Smart City Gnosys

Smart city article details

Title Statistical Pathways To Low-Carbon Cities: Analyzing Renewable Integration, Energy-Efficient Design, And Job Creation
ID_Doc 53000
Authors Jin G.; Huang Z.
Year 2024
Published Sustainable Cities and Society, 107
DOI http://dx.doi.org/10.1016/j.scs.2024.105429
Abstract To address the existing gap in understanding the intricate dynamics of resource management in Cloud Fog Computing (CFC)-driven Smart Grids (SG), this study introduces an innovative adaptive framework integrating Genetic Optimization Algorithm (GOA) and Cuckoo Search Optimization Algorithm (CSOA), aiming to optimize response times and enhance overall efficiency. In the domain of contemporary energy grids, the implementation of intelligent grids (IG) has ushered in a new era of dependable, streamlined, eco-friendly, and economically viable electric services. These grids constitute a fundamental facet of present-day energy resources. Moreover, the advent of cloud and mist computing (CMC) provides on-demand access to computational resources. Overcoming associated challenges, CMC not only delivers advantages like cost-effectiveness, energy conservation, scalability, flexibility, and adaptability but also presents an innovative model for resource management in IG. This study introduces a CMC-driven strategy for managing resources in IG by digitally replicating key grid components. The proposed framework aims to furnish diverse computational services for resource management within IG through a hierarchical arrangement of CMCs. Additionally, this investigation scrutinizes and simulates two optimization approaches: the cuckoo search and grasshopper optimization algorithms. These algorithms operate on an adaptive machine learning mechanism designed to balance the load, and the study meticulously compares their efficacy. These algorithms operate on an adaptive machine learning mechanism designed to balance the load, and the study meticulously compares their efficacy in the context of Renewable Integration, Energy-Efficient Design, and Job Creation. © 2024 Elsevier Ltd
Author Keywords Balancing of load; Deep learning; Hybrid techniques; Real-time monitoring; Sustainability


Similar Articles


Id Similarity Authors Title Published
26501 View0.877Ma Z.; Pu D.; Liang H.Financing Net-Zero Energy Integration In Smart Cities With Green Bonds And Public-Private PartnershipsSustainable Energy Technologies and Assessments, 64 (2024)
647 View0.875Butt A.A.; Khan S.; Ashfaq T.; Javaid S.; Sattar N.A.; Javaid N.A Cloud And Fog Based Architecture For Energy Management Of Smart City By Using Meta-Heuristic Techniques2019 15th International Wireless Communications and Mobile Computing Conference, IWCMC 2019 (2019)
4086 View0.868Choudhury S.; Luhach A.K.; Rodrigues J.J.P.C.; AL-Numay M.; Ghosh U.; Sinha Roy D.A Residual Resource Fitness-Based Genetic Algorithm For A Fog-Level Virtual Machine Placement For Green Smart City ServicesSustainability (Switzerland), 15, 11 (2023)
6061 View0.866Sun Y.; Xing Z.; Liu G.Achieving Resilient Cities Using Data-Driven Energy Transition: A Statistical Examination Of Energy Policy Effectiveness And Community EngagementSustainable Cities and Society, 101 (2024)
2542 View0.864Aranguren I.; Fausto F.; González A.; L-Aguiñaga A.A Metaheuristic Task Scheduling Of Fog Servers Using A Hybridization Of Crow Search Algorithm With Non-Monopolize SearchStudies in Computational Intelligence, 806 (2025)
34395 View0.863Jafari V.; Rezvani M.H.Joint Optimization Of Energy Consumption And Time Delay In Iot-Fog-Cloud Computing Environments Using Nsga-Ii Metaheuristic AlgorithmJournal of Ambient Intelligence and Humanized Computing, 14, 3 (2023)
50967 View0.862Shudapreyaa R.S.; Kamalam G.K.; Suresh P.; Sentamilselvan K.Smart Grid Iot: An Intelligent Energy Management In Emerging Smart CitiesSmart Grids and Internet of Things: An Energy Perspective (2023)
40949 View0.862Abbasi A.; Alves F.; Ribeiro R.A.; Sobral J.L.; Rodrigues R.Optimizing Virtual Power Plants With Parallel Simulated Annealing On High-Performance ComputingSmart Cities, 8, 2 (2025)
31862 View0.862Zhao X.; Zhang Y.Integrated Management Of Urban Resources Toward Net-Zero Smart Cities Considering Renewable Energies Uncertainty And Modeling In Digital TwinSustainable Energy Technologies and Assessments, 64 (2024)
23348 View0.858Puttaswamy N.G.; Murthy A.N.Energy Optimization In Smart Networks Using Machine Learning-Driven Fog Computing To Reduce Unnecessary Cloud Data TransmissionEngineering, Technology and Applied Science Research, 15, 3 (2025)