Abstract

This article presents a metocean modelling methodology using a Markov-switching autoregressive model to produce stochastic wind speed and wave height time series, for inclusion in marine risk planning software tools. By generating a large number of stochastic weather series that resemble the variability in key metocean parameters, probabilistic outcomes can be obtained to predict the occurrence of weather windows, delays and subsequent operational durations for specific tasks or offshore construction phases. To cope with the variation in the offshore weather conditions at each project, it is vital that a stochastic weather model is adaptable to seasonal and inter-monthly fluctuations at each site, generating realistic time series to support weather risk assessments. A model selection process is presented for both weather parameters across three locations, and a personnel transfer task is used to contextualise a realistic weather window analysis. Summarising plots demonstrate the validity of the presented methodology and that a small extension improves the adaptability of the approach for sites with strong correlations between wind speed and wave height. It is concluded that the overall methodology can produce suitable wind speed and wave time series for the assessment of marine operations, yet it is recommended that the methodology is applied to other sites and operations, to determine the method’s adaptability to a wide range of offshore locations.

Highlights

  • Metocean models are commonly used to produce data sets for planning, modelling and review of marine operations for a variety of offshore industries

  • The largest singular differences are recorded for height time series (Hs) at UK North East, which has an absolute average percentage variation of 1.62% across all months and it can be noted that the average percentage difference for wave height is greater than wind speed across the three sites

  • This article has presented a metocean modelling methodology using an Markov-switching autoregressive (MS-AR) model with Gaussian innovations to produce stochastic wind speed and wave height time series for inclusion in marine risk planning tools

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Summary

Introduction

Metocean models are commonly used to produce data sets for planning, modelling and review of marine operations for a variety of offshore industries. These models are often employed when there is insufficient recorded data for a specific offshore location. Offshore wind installation costs can account for up to one-third of the overall project cost and a better understanding of the potential delays during marine operations will support developers to reduce the levelised cost of energy (LCOE). Future projects are planned for increasingly remote locations accompanied with challenging weather conditions such as high winds and wave heights that can cause significant disruption to a planned operational schedule, increasing the overall risk profile for installation or operation and maintenance (O&M) campaigns. It is important that marine operations can be scrutinised in advance to ensure the correct planning, resourcing and equipment decisions can be made.[1,2,3]

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