One of the main challenges in the adoption of artificial intelligence-based tools, such as integrated decision support systems, is the complexities of their application. This study aimed to define the relevant parameters that can be used as indicators for real-time detection of heat stress and subclinical mastitis in dairy cows. Moreover, this study aimed to demonstrate the use of a developed data-mining hub as an artificial intelligence-based tool that integrates the defined relevant information (parameters or traits) in accurately identifying the condition of the cow. A comprehensive theoretical framework of the data-mining hub is demonstrated, the selection of the parameters that were used for the data-mining hub is listed, and the relev...
Bovine mastitis is one of the most important economic and health issues in dairy farms. Data collect...
Sickness behaviour is characterised by a lethargic state during which the animal reduces its activit...
ABSTRACT This study was conducted to compare predictive performances of different data-mining algori...
Increased global temperatures and climatic anomalies, such as heatwaves, as a product of climate cha...
Mastitis, one of the most significant diseases in dairy herds, is a highly complex sequence of event...
peer reviewedDairy cows have various strategies for dealing with heat stress, including a change in ...
The recent boom in Artificial Intelligence (AI) and intelligent decision-support systems has revolut...
ArticleMastitis is an important problem, while I guess AI is a possible solution to detect subclinic...
Dairy farmers using automatic milking are able to manage mastitis successfully with the help of mast...
Mastitis, one of the most significant diseases in dairy herds, is a highly complex sequence of event...
Mastitis in dairy cattle is the most expensive disease in the dairy industry. It poses a significant...
When cows are milked with an automatic milking system (AMS), clinical mastitis (CM) cannot be detect...
Our objective was to use data mining to develop and validate a detection model for clinical mastitis...
This report provides an overview of the strategies for data management and data analysis developed w...
This study was developed within the EIT Food European project DAIRYSUST “Big data and advanced analy...
Bovine mastitis is one of the most important economic and health issues in dairy farms. Data collect...
Sickness behaviour is characterised by a lethargic state during which the animal reduces its activit...
ABSTRACT This study was conducted to compare predictive performances of different data-mining algori...
Increased global temperatures and climatic anomalies, such as heatwaves, as a product of climate cha...
Mastitis, one of the most significant diseases in dairy herds, is a highly complex sequence of event...
peer reviewedDairy cows have various strategies for dealing with heat stress, including a change in ...
The recent boom in Artificial Intelligence (AI) and intelligent decision-support systems has revolut...
ArticleMastitis is an important problem, while I guess AI is a possible solution to detect subclinic...
Dairy farmers using automatic milking are able to manage mastitis successfully with the help of mast...
Mastitis, one of the most significant diseases in dairy herds, is a highly complex sequence of event...
Mastitis in dairy cattle is the most expensive disease in the dairy industry. It poses a significant...
When cows are milked with an automatic milking system (AMS), clinical mastitis (CM) cannot be detect...
Our objective was to use data mining to develop and validate a detection model for clinical mastitis...
This report provides an overview of the strategies for data management and data analysis developed w...
This study was developed within the EIT Food European project DAIRYSUST “Big data and advanced analy...
Bovine mastitis is one of the most important economic and health issues in dairy farms. Data collect...
Sickness behaviour is characterised by a lethargic state during which the animal reduces its activit...
ABSTRACT This study was conducted to compare predictive performances of different data-mining algori...