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Smart city article details

Title A Machine Learning Based Smart Grid For Home Power Management Using Cloud-Edge Computing System
ID_Doc 2465
Authors Kavya B.M.; Sharmila N.; Naveen K.B.; Mallikarjunaswamy S.; Manu K.S.; Manjunatha S.
Year 2023
Published International Conference on Recent Advances in Science and Engineering Technology, ICRASET 2023
DOI http://dx.doi.org/10.1109/ICRASET59632.2023.10419952
Abstract In recent years, a huge amount of data has been communicated between internet of things (IoT) devices. Apart from these dependencies, many fields such as smart grids, smart cities, and smart homes are incorporating IoT devices. This work focuses on refining issues faced with existing power grids, such as unidentified fault detection, prediction of power generation, and utilisation at the consumer side of existing power grids. To overcome this problem, a machine-learning-based smart grid using computing systems is designed to control renewable energy power generation, power prediction, fault detection, and utilisation at the consumer side. This is achieved using cloud-edge computing. As per the simulation analysis, the proposed work shows improved performance in comparison to convolution neural network (CNN) based cloud computing with respect to power utilisation, throughput, and fault detection of 0.25%, 0.12%, and 0.35%, respectively. © 2023 IEEE.
Author Keywords Convolution neural network (CNN); intelligent transportation system (ITS); multi-access edge computing networks (MAEC) and dedicated short-range communications (DSRC); Traffic mobility model; Vehicle to vehicle communication (V2V)


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