Partial least square regression (PLSR) was used to generate a set of independent variables and responsive variables by reducing a large number of original descriptors to a new variable space based on a small number of orthogonal factors (latent variables) It has been proved to be highly efficient for multivariate calibration when the measured variables, such as
spectral data, are highly correlated.