04324nam 22006855 450 991064038980332120250723051721.03-030-82848-410.1007/978-3-030-82848-6(MiAaPQ)EBC7173149(Au-PeEL)EBL7173149(CKB)25994568600041(DE-He213)978-3-030-82848-6(PPN)267808771(EXLCZ)992599456860004120230107d2023 u| 0engurcnu||||||||txtrdacontentcrdamediacrrdacarrierEnergy Forecasting and Control Methods for Energy Storage Systems in Distribution Networks Predictive Modelling and Control Techniques /by William Holderbaum, Feras Alasali, Ayush Sinha1st ed. 2023.Cham :Springer International Publishing :Imprint: Springer,2023.1 online resource (218 pages)Lecture Notes in Energy,2195-1292 ;85Print version: Holderbaum, William Energy Forecasting and Control Methods for Energy Storage Systems in Distribution Networks Cham : Springer International Publishing AG,c2023 9783030828479 Includes bibliographical references and index.Introduction -- Basic tools -- Short term load forecasting -- Control strategies in low voltage network for energy saving -- Optimal control with load forecasting -- Case study: Energy saving based on optimal control and load forecasts -- Conclusion.This book describes the stochastic and predictive control modelling of electrical systems that can meet the challenge of forecasting energy requirements under volatile conditions. The global electrical grid is expected to face significant energy and environmental challenges such as greenhouse emissions and rising energy consumption due to the electrification of heating and transport. Today, the distribution network includes energy sources with volatile demand behaviour, and intermittent renewable generation. This has made it increasingly important to understand low voltage demand behaviour and requirements for optimal energy management systems to increase energy savings, reduce peak loads, and reduce gas emissions. Electrical load forecasting is a key tool for understanding and anticipating the highly stochastic behaviour of electricity demand, and for developing optimal energy management systems. Load forecasts, especially of the probabilistic variety, can support moreinformed planning and management decisions, which will be essential for future low carbon distribution networks. For storage devices, forecasts can optimise the appropriate state of control for the battery. There are limited books on load forecasts for low voltage distribution networks and even fewer demonstrations of how such forecasts can be integrated into the control of storage. This book presents material in load forecasting, control algorithms, and energy saving and provides practical guidance for practitioners using two real life examples: residential networks and cranes at a port terminal.Lecture Notes in Energy,2195-1292 ;85Energy storageElectric power distributionAutomatic controlEnergy policyEnergy policyMechanical and Thermal Energy StorageEnergy Grids and NetworksControl and Systems TheoryEnergy Policy, Economics and ManagementEnergy storage.Electric power distribution.Automatic control.Energy policy.Energy policy.Mechanical and Thermal Energy Storage.Energy Grids and Networks.Control and Systems Theory.Energy Policy, Economics and Management.621.319Holderbaum William1353334Alasali FerasSinha AyushMiAaPQMiAaPQMiAaPQBOOK9910640389803321Energy Forecasting and Control Methods for Energy Storage Systems in Distribution Networks3251570UNINA