Pekmezci, MehmetUğur, E.Öztop, Erhan2023-01-062023-01-062021978-166543649-6http://hdl.handle.net/10679/8009https://doi.org/10.1109/SIU53274.2021.9478006Although there are various mathematical methods for modeling system dynamics, more general solutions can be achieved using deep learning based on data. Alternative deep learning methods are presented in parallel with the improvements in artificial neural networks. In this study, both LSTM-based recurrent deep learning method and CNMP-based conditional deep learning method were used to learn the system dynamics of the selected system using time series data. The effects of the amount of time series data needed for training and the initial input length needed for predictions made using the learned system model on both methods were analyzed.engrestrictedAccessLearning system dynamics via deep recurrent and conditional neural systemsconferenceObject00080810070024710.1109/SIU53274.2021.9478006CNMPDeep learningLSTMSystem dynamics2-s2.0-85111456985