Method and apparatus for training a system model with gain constraints. A
method is disclosed for training a steady-state model, the model having
an input and an output and a mapping layer for mapping the input to the
output through a stored representation of a system. A training data set
is provided having a set of input data u(t) and target output data y(t)
representative of the operation of a system. The model is trained with a
predetermined training algorithm which is constrained to maintain the
sensitivity of the output with respect to the input substantially within
user defined constraint bounds by iteratively minimizing an objective
function as a function of a data objective and a constraint objective.
The data objective has a data fitting learning rate and the constraint
objective has constraint learning rate that are varied as a function of
the values of the data objective and the constraint objective after
selective iterative steps.