Two types of artificial neural networks, Multilayer Perceptron (MLP) and Self-organizing Feature Map (SOM), were employed to detect mastitis for robotic milking stations using the preprocessed data relating to the electrical conductivity and milk yield. The SOM was developed to classify the health status into three categories: healthy, moderately ill and severely ill. The clustering results were successfully evaluated and validated by using statistical techniques such as K-means clustering, ANOVA and Least Significant Difference. The result shows that the SOM could be used in the robotic milking stations as a detection model for mastitis. For developing MLP models, a new mastitis definition based on higher EC and lower quarter yield was c...
Drug development is a long and expensive process. It is often not until potential drug candidates ar...
This TFM reviews the application of machine learning techniques in optical communication systems and...
Neural networks are widely used for image processing. Of these, the convolutional neural network (CN...
Robot calibration is an integrated procedure of measurement and data processing to improve and maint...
Electronic nose systems have been in existence for around 20 years or more. The ability to mimic the...
Data Mining (DM) refers to the analysis of observational datasets to find relationships and to summa...
This thesis details research carried out into the application of unsupervised neural network and st...
University of Minnesota M.S. thesis.December 2017. Major: Biomedical Engineering. Advisor: Suhasa K...
Existing connectionist computational models of neural networks idealise the biological process in th...
Undergraduate thesis submitted to the Department of Computer Science, Ashesi University, in partial ...
Traditional network models use simplified pore geometries to simulate multiphase flow using semi-ana...
Manganese-enhanced magnetic resonance imaging (MEMRI) opens the great opportunity to study complex p...
Quantification of myelin in vivo is crucial for the understanding of neurological diseases, like mul...
For the past decades, the Artificial Neural Networks (ANNs) have emerged as a popular tool for analy...
In this thesis I present an automated framework for segmentation of bone structures from dual modal...
Drug development is a long and expensive process. It is often not until potential drug candidates ar...
This TFM reviews the application of machine learning techniques in optical communication systems and...
Neural networks are widely used for image processing. Of these, the convolutional neural network (CN...
Robot calibration is an integrated procedure of measurement and data processing to improve and maint...
Electronic nose systems have been in existence for around 20 years or more. The ability to mimic the...
Data Mining (DM) refers to the analysis of observational datasets to find relationships and to summa...
This thesis details research carried out into the application of unsupervised neural network and st...
University of Minnesota M.S. thesis.December 2017. Major: Biomedical Engineering. Advisor: Suhasa K...
Existing connectionist computational models of neural networks idealise the biological process in th...
Undergraduate thesis submitted to the Department of Computer Science, Ashesi University, in partial ...
Traditional network models use simplified pore geometries to simulate multiphase flow using semi-ana...
Manganese-enhanced magnetic resonance imaging (MEMRI) opens the great opportunity to study complex p...
Quantification of myelin in vivo is crucial for the understanding of neurological diseases, like mul...
For the past decades, the Artificial Neural Networks (ANNs) have emerged as a popular tool for analy...
In this thesis I present an automated framework for segmentation of bone structures from dual modal...
Drug development is a long and expensive process. It is often not until potential drug candidates ar...
This TFM reviews the application of machine learning techniques in optical communication systems and...
Neural networks are widely used for image processing. Of these, the convolutional neural network (CN...