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RBF-aPID-Controller/README.md
2024-10-07 23:36:01 -07:00

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RBF-aPID-Controller

RBF Neural Net Adaptive PID Controller

Implementations of a radial basis function (RBF) neural network adaptive PID controller. Uses neural net and error information from PID control to adapt the control signal. Provides one adaptation value, using error, integral, and derivative.

To adapt the PID gains themselves, network outputs must be made to 3 neurons. Example usage with simulated data can be found in first_order_sim.py

The method has been implemented in three ways:

  1. TF_Implementation: Using TensorFlow to build and train the RBF Model.

TensorFlow TF_Trained

  1. NP_Implementation: Using Numpy to build and train the RBF Model.

Numpy

  1. C++ CPP_Implementation: Written in C++ (requiring cmath), for use on embedded systems.