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download.py

download.py download a year's worth of data from NSRDB

Flags

  • --lat: Latitude (to avoid errors make sure this value is within the continental United States) [Required]
  • --lon: Longitude (to avoid errors make sure this value is within the continental United States) [Required]
  • --train-years: Comma separated value string with years to download training data from (1998-2017 according to the official NSRDB docs) [Required]
  • --test-years: 'Comma separated value string with years to download testing data from (1998-2017 according to the official NSRDB docs) [Required]
  • --interval: 30 or 60 minute interval data [default: 30]

train.py

train.py train a configurable RNN

Flags

  • --lat: Latitude [Required]
  • --lon: Longitude [Required]
  • --train-years: Comma separated value string of downloaded irradiance data [Required]
  • --seq-length: How many data points are needed to make one prediction [default: 64]
  • --batch-size: Batch size of the training data [default: 64]
  • --model-name: Name of the saved model [default: model]
  • --start-date: Start date if you want to slice [default: None]
  • --end-date: End date if you want to slice [default: None]
  • --hidden-size: How many hidden neurons per LSTM layer [default: 35]
  • --num-layers: How many LSTM layers [default: 2]
  • --dropout: Dropout rate [default: 0.3]
  • --epochs: Number of epochs [default: 5]
  • --lr: Beginning learning rate [default: 1e-2]
  • --decay: Weight decay also known as L2 penalty [default: 1e-5]
  • --step-size: Decays the learning rate of each parameter group by gamma every step_size epochs [default: 2]
  • --gamma: Multiplicative factor of learning rate decay [default: 0.5]

evaluate.py

evaluate.py evaluate and plot the irradiance forecast results of a trained model

Flags

  • --lat: Latitude [Required]
  • --lon: Longitude [Required]
  • --test-years: Comma separated value string of downloaded irradiance data [Required]
  • --seq-length: How many data points are needed to make one prediction [default: 64]
  • --model-name: Name of the saved model [default: model]
  • --start-date: Start date if you want to slice [default: None]
  • --end-date: End date if you want to slice [default: None]
  • --hidden-size: How many hidden neurons per LSTM layer [default: 35]
  • --num-layers: How many LSTM layers [default: 2]
  • --plot: Should we plot the data [default: False]