In this paper, a combustion temperature retrieval approximation for high-resolution infrared ground-based measurements has been developed based on a multilayer perceptron (MLP) technique. The introduction of a selection subset of features is mandatory due to the problems related to the high dimensionality data and the worse performance of MLPs with this high input dimensionality. Principal component analysis is used to reduce the input data dimensionality, selecting the physically important features in order to improve MLP performance. The use of a priori physical information over other methods in the chosen feature’s phase has been tested and has appeared jointly with the MLP technique as a good alternative for this problem.Publicad
This is a thesis by publication for a PhD degree of engineering in the university of Adelaide. The c...
Inversion of temperature and species concentration distributions from radiometric measurements invol...
In this paper, we present neural network methods for predicting uncertainty in atmospheric remote se...
In this paper, a combustion temperature retrieval approximation for high-resolution infrared ground-...
Proceeding of: International Conference on Computational Intelligence for Modelling, Control and Aut...
Proceeding of: 7th International Conference on Intelligent Data Engineering and Automated Learning, ...
Abstract. The use of high spectral resolution measurements to obtain a retrieval of certain physical...
In this work, a methodology based on the combined use of a multilayer perceptron model fed using sel...
The article presents a method for determining the content and temperature on the basis of spectra fr...
Infrared remote sensing is an extended technique to measure ”in situ” atmospheric pollutant gas conc...
The informational correlation among seven thermal infrared channels of MODIS is simulated. Results s...
This paper makes an attempt to establish a generalized neural network for simultaneously retrieving ...
In recent years, technology advancement has led to an enormous increase in the amount of satellite d...
Atmospheric radiometry requires solving an inversion problem due to the indirect nature of the measu...
Land surface temperature, land surface emissivity and atmospheric profiles are all of great importan...
This is a thesis by publication for a PhD degree of engineering in the university of Adelaide. The c...
Inversion of temperature and species concentration distributions from radiometric measurements invol...
In this paper, we present neural network methods for predicting uncertainty in atmospheric remote se...
In this paper, a combustion temperature retrieval approximation for high-resolution infrared ground-...
Proceeding of: International Conference on Computational Intelligence for Modelling, Control and Aut...
Proceeding of: 7th International Conference on Intelligent Data Engineering and Automated Learning, ...
Abstract. The use of high spectral resolution measurements to obtain a retrieval of certain physical...
In this work, a methodology based on the combined use of a multilayer perceptron model fed using sel...
The article presents a method for determining the content and temperature on the basis of spectra fr...
Infrared remote sensing is an extended technique to measure ”in situ” atmospheric pollutant gas conc...
The informational correlation among seven thermal infrared channels of MODIS is simulated. Results s...
This paper makes an attempt to establish a generalized neural network for simultaneously retrieving ...
In recent years, technology advancement has led to an enormous increase in the amount of satellite d...
Atmospheric radiometry requires solving an inversion problem due to the indirect nature of the measu...
Land surface temperature, land surface emissivity and atmospheric profiles are all of great importan...
This is a thesis by publication for a PhD degree of engineering in the university of Adelaide. The c...
Inversion of temperature and species concentration distributions from radiometric measurements invol...
In this paper, we present neural network methods for predicting uncertainty in atmospheric remote se...