ColasGael / Machine-Learning-for-Solar-Energy-Prediction

Predict the Power Production of a solar panel farm from Weather Measurements using Machine Learning
MIT License
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data-processing machine-learning matlab neural-network python tensorflow

Machine-Learning-for-Solar-Energy-Prediction

by Adele Kuzmiakova, Gael Colas and Alex McKeehan, graduate students from Stanford University

This is our final project for the CS229: "Machine Learning" class in Stanford (2017). Our teachers were Pr. Andrew Ng and Pr. Dan Boneh.

Language: Python, Matlab, R

Goal: predict the hourly power production of a photovoltaic power station from the measurements of a set of weather features.

This project could be decomposed in 3 parts:

Our final report and poster are available at the root.