AI-Based Renewable Energy Grid Balancing System
PBL-AI-2020
What You will Learn
The AI-Based Renewable Energy Grid Balancing System is an advanced AI-powered platform designed to manage and optimize the balance between energy supply from renewable sources (such as wind, solar, and hydro) and grid demand. This system predicts energy consumption, forecasts renewable energy output, and makes real-time adjustments to ensure efficient energy distribution. The system aims to minimize energy waste, reduce reliance on non-renewable energy sources, and maintain grid stability by dynamically balancing energy supply and demand.
Job Opportunities
- Energy Data Scientist
- Renewable Energy Consultant
- Energy Systems Engineer
- AI Engineer for Renewable Energy
- Sustainability Analyst
Duration Course
- 4-5 hours/day
- 300 Hours of Mentorship
- Projects
- 30 Course Videos
Course Content
Business Analyst Fundamentals
- Energy Data Collection and Integration: Use APIs and real-time data feeds to collect energy consumption data, weather forecasts, and energy output from renewable sources (solar, wind, etc.).
- Energy Demand Forecasting using AI: Build predictive models using TensorFlow or Scikit-learn to forecast energy demand based on historical data, real-time usage, and weather patterns.
- Renewable Energy Output Prediction: Develop machine learning models to predict the energy output of renewable sources (solar, wind) using environmental data such as weather forecasts and historical energy production.
- Grid Balancing Algorithms: Implement optimization algorithms to match energy supply with demand in real-time, ensuring efficient distribution across the grid.
- Real-Time Monitoring and Control System: Use Flask or FastAPI to create a dashboard that displays real-time energy supply-demand data and allows for manual or automatic adjustments to the grid.
- Energy Storage Optimization: Integrate AI models to manage and optimize energy storage systems (such as batteries) for peak times and off-peak usage, ensuring surplus energy from renewable sources is stored and used efficiently.”
- Learn to forecast energy demand, balance grid supply, and optimize renewable energy distribution.
- Ensures efficient renewable energy use, reduces waste, and improves energy sustainability.
- AI, Energy Engineering, Data Science
- AI system that matches renewable energy supply with demand for real-time grid balancing and energy optimization.
- Collect energy demand and renewable source data.
- Train AI models to balance supply and demand.
- Deploy in a simulated or real-world grid environment.
- Energy Optimization Consulting: Help companies and grid operators balance their energy supply and demand using AI-powered predictive models.
- AI-Powered Energy Management Systems: Build custom AI systems for businesses to monitor and optimize their energy usage, integrating renewable energy sources into their daily operations.
- Grid Stability and Forecasting Solutions: Offer services to energy companies to improve grid stability by forecasting energy demand and renewable energy output using AI.
- Energy Storage Management Solutions: Develop AI systems that help companies optimize the use of energy storage systems, ensuring energy is stored during peak renewable production and used during high demand periods.
- AI-Powered Energy Optimization Platforms: Build platforms that help energy companies and industries optimize their energy consumption by dynamically balancing renewable energy supply and demand.
- Smart Grid Management Solutions: Develop and offer smart grid management systems that use AI to monitor energy consumption, predict demand, and adjust grid parameters for optimal performance.
- Renewable Energy Analytics Companies: Start companies that offer data-driven insights on renewable energy production and distribution to help governments and businesses achieve energy efficiency and sustainability.
- AI-Driven Energy Storage Solutions: Create startups focused on optimizing energy storage systems using AI, helping companies and cities maximize the use of renewable energy.
Trending now!
Generative AI
This dynamic course, “Innovating with Generative AI: Project-Based Learning,” offers a deep dive into generative AI technologies, focusing on hands-on project work with large language models (LLMs) like Mistral or Llama. Students will gain a solid foundation in machine learning, explore the intricacies of GANs and VAEs, and apply their knowledge to create AI-driven solutions across various domains, including retail, agriculture, healthcare, manufacturing, energy, sustainable technology, and business innovation. The curriculum emphasizes ethical AI use and culminates in a capstone project where students will tackle real industry challenges, providing a pathway to employment, entrepreneurship, or freelance opportunities in the cutting-edge field of generative AI.
Can You Solve the Project Challenge?
GENERATIVE AI
AI-601
Generative AI technologies, including the latest LLMs
Leadership in Ethical & Responsible AI
ETHAI-601
Ethical AI, governance frameworks, stakeholder engagement
Precision Agriculture with AI
PSC-PAI-102
In-depth exploration of Gen AI, ML and Deep Learning
Connect Now and Be Part of our AI Community
Wersel Workdesk offers hands-on AI experience guided by experts, immersing students in practical customer projects from ideation to deployment for real-world learning.
Â
Learn – Work – Innovate.
Our Mission: Empower our community with practical Al knowledge through Wersel Projects, solving real-world and environmental challenges.
Links
Latest Posts
AI Navigating Ocean Sustainablity
AI Navigating Agriculture Sustainability
Wersel Workdesk All rights reserved Copyrights 2024