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The use of Machine Learning Regression models for predicting energy loads of buldings.

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SedemBuabs/ML-Project-Predicting-Cooling-Loads-of-Buildings

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Predicting the Cooling Load of Buildings

By Godswill Sedem Buabassah

Introduction

The study is focused on using machine learning to assess the cooling load requirements of buildings (that is, energy efficiency) as a function of building parameters.

The Dataset

The dataset was obtained from the UCI Machine learning repository https://archive.ics.uci.edu/ml/datasets/energy+efficiency

The dataset contains eight attributes (or features, denoted by X1...X8) and two responses (or outcomes, denoted by Y1 and Y2). The aim is to use the eight features to predict the response, Cooling Load(Y2).

X1 - Relative Compactness

X2 - Surface Area

X3 - Wall Area

X4 - Roof Area

X5 - Overall Height

X6 - Orientation

X7 - Glazing Area

X8 - Glazing Area Distribution

y1 - Heating Load

y2 - Cooling Load

Conclusion

The GradientBoostingRegressor was selected as the best model for predicting the cooling load of buildings based on the given parameters of this dataset. This model was selected because it gave the highest r2_score of 0.99.