Assessing the Welfare of Technicians during Transits to Offshore Wind Farms

IF 1.9 Q3 ENGINEERING, MECHANICAL Vibration Pub Date : 2023-05-28 DOI:10.3390/vibration6020027
Tobenna D. Uzuegbunam, Rodney Forster, T. Williams
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Abstract

Available decision-support tools rarely account for the welfare of technicians in maintenance scheduling for offshore wind farms. This creates uncertainties, especially since current operational limits might make a wind farm accessible but the vibrations from transits might be unacceptable to technicians. We explore technician exposure to vibration in transit based on the levels of discomfort and the likelihood of seasickness occurring on crew transfer vessels (CTVs). Vessel motion monitoring systems deployed on CTVs operating in the North Sea and sea-state data are used in a machine learning (ML) process to model the welfare of technicians based on operational limits applied to modelled proxy variables including composite weighted RMS acceleration (aWRMS) and motion sickness incidence (MSI). The model results revealed poor to moderate performance in predicting the proxies based on selected model evaluation criteria, raising the possibility of more data and relevant variables being needed to improve model performance. Therefore, this research presents a framework for an ML approach towards accounting for the wellbeing of technicians in sailing decisions once the highlighted limitations can be addressed.
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评估技术人员在过渡到海上风电场期间的福利
现有的决策支持工具很少考虑海上风电场维护计划中技术人员的福利。这造成了不确定性,特别是因为目前的运行限制可能会使风电场变得容易进入,但运输产生的振动可能会让技术人员无法接受。我们根据船员转移船(CTV)上的不适程度和晕船的可能性,探讨技术人员在运输过程中暴露于振动的情况。部署在北海作业的CTV上的船舶运动监测系统和海况数据用于机器学习(ML)过程,以根据应用于建模代理变量的操作限制对技术人员的福利进行建模,包括复合加权均方根加速度(aWRMS)和晕动病发生率(MSI)。模型结果显示,根据选定的模型评估标准预测代理的性能较差至中等,这增加了需要更多数据和相关变量来提高模型性能的可能性。因此,本研究为ML方法提供了一个框架,一旦突出的局限性得到解决,该方法就可以在航行决策中考虑技术人员的福祉。
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来源期刊
CiteScore
3.20
自引率
0.00%
发文量
0
审稿时长
10 weeks
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