Litcius/Paper detail

Probabilistic access forecasting for improved offshore operations

Ciaran Gilbert, Jethro Browell, David McMillan

2020International Journal of Forecasting25 citationsDOIOpen Access PDF

Abstract

Improving access is a priority in the offshore wind sector, driven by the opportunity to increase revenues, reduce costs, and improve safety at operational wind farms. This paper describes a novel method for producing probabilistic forecasts of safety-critical access conditions during crew transfers. Methods of generating density forecasts of significant wave height and peak wave period are developed and evaluated. It is found that boosted semi-parametric models outperform those estimated via maximum likelihood, as well as a non-parametric approach. Scenario forecasts of sea-state variables are generated and used as inputs to a data-driven vessel motion model, based on telemetry recorded during 700 crew transfers. This enables the production of probabilistic access forecasts of vessel motion during crew transfer up to 5 days ahead. The above methodology is implemented on a case study at a wind farm off the east coast of the UK.

Topics & Concepts

CrewProbabilistic logicOffshore wind powerSea stateProbabilistic forecastingParametric statisticsRevenueComputer scienceSubmarine pipelineEnvironmental scienceMeteorologyOperations researchAeronauticsWind powerEngineeringBusinessGeographyStatisticsMathematicsFinanceArtificial intelligenceRemote sensingGeotechnical engineeringElectrical engineeringShip Hydrodynamics and ManeuverabilityMaritime Navigation and SafetyMaritime Transport Emissions and Efficiency