Your privacy, your choice

We use essential cookies to make sure the site can function. We also use optional cookies for advertising, personalisation of content, usage analysis, and social media.

By accepting optional cookies, you consent to the processing of your personal data - including transfers to third parties. Some third parties are outside of the European Economic Area, with varying standards of data protection.

See our privacy policy for more information on the use of your personal data.

for further information and to change your choices.

You are viewing the site in preview mode

Skip to main content
Fig. 1 | BMC Research Notes

Fig. 1

From: Ecosense: a revolution in urban air quality forecasting for smart cities

Fig. 1

Model Architecture of BlaSt. Here, MinMaxScaler scales features to a 0–1 range, aiding LSTM neural networks by ensuring consistent input feature scaling for better convergence and performance. linear interpolation is used to smoothly estimate missing data, preserving time series integrity by considering trends in adjacent points. Also, the choice of 12 LSTM units in the model is based on a balance between complexity and performance. This specific number was determined through empirical experimentation, where we found that 12 units provided sufficient capacity to capture the temporal dependencies and patterns in the air quality data without leading to overfitting. Additionally, 12 units aligns with the 12 time step resolution we are working with, ensuring that the model effectively captures the necessary temporal dynamics for accurate predictions

Back to article page