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A study on energy demand forecasting based on smart meters data. The report and the presentation of the study are also provided in this repository.

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Electricity Demand Forecasting based on Smart Meter Data

Based on the Kaggle dataset (https://www.kaggle.com/jeanmidev/smart-meters-in-london), the goal of this study is to compare several well known machine learning algorithms on the task of time series forecasting. A report is also provided showing the results of the comparison.

The studied algorithms are:

  • SARIMA
  • RANDOM FOREST
  • LINEAR REGRESSION
  • DECISION TREES
  • SUPPORT VECTOR MACHINES
  • MULTILAYER PERCEPTRON

The problem statement

Problem Statement

Case Study

Case Study em.jpg)

Data Preprocessing

Sanitizeem.jpg)

Forecasting Algorithms Comparison

Algorithms comparison

Results

resutls

Next Hour Forecasting

Forecasting Results

Study Full Report

The full report of this study can be found under the report directory of this repo

Study Results Presentation

A quick presentation on the study can be found under the presentation directory of this repo.

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A study on energy demand forecasting based on smart meters data. The report and the presentation of the study are also provided in this repository.

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  • Python 1.4%