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Electric power systems around the world are changing in terms of structure, operation, management and ownership due to technical, financial, and ideological reasons. Power systems keep on expanding in terms of geographical areas, asset additions, and the penetration of new technologies in generation, transmission, and distribution. The conventional methods for solving the power system design, planning, operation, and control problems have been extensively used for different applications, but these methods suffer from several difficulties, thus providing suboptimal solutions. Computationally intelligent methods can offer better solutions for several conditions and are being widely applied in electrical engineering applications. This Special Issue represents a thorough treatment of computational intelligence from an electrical power system engineer’s perspective. Thorough, well-organised, and up-to-date, it examines in detail some of the important aspects of this very exciting and rapidly emerging technology, including machine learning, particle swarm optimization, genetic algorithms, and deep learning systems. Written in a concise and flowing manner by experts in the area of electrical power systems who have experience in the application of computational intelligence for solving many complex and difficult power system problems, this Special Issue is ideal for professional engineers and postgraduate students entering this exciting field.
localization --- reactive power optimization --- model predictive control --- CNN --- long short term memory (LSTM) --- meter allocation --- particle update mode --- combined economic emission/environmental dispatch --- glass insulator --- emission dispatch --- genetic algorithm --- grid observability --- defect detection --- feature extraction --- parameter estimation --- incipient cable failure --- active distribution system --- boiler load constraints --- multivariate time series --- particle swarm optimization --- inertia weight --- VMD --- NOx emissions constraints --- spatial features --- penalty factor approach --- self-shattering --- differential evolution algorithm --- short term load forecasting (STLF) --- genetic algorithm (GA) --- economic load dispatch --- least square support vector machine --- Combustion efficiency --- electricity load forecasting
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Microgrids have recently emerged as the building block of a smart grid, combining distributed renewable energy sources, energy storage devices, and load management in order to improve power system reliability, enhance sustainable development, and reduce carbon emissions. At the same time, rapid advancements in sensor and metering technologies, wireless and network communication, as well as cloud and fog computing are leading to the collection and accumulation of large amounts of data (e.g., device status data, energy generation data, consumption data). The application of big data analysis techniques (e.g., forecasting, classification, clustering) on such data can optimize the power generation and operation in real time by accurately predicting electricity demands, discovering electricity consumption patterns, and developing dynamic pricing mechanisms. An efficient and intelligent analysis of the data will enable smart microgrids to detect and recover from failures quickly, respond to electricity demand swiftly, supply more reliable and economical energy, and enable customers to have more control over their energy use. Overall, data-intensive analytics can provide effective and efficient decision support for all of the producers, operators, customers, and regulators in smart microgrids, in order to achieve holistic smart energy management, including energy generation, transmission, distribution, and demand-side management. This book contains an assortment of relevant novel research contributions that provide real-world applications of data-intensive analytics in smart grids and contribute to the dissemination of new ideas in this area.
Technology: general issues --- electricity load forecasting --- smart grid --- feature selection --- Extreme Learning Machine --- Genetic Algorithm --- Support Vector Machine --- Grid Search --- AMI --- TL --- SG --- NB-PLC --- fog computing --- green community --- resource allocation --- processing time --- response time --- green data center --- microgrid --- renewable energy --- energy trade contract --- real time power management --- load forecasting --- optimization techniques --- deep learning --- big data analytics --- electricity theft detection --- smart grids --- electricity consumption --- electricity thefts --- smart meter --- imbalanced data --- data-intensive smart application --- cloud computing --- real-time systems --- multi-objective energy optimization --- renewable energy sources --- wind --- photovoltaic --- demand response programs --- energy management --- battery energy storage systems --- demand response --- scheduling --- automatic generation control --- single/multi-area power system --- intelligent control methods --- virtual inertial control --- soft computing control methods --- electricity load forecasting --- smart grid --- feature selection --- Extreme Learning Machine --- Genetic Algorithm --- Support Vector Machine --- Grid Search --- AMI --- TL --- SG --- NB-PLC --- fog computing --- green community --- resource allocation --- processing time --- response time --- green data center --- microgrid --- renewable energy --- energy trade contract --- real time power management --- load forecasting --- optimization techniques --- deep learning --- big data analytics --- electricity theft detection --- smart grids --- electricity consumption --- electricity thefts --- smart meter --- imbalanced data --- data-intensive smart application --- cloud computing --- real-time systems --- multi-objective energy optimization --- renewable energy sources --- wind --- photovoltaic --- demand response programs --- energy management --- battery energy storage systems --- demand response --- scheduling --- automatic generation control --- single/multi-area power system --- intelligent control methods --- virtual inertial control --- soft computing control methods
