Katalog Plus
Bibliothek der Frankfurt UAS
Bald neuer Katalog: sichern Sie sich schon vorab Ihre persönlichen Merklisten im Nutzerkonto: Anleitung.
Dieses Ergebnis aus Complementary Index kann Gästen nicht angezeigt werden.  Login für vollen Zugriff.

Neural Network Systems for Advanced Energy Harvesting in Microgrids.

Title: Neural Network Systems for Advanced Energy Harvesting in Microgrids.
Authors: Madasamy, P.; Tamboli, Dipti A.; Raman, R.; Babu, S. B. G. Tilak; Velmurugan, P.; Podder, Amitava
Source: International Journal of Environmental Sciences (2229-7359); 2025, Vol. 11 Issue 4, p270-278, 9p
Subject Terms: CLEAN energy; LONG short-term memory; ENERGY harvesting; ENERGY consumption; RENEWABLE energy sources
Abstract: Microgrids require sophisticated techniques for renewable energy management systems because they integrate more renewable sources into their networks. The study investigates neural network methods specifically hybrid CNNLSTM models which help maximize energy collection in microgrids. The preprocessing methodology incorporates three key steps starting with energy data normalization followed by application of denoising filters for enhancing data quality and final execution of temporal dataset synchronization to improve reliability. The Recursive Feature Elimination method selects features from which RFE identifies key parameters affecting both energy output and utilization metrics. The CNN-LSTM combination uses convolutional layers to extract spatial characteristics while also leveraging long short-term memory units to detect temporal patterns within energy datasets. The developed system produces better forecasting precision alongside optimized system performance which leads to improved energy distribution and diminished energy loss. The developed solution provides scalable interpretation capabilities to manage microgrid energy systems for the advancement of sustainable efficient energy platforms. [ABSTRACT FROM AUTHOR]
: Copyright of International Journal of Environmental Sciences (2229-7359) is the property of Academic Science Publications & Distributions (ASPD) and its content may not be copied or emailed to multiple sites without the copyright holder's express written permission. Additionally, content may not be used with any artificial intelligence tools or machine learning technologies. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
Database: Complementary Index