Extreme weather events can result in loss of life, environmental pollution and major damage to vessels caught in their path. Many methods to characterise this risk have been proposed, however, they typically utilise deterministic thresholds of wind and wave limits which might not accurately reflect risk. To address this limitation, we investigate the potential of machine learning algorithms to quantify the relative likelihood of an incident during the US Atlantic hurricane season. By training an algorithm on vessel traffic, weather and historical casualty data, accident candidates can be identified from historic vessel tracks. Amongst the various methods tested, Support Vector Machines showed good performance with Recall at 95% and Accuracy...
Collision accidents may lead to significant asset damage and human casualties. This paper introduces...
The intrinsic complexity of the flooding process on ships renders accurate quantification of the flo...
Scientific research problem – what are the theoretical and practical assumptions to create machine l...
Extreme weather events can result in loss of life, environmental pollution and major damage to vesse...
Extreme weather events such as hurricanes are a significant hazard to shipping. We show that traditi...
Managing navigational safety is a key responsibility of coastal states. Predicting and measuring the...
Within the last thirty years, the range and complexity of methodologies proposed to assess maritime ...
Identifying and assessing the likelihood and consequences of maritime accidents has been a key focus...
Shipping is an essential component of the global economy, but every year accidents result in signifi...
Every year, maritime accidents cause severe damages not only to humans but also to maritime instrume...
To manage and pre-empt incident risks effectively by maritime stakeholders, predicted incident proba...
Within the last thirty years, the range and complexity of methodologies proposed to assess maritime ...
Within the last thirty years, the range and complexity of methodologies proposed to assess maritime ...
Vessel Traffic Management Systems (VTMS) and Vessel Traffic Monitoring Information Systems (VTMIS) h...
Maritime Domain Awareness is critical for protecting sea lanes, ports, harbors, offshore structures ...
Collision accidents may lead to significant asset damage and human casualties. This paper introduces...
The intrinsic complexity of the flooding process on ships renders accurate quantification of the flo...
Scientific research problem – what are the theoretical and practical assumptions to create machine l...
Extreme weather events can result in loss of life, environmental pollution and major damage to vesse...
Extreme weather events such as hurricanes are a significant hazard to shipping. We show that traditi...
Managing navigational safety is a key responsibility of coastal states. Predicting and measuring the...
Within the last thirty years, the range and complexity of methodologies proposed to assess maritime ...
Identifying and assessing the likelihood and consequences of maritime accidents has been a key focus...
Shipping is an essential component of the global economy, but every year accidents result in signifi...
Every year, maritime accidents cause severe damages not only to humans but also to maritime instrume...
To manage and pre-empt incident risks effectively by maritime stakeholders, predicted incident proba...
Within the last thirty years, the range and complexity of methodologies proposed to assess maritime ...
Within the last thirty years, the range and complexity of methodologies proposed to assess maritime ...
Vessel Traffic Management Systems (VTMS) and Vessel Traffic Monitoring Information Systems (VTMIS) h...
Maritime Domain Awareness is critical for protecting sea lanes, ports, harbors, offshore structures ...
Collision accidents may lead to significant asset damage and human casualties. This paper introduces...
The intrinsic complexity of the flooding process on ships renders accurate quantification of the flo...
Scientific research problem – what are the theoretical and practical assumptions to create machine l...