I'm trying to optimize elemental percentage in certain composites using Genetic Algorithm. To do so, I need to derive an objective function first. Using Bayesian regulation, I have managed to train a neural network so it can follow the existing data closely with acceptable correlation.

The output of the network at this point is just a bunch of numbers for weights and biases. I know I can sum them up manually for each node and put them in the activation function to get a direct function which is capable of mapping inputs X to outputs Y, but is there an option in MATLAB that can do this for me automatically? (I have about 20 inputs. The manual way is not really feasible).

In summary, how do I get an objective function from a trained neural network instead of weights and biases? Maybe a set of polynomials that can map the inputs to the outputs directly?