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Forecasting electric power load of Delhi using ARIMA, RNN, LSTM, and GRU models

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Electric Load Forecasting

Under graduate project on short term electric load forecasting. Data was taken from State Load Despatch Center, Delhi website and multiple time series algorithms were implemented during the course of the project.

Models implemented:

models folder contains all the algorithms/models implemented during the course of the project:

scripts:

  • aws_arima.py fits ARIMA model on last one month's data and forecasts load for each day.
  • aws_rnn.py fits RNN, LSTM, GRU on last 2 month's data and forecasts load for each day.
  • aws_smoothing.py fits SES, SMA, WMA on last one month's data and forecasts load for each day.
  • aws.py a scheduler to run all above three scripts everyday 00:30 IST.
  • pdq_search.py for grid search of hyperparameters of ARIMA model on last one month's data.
  • load_scrap.py scraps day wise load data of Delhi from SLDC site and stores it in csv format.
  • wheather_scrap.py scraps day wise whether data of Delhi from wunderground site and stores it in csv format.

server folder contains django webserver code, developed to show the implemented algorithms and compare their performance. All the implemented algorithms are being used to forecast today's Delhi electricity load here [now deprecated]. Project report can be found in Report folder.

A screenshot of the website

Team Members:

  • Ayush Kumar Goyal
  • Boragapu Sunil Kumar
  • Srimukha Paturi
  • Rishabh Agrahari

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