Load — Source analysis and scheduling in hybrid smart grid using multilayer adaptive GNN algorithm

The solar and wind power has recently become a potential option in power systems and act significantly to meet the penetration of demands. The present growth of such renewable energy sources has shown an exponential increase in on-grid generation systems. The high penetration of such systems help a grid to effectively meet its load requirements during an irregular demand but also create some disturbances in grid due to frequent addition and detachments of loads/sources. The renewable energy sources that usually works in on-grid mod is to be attached and cut down from the grids without creating disturbances in stable grid. Another important requirement is the effective load management with less transmission losses. The proposed system introduces a method for optimized source additions and effective load scheduling without disturbing the stability of the system. It uses a three-layer metaheuristics multidimensional algorithm, composed of Adaptive Hopfield network which is used to identify the gridand a Genetic Algorithm to identify the optimist load scheduling.

[1]  Djalel Dib,et al.  One-Hour Ahead Electric Load Forecasting Using Neuro-fuzzy System in a Parallel Approach , 2015, Computational Intelligence Applications in Modeling and Control.

[2]  Abderrezak Rezzoug,et al.  A novel approach to determine the optimal location of SFCL in electric power grid to improve power system stability , 2013, IEEE Transactions on Power Systems.

[3]  Xiaojun Wang,et al.  Short-term load forecasting based on big data technologies , 2015 .

[4]  Joong-Rin Shin,et al.  A particle swarm optimization for economic dispatch with nonsmooth cost functions , 2005, IEEE Transactions on Power Systems.

[5]  Jong-Suk Ruth Lee,et al.  Study on Big Data Center Traffic Management Based on the Separation of Large-Scale Data Stream , 2013, 2013 Seventh International Conference on Innovative Mobile and Internet Services in Ubiquitous Computing.

[6]  Ganesh Kumar Venayagamoorthy,et al.  Intelligent sense-making for smart grid stability , 2011, 2011 IEEE Power and Energy Society General Meeting.

[7]  Ali Reza Seifi,et al.  Study of Forecasting Renewable Energies in Smart Grids Using Linear predictive filters and Neural Networks , 2011 .

[8]  E. Gonzalez-Romera,et al.  Monthly Electric Energy Demand Forecasting Based on Trend Extraction , 2006, IEEE Transactions on Power Systems.

[9]  Hatem Zeineldin,et al.  Optimal Allocation of HTS-FCL for Power System Security and Stability Enhancement , 2013, IEEE Transactions on Power Systems.

[10]  Djalel Dib,et al.  One-hour ahead electric load and wind-solar power generation forecasting using artificial neural network , 2015, IREC2015 The Sixth International Renewable Energy Congress.