Abstract: | Because it is difficult for the traditional PID algorithm for nonlinear time-variant control objects to obtain satisfactory
control results, this paper studies a neuron PID controller. The neuron PID controller makes use of neuron self-learning ability,
complies with certain optimum indicators, and automatically adjusts the parameters of the PID controller and makes them adapt
to changes in the controlled object and the input reference signals. The PID controller is used to control a nonlinear time-variant
membrane structure inflation system. Results show that the neural network PID controller can adapt to the changes in system
structure parameters and fast track the changes in the input signal with high control precision. |