Data from spectrophotometers form spectra that are sets of a great number of exploitable variables in quantitative chemical analysis; calibration models using chemometric methods must be established to exploit these variables. In order to design these calibration models which are specific to each analyzed parameter, it is advisable to select a reduced number of spectral variables. This paper presents a new incremental method (step by step) for the selection of spectral variables, using linear regression or neural networks, and based on an objective validation (external) of the calibration model; this validation is carried out on data that are independent from those used during calibration. The advantages of the method are discussed and high...
This thesis focuses on the investigation and application of functional Data Analysis methodologies t...
Several linear calibration methods have been proposed for predict-ing the concentration of a particu...
When analyzing heterogeneous samples using spectroscopy, the light scattering effect introduces non-...
This thesis focuses particularly on the application of chemometrics in the field of analytical che...
Multivariate calibration based on first-order data, for example, near infrared (NIR) spectra, is now...
Spectrophotometric data often comprise a great number of numerical components or variables that can ...
Several linear calibration methods have been proposed for predicting the concentration of a particul...
A method of variable selection for use with orthogonally designed calibration data sets, such as fac...
This paper presents a Bayesian approach to the development of spectroscopic calibration models. By f...
In quantitative on-line/in-line monitoring of chemical and bio-chemical processes using spectroscopi...
Chemometric multivariate calibration methods are rapidly impacting quantitative infrared spectroscop...
In chemometrics traditional calibration in case of spectral measurements express a quantity of inter...
A sample selection strategy based on the Successive Projections Algorithm (SPA), which is a techniqu...
High-throughput experimentation and screening methods are changing work flows and creating new possi...
High-throughput experimentation and screening methods are changing work flows and creating new possi...
This thesis focuses on the investigation and application of functional Data Analysis methodologies t...
Several linear calibration methods have been proposed for predict-ing the concentration of a particu...
When analyzing heterogeneous samples using spectroscopy, the light scattering effect introduces non-...
This thesis focuses particularly on the application of chemometrics in the field of analytical che...
Multivariate calibration based on first-order data, for example, near infrared (NIR) spectra, is now...
Spectrophotometric data often comprise a great number of numerical components or variables that can ...
Several linear calibration methods have been proposed for predicting the concentration of a particul...
A method of variable selection for use with orthogonally designed calibration data sets, such as fac...
This paper presents a Bayesian approach to the development of spectroscopic calibration models. By f...
In quantitative on-line/in-line monitoring of chemical and bio-chemical processes using spectroscopi...
Chemometric multivariate calibration methods are rapidly impacting quantitative infrared spectroscop...
In chemometrics traditional calibration in case of spectral measurements express a quantity of inter...
A sample selection strategy based on the Successive Projections Algorithm (SPA), which is a techniqu...
High-throughput experimentation and screening methods are changing work flows and creating new possi...
High-throughput experimentation and screening methods are changing work flows and creating new possi...
This thesis focuses on the investigation and application of functional Data Analysis methodologies t...
Several linear calibration methods have been proposed for predict-ing the concentration of a particu...
When analyzing heterogeneous samples using spectroscopy, the light scattering effect introduces non-...