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Predictive model for solar energy consumption. An exploration of residential solar energy consumption as a time series. Use of ML models trained interactively with a selection of duration for the training window period.

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manuelamachado/energy-solar

 
 

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energy-solar

UC Berkeley Analytics Project

Name Forecast of Renewable Energy Consumption Insight into Solar - Exploration into Monthly Solar Energy using four distinct techniques: Autoregression, Linear Regression, Multi-layer Perceptron Regressor, and Random Forest Regressor

Motivation: The world of solar has advanced dramatically, solar’s clean energy is becoming more accessible every day. High residential electricity costs prompt homeowners to turn to solar for financial savings and environmental benefits. These trends motivated us to take a closer look at residential solar energy consumption in the United States.

Data Source:

Technology stack used:

  • pandas, numpy, matplotlib, seaborn, sklearn, statsmodels, plotly
  • Flask, Html-css, bootstrap, bootswatch, Javascript, Jsonify

References:

Process:

Project Contributors

Manuela Machado Guirlyn Olivar

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Predictive model for solar energy consumption. An exploration of residential solar energy consumption as a time series. Use of ML models trained interactively with a selection of duration for the training window period.

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