load_forecasting

Load forecaster

Develops and compares forecasting models for electric power load in Delhi

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

GitHub

502 stars
13 watching
159 forks
Language: Jupyter Notebook
last commit: 3 days ago
Linked from 1 awesome list

arimaelectric-load-forecastinggrulstmmachine-learningrnnsessmatime-series-forecastingwma

Backlinks from these awesome lists:

Related projects:

Repository Description Stars
ramikrispin/uselectricity Generates hourly electricity demand forecasts for the US using real-time data from the Energy Information Administration API and machine learning models. 100
immm-sfa/tell A Python package to predict future hourly electricity loads based on weather and climate changes 26
colasgael/machine-learning-for-solar-energy-prediction Develops a predictive model to forecast the power production of solar panels based on weather data 235
damitkwr/esrnn-gpu A PyTorch implementation of an optimized deep learning model for time series forecasting on GPUs. 318
openstef/openstef A package designed to automate machine learning pipelines for short-term energy forecasting using Python. 93
amazon-science/earth-forecasting-transformer An implementation of a deep learning model for predicting weather and climate patterns 367
wizaron/deep-forecast-pytorch A deep learning-based framework for predicting wind speeds using LSTM networks in PyTorch. 177
nixtla/mlforecast A Python library for scalable machine learning-based time series forecasting with efficient feature engineering and out-of-the-box compatibility. 899
mllam/neural-lam A software framework for training and evaluating neural networks for weather prediction in specific geographic areas. 116
nrel/reeds-2.0 A long-term capacity planning and dispatch model for the North American electricity system 126
skforecast/skforecast A Python library for building machine learning models to forecast time series data 1,156
ibm/max-weather-forecaster An API that predicts hourly weather features based on historical data using machine learning models. 70
alkaline-ml/pmdarima A statistical library for time series analysis and forecasting 1,594
mhjabreel/stf-rnn Recurrent neural network model for predicting people's next location based on spatial and temporal features 28
harimkang/lstm-prediction A time series prediction project using LSTM algorithm to forecast jeans prices based on historical sales data 56