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Mathematical Modeling for Sustainable Energy

Mathematical Modeling for Sustainable Energy

Date: November 10, 2024
Location: Cambridge Applied Mathematics Center
Description:
This event explored mathematical modeling techniques for renewable energy systems, grid optimization, and energy storage solutions.

  • Key Sessions:
    • Modeling Wind Turbine Efficiency
    • Optimizing Battery Performance Using Differential Equations
  • Speakers: Dr. Mark Ellison (Energy Analytics) and Prof. Rachel Kim (Cambridge University)

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