Categories

Advanced Course in Renewable Energy Forecasting for Smart Grids


Summary

As the world shifts toward sustainable energy, integrating renewable sources like wind, solar, and hydropower into existing power grids presents both opportunities and challenges. The variable nature of renewable energy production, influenced by weather and time, requires accurate forecasting to maintain grid stability and optimize energy distribution.

The Renewable Energy Forecasting for Smart Grids course, offered by the British Academy for Training and Development, provides professionals with the skills needed to forecast renewable energy output and manage its integration into smart grids. Participants will explore key forecasting techniques, from statistical models to machine learning approaches, and understand how these tools can enhance grid reliability and efficiency.

By the end of the course, participants will be equipped to contribute to the smooth integration of renewable energy, supporting more reliable and sustainable energy systems.

Objectives and target group

Who Should Attend?

  • Energy Analysts and Planners seeking to enhance their understanding of renewable energy forecasting.
  • Utility and Grid Operators managing the balance between renewable energy generation and grid stability.
  • Researchers and Developers in the field of energy technology and forecasting methodologies.
  • Government Policy Advisors and Regulatory Professionals working on policies related to renewable energy and smart grid development.

 

Knowledge and Benefits:

After completing the program, participants will be able to master the following:

  • Understand the critical role of forecasting in smart grid systems, particularly in managing renewable energy sources.
  • Be familiar with various forecasting techniques, including statistical methods and machine learning, for predicting renewable energy output.
  • Learn how to optimize the integration of renewable energy into smart grids, ensuring grid stability and efficient energy distribution.
  • Gain insights into forecasting challenges and how to improve model accuracy through data integration and advanced algorithms.
  • Be prepared to contribute to energy policy development and the strategic planning of energy infrastructure to support renewable energy integration.

Course Content

  • Overview of Renewable Energy Technologies

    • Key renewable energy sources: solar, wind, hydro, and geothermal.
    • The growing role of renewables in global energy production.
    • Technological advancements driving renewable energy adoption.
  • Challenges of Integrating Renewables into Power Grids

    • Variability and intermittency of renewable energy generation.
    • Grid congestion, energy losses, and transmission constraints.
    • The need for modernized infrastructure to accommodate renewables.
  • Introduction to Smart Grids

    • Definition and key characteristics of smart grids.
    • How smart grids enhance the management of renewable energy.
    • The role of smart grids in improving grid reliability and efficiency.
  • The Importance of Forecasting in Grid Management

    • The role of accurate forecasting in maintaining grid stability.
    • The impact of forecasting on supply-demand balance.
    • How forecasting contributes to efficient energy dispatch and storage.
  • Factors Affecting Renewable Energy Production

    • The influence of weather patterns, time of day, and seasonal variations.
    • Geographic and topographic factors affecting energy generation.
    • The interaction between energy production and grid demand.
  • Benefits of Accurate Forecasting for Grid Optimization

    • Reduction in energy waste and curtailment.
    • Improved decision-making for energy market pricing.
    • Support for grid balancing and integration with storage systems.
  • Statistical Forecasting Methods

    • Time series analysis: identifying trends and cycles in energy data.
    • Regression models: predicting energy output based on historical data.
    • Moving averages and smoothing techniques for short-term forecasting.
  • Machine Learning Approaches for Forecasting

    • Overview of machine learning methods used in energy forecasting.
    • Supervised learning algorithms: decision trees, support vector machines, etc.
    • Unsupervised learning: clustering and anomaly detection for energy data.
  • Hybrid Forecasting Models

    • Combining statistical and machine learning methods for enhanced accuracy.
    • Multi-model approaches to account for uncertainty and variability.
    • Practical applications of hybrid models in renewable energy forecasting.
  • The Role of Meteorological Data

    • How weather forecasts impact the prediction of renewable energy output.
    • The importance of real-time weather data for grid management.
    • Key meteorological variables: temperature, wind speed, cloud cover, etc.
  • Data Sources for Forecasting

    • Satellite-based weather data and its applications in energy forecasting.
    • Ground-based weather stations and their role in local forecasting.
    • Global forecasting systems and their integration with energy models.
  • Integrating Environmental Data into Forecasting Models

    • How to incorporate weather data into renewable energy forecasting algorithms.
    • Calibration and validation techniques for improved forecast accuracy.
    • The role of environmental data in improving long-term forecasting reliability.
  • Wind Energy Forecasting

    • Predicting wind speed and direction: key factors influencing wind energy generation.
    • Forecasting models specific to wind energy production.
    • Challenges in forecasting due to spatial variability and atmospheric conditions.
  • Solar Energy Forecasting

    • The impact of solar radiation, cloud cover, and atmospheric conditions on solar energy production.
    • Forecasting models for solar energy based on satellite imagery and ground-based data.
    • The role of geographic factors (latitude, terrain) in solar generation forecasts.
  • Hydropower Forecasting

    • Predicting hydropower generation based on water flow, rainfall, and seasonal changes.
    • The influence of snowmelt and precipitation patterns on hydropower forecasting.
    • The integration of hydropower forecasts with other renewable energy sources.
  • Forecasting for Energy Storage Optimization

    • The role of forecasting in managing energy storage systems (e.g., batteries, pumped storage).
    • How energy forecasts help determine storage capacity and timing for discharge.
    • The impact of forecasting on enhancing the flexibility of energy storage.
  • Grid Integration and Reliability

    • The importance of accurate forecasting for grid reliability and stability.
    • How renewable energy forecasting supports load balancing and reduces curtailment.
    • The role of demand response programs in conjunction with renewable energy forecasting.
  • Future Trends in Renewable Energy Forecasting

    • The growing role of artificial intelligence and big data in forecasting models.
    • Advancements in predictive analytics and the integration of real-time data.
    • Emerging technologies and techniques shaping the future of renewable energy forecasting.

Course Date

2025-01-13

2025-04-14

2025-07-14

2025-10-13

Course Cost

Note / Price varies according to the selected city

Members NO. : 1
£4500 / Member

Members NO. : 2 - 3
£3600 / Member

Members NO. : + 3
£2790 / Member

Related Course

Featured

Renewable Energy According to European Standards

2025-01-06

2025-04-07

2025-07-07

2025-10-06

£4500 £4500

$data['course']