Accurate predictions of fuel consumption are an essential tool in the pricing of forward cargo contracts. This thesis develops a predictive model for fuel consumption using noon report data from Handysize and Supramax vessels. In the process, we employ a wide selection of machine learning algorithms, including decision trees, shrinkage models, and an artificial neural network. Furthermore, we replace all weather and oceanographic variables with third-party data. The replacement ensures the model is independent of noon report weather data and allows us to generate predictions using historical weather conditions from the last decades. The trained models are used to study the seasonal patterns of weather margins for two case routes. Estimated ...
Internship Report presented as the partial requirement for obtaining a Master's degree in Data Scien...
With the oncoming energy crisis in fossil fuels, the study of alternative fuels has become a topic o...
The purpose of this study was to design and implement a Model Predictive Control based control syste...
Alternative fuels and technologies for truckload carriers can provide significant environmental and ...
There has been a growing concern in recent years about the effects of anthropogenic noise due to pil...
Airlines are in desperate need of reliable methods and materials to save and transform traditional g...
The Internet of Things (IoT) is reshaping our world. Soon our world will be based on smart technolog...
This research has developed a novel long term domestic energy stock model of owneroccupied dwellings...
A survey performed over existing two pilot-scale and two full-scale RO desalination facilities to st...
This paper forecasts electricity retail sales using monthly data by sectors from January 2001 throug...
Abstract Power system load forecasting refers to the study or uses a mathematical method to process ...
Nuclear microreactors are an attractive technological concept that combine the advantages of lower c...
This work looks at the impact on high-resolution analyses and forecasts of several non-conventional ...
Machine learning algorithms are used in the transportation field to successfully identify patterns a...
To advance the design of hypersonic vehicles, high-fidelity multi-physics CFD is used to characteriz...
Internship Report presented as the partial requirement for obtaining a Master's degree in Data Scien...
With the oncoming energy crisis in fossil fuels, the study of alternative fuels has become a topic o...
The purpose of this study was to design and implement a Model Predictive Control based control syste...
Alternative fuels and technologies for truckload carriers can provide significant environmental and ...
There has been a growing concern in recent years about the effects of anthropogenic noise due to pil...
Airlines are in desperate need of reliable methods and materials to save and transform traditional g...
The Internet of Things (IoT) is reshaping our world. Soon our world will be based on smart technolog...
This research has developed a novel long term domestic energy stock model of owneroccupied dwellings...
A survey performed over existing two pilot-scale and two full-scale RO desalination facilities to st...
This paper forecasts electricity retail sales using monthly data by sectors from January 2001 throug...
Abstract Power system load forecasting refers to the study or uses a mathematical method to process ...
Nuclear microreactors are an attractive technological concept that combine the advantages of lower c...
This work looks at the impact on high-resolution analyses and forecasts of several non-conventional ...
Machine learning algorithms are used in the transportation field to successfully identify patterns a...
To advance the design of hypersonic vehicles, high-fidelity multi-physics CFD is used to characteriz...
Internship Report presented as the partial requirement for obtaining a Master's degree in Data Scien...
With the oncoming energy crisis in fossil fuels, the study of alternative fuels has become a topic o...
The purpose of this study was to design and implement a Model Predictive Control based control syste...