Two types of artificial neural networks, multilayer perceptron (MLP) and self-organizing feature map (SOM) were used to detect mastitis by automatic milking systems (AMS) using a new mastitis indicator that combined two previously reported indicators based on higher electrical conductivity (EC) and lower quarter yield (QY). Four MLPs with four combinations of inputs were developed to detect infected quarters. One input combination involved principal components (PC) adopted for addressing multi-collinearity in the data. The PC-based MLP model was superior to other non-PC-based models in terms of less complexity and higher predictive accuracy. The overall correct classification rate (CCR), sensitivity and specificity of this model were 90·74%...
This study explored the potential value of in-line composite somatic cell count (ISCC) sensing as a ...
Dairy farmers using automatic milking are able to manage mastitis successfully with the help of mast...
The objective was to develop and validate a clinical mastitis (CM) detection model by means of decis...
Two types of artificial neural networks, Multilayer Perceptron (MLP) and Self-organizing Feature M...
Mastitis, one of the most significant diseases in dairy herds, is a highly complex sequence of event...
The use of milk sample categorization for diagnosing mastitis using Kohonen's self-organizing featur...
Mastitis in dairy cattle is the most expensive disease in the dairy industry. It poses a significant...
ArticleMastitis is an important problem, while I guess AI is a possible solution to detect subclinic...
Dairy cattle Mastitis is one of the most notable and costly diseases in dairy industry worldwide. Th...
Abstract: The aim of the present research was to investigate the usefulness of neural networks (NN) ...
Three techniques were compared for analysis of automatically collected data from the milking parlor....
This paper describes two parts of a continuing research project on developing neural network models ...
The overall objective of this research was to investigate the feasibility of using artificial neural...
Mastitis, one of the most significant diseases in dairy herds, is a highly complex sequence of event...
Bovine mastitis adversely affects the dairy industry around the world. This disease is caused by a ...
This study explored the potential value of in-line composite somatic cell count (ISCC) sensing as a ...
Dairy farmers using automatic milking are able to manage mastitis successfully with the help of mast...
The objective was to develop and validate a clinical mastitis (CM) detection model by means of decis...
Two types of artificial neural networks, Multilayer Perceptron (MLP) and Self-organizing Feature M...
Mastitis, one of the most significant diseases in dairy herds, is a highly complex sequence of event...
The use of milk sample categorization for diagnosing mastitis using Kohonen's self-organizing featur...
Mastitis in dairy cattle is the most expensive disease in the dairy industry. It poses a significant...
ArticleMastitis is an important problem, while I guess AI is a possible solution to detect subclinic...
Dairy cattle Mastitis is one of the most notable and costly diseases in dairy industry worldwide. Th...
Abstract: The aim of the present research was to investigate the usefulness of neural networks (NN) ...
Three techniques were compared for analysis of automatically collected data from the milking parlor....
This paper describes two parts of a continuing research project on developing neural network models ...
The overall objective of this research was to investigate the feasibility of using artificial neural...
Mastitis, one of the most significant diseases in dairy herds, is a highly complex sequence of event...
Bovine mastitis adversely affects the dairy industry around the world. This disease is caused by a ...
This study explored the potential value of in-line composite somatic cell count (ISCC) sensing as a ...
Dairy farmers using automatic milking are able to manage mastitis successfully with the help of mast...
The objective was to develop and validate a clinical mastitis (CM) detection model by means of decis...