid.org/0000-0002-1086-457Xuk
dc.identifier.orcidhttps://orcid.org/uk


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