The squared differences between
the actual (simulation process flow execution) and predicted (approximation
model execution) values for all error samples are averaged. The square
root is taken, and the result is normalized by the range of the actual
values for each response. Therefore, the value is a fraction of the response
data range for the error sample points. Normalizing the error value allows
the error level of different responses with different magnitudes to be
compared with respect to the quality of predictions in the approximation
model. The root mean square error is calculated as follows:
where
where is the number of points, and is the root_mean_square deviation of the error. |