This paper discusses how each explanatory variable affects the possibility of having an emergency repair to people’s home with the help of machine learning. Here, the outcome variable is binary. The aim of this is to determine whether increasing the frequency of routine repairs would decrease the frequency of emergency repairs, and the predicted probability of having an emergency repair based on the variable statuses for each property. Data exploratory is first carried out to understand and simplify the dataset obtained from a Housing Association. Statistical models such as logistic regression, decision tree, random forest, linear discriminant analysis and k-nearest neighbours are then used to fit the model to the dataset. We also i...
This thesis addresses the challenge of predicting the required spare parts for fault repair tasks in...
Although advanced machine learning algorithms are predominantly used for predicting outcomes in many...
The use of computational analysis to predict building egress during emergency situations has been st...
Complex production systems may count thousands of parts and components, subjected to multiple physic...
Managing building defects in the residential environment is an important social issue in South Korea...
The focus of this final year project is on the maintenance of transformers. Maintenance is part of d...
Modeling and predicting failures in the field of predictive maintenance is a challenging task. An imp...
Unreinforced masonry (URM) structures comprise a majority of the global built heritage. The masonry ...
In this thesis, alternative machine learning techniques have been used to test if these perform bett...
In finance and management, insurance is a product that tends to reduce or eliminate in totality or p...
In public transportation, the motor pool often consists of various different vehicles bought over a ...
Industrial electrical machine maintenance logs pertinent information, such as fault causality and ea...
The work presented in this thesis is part of a large research and development project on condition-b...
The unsatisfactory performance of light structures founded on expansive soils subject to seasonal mo...
Predictive maintenance is a concept linked to Industry 4.0, the fourth industrial revolution that mo...
This thesis addresses the challenge of predicting the required spare parts for fault repair tasks in...
Although advanced machine learning algorithms are predominantly used for predicting outcomes in many...
The use of computational analysis to predict building egress during emergency situations has been st...
Complex production systems may count thousands of parts and components, subjected to multiple physic...
Managing building defects in the residential environment is an important social issue in South Korea...
The focus of this final year project is on the maintenance of transformers. Maintenance is part of d...
Modeling and predicting failures in the field of predictive maintenance is a challenging task. An imp...
Unreinforced masonry (URM) structures comprise a majority of the global built heritage. The masonry ...
In this thesis, alternative machine learning techniques have been used to test if these perform bett...
In finance and management, insurance is a product that tends to reduce or eliminate in totality or p...
In public transportation, the motor pool often consists of various different vehicles bought over a ...
Industrial electrical machine maintenance logs pertinent information, such as fault causality and ea...
The work presented in this thesis is part of a large research and development project on condition-b...
The unsatisfactory performance of light structures founded on expansive soils subject to seasonal mo...
Predictive maintenance is a concept linked to Industry 4.0, the fourth industrial revolution that mo...
This thesis addresses the challenge of predicting the required spare parts for fault repair tasks in...
Although advanced machine learning algorithms are predominantly used for predicting outcomes in many...
The use of computational analysis to predict building egress during emergency situations has been st...