During the last years the application of Artificial Neural networks (ANN) has proved to be a model independent instrument for signal evaluation systems. ANNs improve commonly the performance of single sensors and sensor arrays. Usually sensor signals near the equilibrium were used to train and test ANNs. All chemical sensors have certain time constants to reach their equilibrium, which range from a few seconds up to minutes. Therefore, an accurate classification and prediction of gas concentrations by ANNs are even possible minutes after a sudden gas concentration change. For many applications of gas sensing devices a fast classification of gases with the pattern recognition system is necessary. This work systematically investigates the pro...
AbstractArtificial Neural Network (ANN) based pattern recognition technique is used for ensuring the...
The presented sensor array consists of two chemical sensors based on different measurement principle...
The concept of Artificial Neural networks was of McClloch and Pitts in 1943 and since then it has be...
Due to the lack in selectivity and separability of most common chemical sensors, the use of sensor a...
Due to the lack in selectivity and separability of most common gas sensors, the use of sensor arrays...
The applied chemical sensor research focuses on sensor arrays and signal evaluation methods, to impr...
In this study, an artificial neural network (ANN) structure with tapped time:delays is used for the ...
The paper presents two methods of dynamic error correction applied to transducers used for the measu...
In this study, a comparative study was performed for the quantitative identification of individual g...
An array of commercial gas sensors and nanotechnology sensors has been integrated to quantify gas co...
Compact, portable systems capable of quickly identifying contaminants in the field are of great impo...
Compact, portable systems capable of quickly identifying contaminants in the field are of great impo...
The composition of the initial substance was determined using an electronic sensor “electronic nose”...
AbstractThe observations of natural olfaction led to the evidence that the processing of olfactory r...
The task for a gas sensing system is to measure one or more specified gases and to suppress any dist...
AbstractArtificial Neural Network (ANN) based pattern recognition technique is used for ensuring the...
The presented sensor array consists of two chemical sensors based on different measurement principle...
The concept of Artificial Neural networks was of McClloch and Pitts in 1943 and since then it has be...
Due to the lack in selectivity and separability of most common chemical sensors, the use of sensor a...
Due to the lack in selectivity and separability of most common gas sensors, the use of sensor arrays...
The applied chemical sensor research focuses on sensor arrays and signal evaluation methods, to impr...
In this study, an artificial neural network (ANN) structure with tapped time:delays is used for the ...
The paper presents two methods of dynamic error correction applied to transducers used for the measu...
In this study, a comparative study was performed for the quantitative identification of individual g...
An array of commercial gas sensors and nanotechnology sensors has been integrated to quantify gas co...
Compact, portable systems capable of quickly identifying contaminants in the field are of great impo...
Compact, portable systems capable of quickly identifying contaminants in the field are of great impo...
The composition of the initial substance was determined using an electronic sensor “electronic nose”...
AbstractThe observations of natural olfaction led to the evidence that the processing of olfactory r...
The task for a gas sensing system is to measure one or more specified gases and to suppress any dist...
AbstractArtificial Neural Network (ANN) based pattern recognition technique is used for ensuring the...
The presented sensor array consists of two chemical sensors based on different measurement principle...
The concept of Artificial Neural networks was of McClloch and Pitts in 1943 and since then it has be...