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Solar Energy Integration in Urban Planning

Original price was: USD $120.00.Current price is: USD $59.00.

AI models for optimal rooftop and facade PV Deployment.

About This Course

This 3-day course delves into how Artificial Intelligence (AI) and geospatial technologies can revolutionize solar energy integration in urban planning. Participants will learn how AI models can detect rooftop and façade solar potential, use digital twins and solar simulations to model cityscapes, and apply decision-support tools for informed policy and design. Through practical demonstrations and real-world case studies, the course bridges the gap between AI, architecture, and urban energy strategy, accelerating the transition to carbon-neutral and energy-positive cities.

Aim

This course introduces AI-driven methods and geospatial tools to optimize rooftop and façade solar photovoltaic (PV) deployment in urban areas. Participants will learn to enhance urban planning, energy efficiency, and the development of sustainable cities through smart energy strategies.

Course Structure

📅 Module 1 – Urban Solar Potential Assessment Using AI and Geospatial Data

  • Welcome Address & Overview: Introduce the theme, objectives, and outcomes of the course.
  • Urban Energy Systems & Distributed PV: Explore the evolution of urban solar systems and the importance of rooftop and façade PV in achieving carbon-neutral cities.
  • AI-Powered Rooftop & Façade Detection: Learn about deep learning models like DeepLabv3+ and CNNs for detecting solar potential on rooftops and facades.
  • Geospatial Techniques for Solar Mapping: Understand how to integrate high-resolution satellite, LiDAR, and drone imagery for solar potential mapping.
  • Tools for Irradiance Estimation: Learn how to extract solar-accessible surfaces and estimate solar irradiance using open-source platforms and datasets.

📅 Module 2 – AI Modeling, Digital Twins & Solar Simulation in Urban Environments

  • Spatial Digital Twins for Solar Planning: Learn how to build interactive urban energy models to simulate PV deployment across cities.
  • AI & GIS Integration: Integrate AI models with city-wide GIS databases for city-level solar energy planning.
  • Generative & Predictive Modeling for Solar Performance: Understand how generative models like SolarGANs can predict façade irradiance, and how deep learning can forecast solar yield and shading.
  • Urban Density & Solar Access Optimization: Explore how urban density and morphology influence solar access, and learn AI-based methods to optimize solar capture in high-density environments.

📅 Module 3 – AI-Driven Decision Support, Urban Energy Strategy & Policy Integration

  • Multi-Criteria Optimization in PV Deployment: Learn how AI-based decision-support systems can help urban planners and architects balance technical, economic, spatial, and aesthetic constraints in solar PV deployment.
  • Economic & Regulatory Considerations: Understand the financial aspects of solar energy, including PV payback, amortization, and cost-benefit modeling.
  • Policy Mechanisms for Solar Integration: Discover the role of policy in incentivizing façade-integrated solar and other energy-positive initiatives.
  • Global Case Studies & Implementation Frameworks: Study successful global implementations of solar energy in urban environments and how they were shaped by interdisciplinary collaboration.
  • Shaping the Future of Urban Solar Design: Reflect on the future of urban solar design and its integration with smart cities and energy-positive initiatives.

Course Outcomes

  • Understand Agrivoltaic Principles: Learn how AI can optimize crop–energy–water systems in agrivoltaic applications.
  • Apply AI Models & Digital Twins: Gain hands-on experience using AI and digital twins for yield enhancement, irrigation optimization, and energy generation.
  • Use Smart Sensors & IoT for Monitoring: Understand how to use real-time data to support decision-making and optimize agrivoltaic systems.
  • Evaluate Economic, Technical & Policy Aspects: Learn how to assess the costs, benefits, and regulatory frameworks for agrivoltaic projects.
  • Design Sustainable Systems: Develop strategies for integrating food, energy, and water in a sustainable and adaptive way using AI.

Who Should Enrol?

  • Urban Planners, Architects, and Sustainability Professionals: Looking to integrate solar energy solutions into urban design.
  • Researchers and Students: Interested in renewable energy, AI, and geospatial sciences.
  • Policy Makers and Government Officials: Working on energy, climate action, and sustainable city policies.
  • Industry Professionals: In solar integration, smart cities, and energy-positive design sectors.

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What You’ll Gain

  • Full access to e-LMS
  • Publication opportunity
  • Self-assessment & final exam
  • e-Certificate

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