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Microgrids have recently emerged as the building block of a smart grid, combining distributed renewable energy sources, energy storage devices, and load management in order to improve power system reliability, enhance sustainable development, and reduce carbon emissions. At the same time, rapid advancements in sensor and metering technologies, wireless and network communication, as well as cloud and fog computing are leading to the collection and accumulation of large amounts of data (e.g., device status data, energy generation data, consumption data). The application of big data analysis techniques (e.g., forecasting, classification, clustering) on such data can optimize the power generation and operation in real time by accurately predicting electricity demands, discovering electricity consumption patterns, and developing dynamic pricing mechanisms. An efficient and intelligent analysis of the data will enable smart microgrids to detect and recover from failures quickly, respond to electricity demand swiftly, supply more reliable and economical energy, and enable customers to have more control over their energy use. Overall, data-intensive analytics can provide effective and efficient decision support for all of the producers, operators, customers, and regulators in smart microgrids, in order to achieve holistic smart energy management, including energy generation, transmission, distribution, and demand-side management. This book contains an assortment of relevant novel research contributions that provide real-world applications of data-intensive analytics in smart grids and contribute to the dissemination of new ideas in this area.
Technology: general issues --- electricity load forecasting --- smart grid --- feature selection --- Extreme Learning Machine --- Genetic Algorithm --- Support Vector Machine --- Grid Search --- AMI --- TL --- SG --- NB-PLC --- fog computing --- green community --- resource allocation --- processing time --- response time --- green data center --- microgrid --- renewable energy --- energy trade contract --- real time power management --- load forecasting --- optimization techniques --- deep learning --- big data analytics --- electricity theft detection --- smart grids --- electricity consumption --- electricity thefts --- smart meter --- imbalanced data --- data-intensive smart application --- cloud computing --- real-time systems --- multi-objective energy optimization --- renewable energy sources --- wind --- photovoltaic --- demand response programs --- energy management --- battery energy storage systems --- demand response --- scheduling --- automatic generation control --- single/multi-area power system --- intelligent control methods --- virtual inertial control --- soft computing control methods --- n/a
Choose an application
Microgrids have recently emerged as the building block of a smart grid, combining distributed renewable energy sources, energy storage devices, and load management in order to improve power system reliability, enhance sustainable development, and reduce carbon emissions. At the same time, rapid advancements in sensor and metering technologies, wireless and network communication, as well as cloud and fog computing are leading to the collection and accumulation of large amounts of data (e.g., device status data, energy generation data, consumption data). The application of big data analysis techniques (e.g., forecasting, classification, clustering) on such data can optimize the power generation and operation in real time by accurately predicting electricity demands, discovering electricity consumption patterns, and developing dynamic pricing mechanisms. An efficient and intelligent analysis of the data will enable smart microgrids to detect and recover from failures quickly, respond to electricity demand swiftly, supply more reliable and economical energy, and enable customers to have more control over their energy use. Overall, data-intensive analytics can provide effective and efficient decision support for all of the producers, operators, customers, and regulators in smart microgrids, in order to achieve holistic smart energy management, including energy generation, transmission, distribution, and demand-side management. This book contains an assortment of relevant novel research contributions that provide real-world applications of data-intensive analytics in smart grids and contribute to the dissemination of new ideas in this area.
electricity load forecasting --- smart grid --- feature selection --- Extreme Learning Machine --- Genetic Algorithm --- Support Vector Machine --- Grid Search --- AMI --- TL --- SG --- NB-PLC --- fog computing --- green community --- resource allocation --- processing time --- response time --- green data center --- microgrid --- renewable energy --- energy trade contract --- real time power management --- load forecasting --- optimization techniques --- deep learning --- big data analytics --- electricity theft detection --- smart grids --- electricity consumption --- electricity thefts --- smart meter --- imbalanced data --- data-intensive smart application --- cloud computing --- real-time systems --- multi-objective energy optimization --- renewable energy sources --- wind --- photovoltaic --- demand response programs --- energy management --- battery energy storage systems --- demand response --- scheduling --- automatic generation control --- single/multi-area power system --- intelligent control methods --- virtual inertial control --- soft computing control methods --- n/a
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