Using Artificial Neural Network to Control the Temperature of Fuel Cell

In this paper, a method using artificial neural network (ANN) to control the temperature of proton exchange membrane fuel cell (PEMFC) was described. Its superiority over the traditional PID control method in PEMFC temperature control was approved by the experiment results

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