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09/16/2025

Registration closes 09/16/2025
Virtual Workshop

Microclimate Simulation under Solar Panels

AI-enabled models for temperature, humidity, and light optimization.

  • Mode: Virtual / Online
  • Type: Mentor Based
  • Level: Moderate
  • Duration: 3 Days (60-90 Minutes each day)
  • Starts: 16 September 2025
  • Time: 5:30 IST

About This Course

Microclimate Simulation under Solar Panels – AI-Enabled Models for Temperature, Humidity, and Light Optimization” is a 3-day practical workshop that teaches how to build, evaluate, and deploy simple AI models to simulate and optimize microclimate conditions in solar energy systems, such as agrivoltaic farms.

Participants will explore data loading, basic preprocessing, simulation modeling, rule-based and machine learning approaches, and optimization techniques. Case studies from real-world solar farms, weather monitoring, and environmental datasets will be integrated for hands-on experience using guided Python notebooks.

Aim

To train participants in designing and applying AI models for simulating microclimate under solar panels, optimizing factors like temperature, humidity, and light to enhance energy production, crop growth, and system efficiency in sustainable solar deployments.

Workshop Objectives

Build simple AI models for microclimate simulation under solar panels

Quantify and visualize optimizations for temperature, humidity, and light

Analyze and interpret solar microclimate datasets using beginner-friendly tools

Deploy basic simulations and visualizations for project planning

Workshop Structure

📅 Day 1 – Foundations of Microclimate & Data Acquisition

  • Microclimate Basics (Temperature, Humidity, Light under Solar Panels) and Shading Effects
  • Discussions about the Dataset chosen
  • Exploratory Data Analysis and Visualization of Environmental Trends

📅 Day 2 – AI Modeling for Microclimate Simulation

  • Basic Simulation Techniques
  • Feature Engineering for Shading and Optimization
  • Model Evaluation
  • Tools: Python, NumPy, Pandas, Scikit-learn, Matplotlib

📅 Day 3 – Optimization & Deployment

  • Optimizing Light, Temperature, and Humidity for Solar Efficiency
  • Scenario Simulations
  • Linking Models to Real-World Insights
  • Visualization & Simple Apps

Who Should Enrol?

Renewable energy engineers and solar system designers

Data analysts and beginners in environmental AI

AI/ML enthusiasts working in sustainability and agriculture

Government solar policy officers and urban planners

Graduate students and researchers in solar energy or climate modeling

Important Dates

Registration Ends

09/16/2025
IST 4:30

Workshop Dates

09/16/2025 – 09/16/2025
IST 5:30

Meet Your Mentor(s)

Sanjay Bhargava

Other

Others

more


Fee Structure

Student Fee

₹1999 | $55

Ph.D. Scholar / Researcher Fee

₹2999 | $65

Academician / Faculty Fee

₹3999 | $75

Industry Professional Fee

₹5999 | $95

What You’ll Gain

  • Live & recorded sessions
  • e-Certificate upon completion
  • Post-workshop query support
  • Hands-on learning experience

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Connect with global researchers and mentors.

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(+91) 120-4781-217

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