TY - DATA T1 - Code underlying: Implementation of explicit and switched MPC using data-driven surrogate models PY - 2025/03/10 AU - Ja-Ho Koo AU - Edo Abraham AU - Dimitri Solomatine AU - Andreja Jonoski UR - DO - 10.4121/b6dd9d97-118d-406e-867d-b821fb6d08d4.v2 KW - Model Predictive Control KW - Parameterized Dynamic MPC KW - Switched MPC KW - Explicit MPC KW - DNN KW - Surrogate Model N2 -
Python codes to implement explicit and switched MPC using data-driven surrogate models.
The python files starting with PDMPC are for generating PDMPC results to train surrogate models.
O_results_check and W_results_check files are for arranging results from the explicit MPC surrogate model and switched MPC surrogate model, respectively.
W_ML.py is to build and test the switched MPC surrogate model, and O_DNN_hyper_opt.py is to find the optimal hyperparameters for the explicit MPC surrogate model as well as to train it.
The datasets for this research are included.
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