Litcius/Paper detail

Planning of distributed renewable energy systems under uncertainty based on statistical machine learning

Xueqian Fu, Xianping Wu, Chunyu Zhang, Shaoqian Fan, Nian Liu

2022Protection and Control of Modern Power Systems120 citationsDOIOpen Access PDF

Abstract

Abstract The development of distributed renewable energy, such as photovoltaic power and wind power generation, makes the energy system cleaner, and is of great significance in reducing carbon emissions. However, weather can affect distributed renewable energy power generation, and the uncertainty of output brings challenges to uncertainty planning for distributed renewable energy. Energy systems with high penetration of distributed renewable energy involve the high-dimensional, nonlinear dynamics of large-scale complex systems, and the optimal solution of the uncertainty model is a difficult problem. From the perspective of statistical machine learning, the theory of planning of distributed renewable energy systems under uncertainty is reviewed and some key technologies are put forward for applying advanced artificial intelligence to distributed renewable power uncertainty planning.

Topics & Concepts

Renewable energyDistributed generationWind powerComputer scienceElectric power systemEnvironmental economicsEngineeringPower (physics)Electrical engineeringEconomicsPhysicsQuantum mechanicsIntegrated Energy Systems OptimizationEnergy Load and Power ForecastingSmart Grid Energy Management
Planning of distributed renewable energy systems under uncertainty based on statistical machine learning | Litcius