I am trying to predict the hygrothermal response of a wall, given the interior and exterior climate. Based on literature research, I believe this should be possible with RNN but I have not been able to get good accuracy.
The dataset has 12 input features (time-series of exterior and interior climate data) and 10 output features (time-series of hygrothermal response), both containing hourly values for 10 years. This data was created with hygrothermal simulation software, there is no missing data.
Unlike most time-series prediction problems, I want to predict the response for the full length of the input features time-series at each time-step, rather than the subsequent values of a time-series (eg financial time-series prediction). I have not been able to find similar prediction problems (in similar or other fields), so if you know of one, references are very welcome.
I think this should be possible with RNN, so I am currently using LSTM from Keras. Before training, I preprocess my data the following way:
- Discard first year of data, as the first time steps of the hygrothermal response of the wall is influenced by the initial temperature and relative humidity.
- Split into training and testing set. Training set contains the first 8 years of data, the test set contains the remaining 2 years.
- Normalise training set (zero mean, unit variance) using
StandardScalerfrom Sklearn. Normalise test set analogously using mean an variance from training set.
This results in:
X_train.shape = (1, 61320, 12),
y_train.shape = (1, 61320, 10),
X_test.shape = (1, 17520, 12),
y_test.shape = (1, 17520, 10)
As these are long time-series, I use stateful LSTM and cut the time-series as explained here, using the
stateful_cut() function. I only have 1 sample, so
batch_size is 1. For
T_after_cut I have tried 24 and 120 (24*5); 24 appears to give better results. This results in
X_train.shape = (2555, 24, 12),
y_train.shape = (2555, 24, 10),
X_test.shape = (730, 24, 12),
y_test.shape = (730, 24, 10).
Next, I build and train the LSTM model as follows:
model = Sequential() model.add(LSTM(128, batch_input_shape=(batch_size,T_after_cut,features), return_sequences=True, stateful=True, )) model.addTimeDistributed(Dense(targets))) model.compile(loss='mean_squared_error', optimizer=Adam()) model.fit(X_train, y_train, epochs=100, batch_size=batch=batch_size, verbose=2, shuffle=False)
Unfortunately, I don't get accurate prediction results; not even for the training set, thus the model has high bias.
How can I improve my model? I have already tried the following:
- Not discarding the first year of the dataset -> no significant difference
- Differentiating the input features time-series (subtract previous value from current value) -> slightly worse results
- Up to four stacked LSTM layers, all with the same hyperparameters -> no significant difference in results but longer training time
- Dropout layer after LSTM layer (though this is usually used to reduce variance and my model has high bias) -> slightly better results, but difference might not be statistically significant
Am I doing something wrong with the stateful LSTM? Do I need to try different RNN models? Should I preprocess the data differently?
Furthermore, training is very slow: about 4 hours for the model above. Hence I am reluctant to do an extensive hyperparameter gridsearch...