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Realising advanced risk assessment of vessel traffic flows near offshore wind farms

机译:实现海上风电场附近船舶交通流量的先进风险评估

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摘要

Offshore wind farms (OWFs) are relatively new installations at sea. Accident records related to vessel collisions with OWFs are insufficient to support a full quantitative risk analysis using traditional probabilistic approaches. This paper aims to develop a semi-qualitative risk model to assess the vessel-turbine collision risks by incorporating Bayesian networks (BN) with evidential reasoning (ER) approaches. First, a BN is trained based on Automatic Identification Systems (AIS) data to characterise real vessel traffic flows, including the detailed information and relationships between traffic flow parameters. Secondly, through synthesising expert judgements by ER, five risk factors influencing the probability and consequence of vessel-turbine collisions are identified (incl. the associated conditional probabilities) in the established BN. Finally, the updated BN with ER input is tested through ten real scenarios and validated by processing a validity framework. This paper pioneers the use of multi-data-driven BNs to characterise traffic flows and assess vessel-turbine collision risk for navigational safety assurance near OWFs. The research findings provide empirical evidence of using ER to supplement BN subjective data to advance its applications in risk analysis.
机译:海上风电场(OWFS)在海上是相对较新的安装。与OWF的船只碰撞有关的事故记录不足以支持使用传统概率方法进行全面的量化风险分析。本文旨在开发半定性风险模型,以通过将贝叶斯网络(BN)与证据推理(ER)方法纳入贝叶斯网络(BN)来评估船舶涡轮碰撞风险。首先,基于自动识别系统(AIS)数据训练BN,以表征真实船只流量流量,包括交通流参数之间的详细信息和关系。其次,通过综合ER的专家判断,鉴定了建立的BN中的五个影响血管碰撞概率和后果的危险因素。最后,通过十个实际场景测试具有ER输入的更新的BN,并通过处理有效框架来验证。本文开拓使用多数据驱动的BNS来表征交通流量,并评估OWF附近导航安全保证的船舶涡轮碰撞风险。研究结果提供了使用ER来补充BN主观数据的经验证据,以提高其在风险分析中的应用。

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