I rendered the geohash based on occurrence from kml and it looks like:
Check out generating script!
The challenge is:
The model should be able to accurately forecast ahead by T+1 to T+5 time intervals (where each interval is 15-min) given all data up to time T.
To solve this problem, we will try to use a supervised model according to the tutorial. The topology of the model is quite simple - 3 layers of LSTM with BatchNormalization, the results can be polished by optimizing hyperparameters and with more computational resources the model can be improved with more training epoches.
pip install -r requirements.txt
python model.py