评估海上可操作性计算中对人工数据的需求

IF 4.3 2区 工程技术 Q1 ENGINEERING, OCEAN
Øystein Døskeland , Svein Sævik , Zhen Gao , Petter Moen
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引用次数: 0

摘要

海上作业经常因天气条件超出作业限制而延误。虽然这样的延迟是预料之中的,但在项目的早期估计它们是具有挑战性的。准确的估算有助于制定投标合同、规划船舶时间表、优化作业顺序、降低商业风险和成本。以前曾提出产生人工的但具有代表性的时间序列数据的模型,以增加对天气等待时间估计的统计置信度。在本研究中,研究了两种依赖于人工生成数据的现有方法,即马尔可夫链模型和VAR(向量自回归)模型,并与直接依赖于48年NORA3预测数据的方法进行了比较。人工数据带来的建模误差很难量化,而且会随着时间表和季节的不同而变化。对于可能包含在投资组合策略中的项目的成本估算,不推荐使用这样的方法。相反,天气等待时间可以直接从预报数据中计算出来,并且可以使用Bootstrap方法量化置信区间,该方法被发现比分析方法表现得更好。然而,如果花费了足够的精力来验证结果,那么在风险和不确定性特别高的情况下,例如在北海地区的秋末和冬季进行的作业,使用人工数据可能会提供信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessing the need for artificial data in offshore operability calculations
Offshore operations are frequently delayed by weather conditions that exceed operational limits. While such delays are expected, it is challenging to estimate them at an early point in a project. Accurate estimates are beneficial for bidding contracts, planning vessel schedules, optimizing operation sequences, and reducing commercial risk and costs. Models that generate artificial but representative time series data have previously been proposed to increase the statistical confidence in weather waiting estimates. In this study, two existing methods that rely on artificially generated data, a Markov Chain model and a VAR (Vector Auto-Regressive) model, were studied and compared against a method that directly relies on 48 years of NORA3 hindcast data. The modelling errors that are introduced with the artificial data are difficult to quantify and are found to vary with different schedules and the season. Such methods are not recommended for cost estimation on projects that may be included in a portfolio strategy. Instead, the weather waiting may be calculated directly from hindcast data, and the confidence intervals may be quantified using the Bootstrap Method, which was found to perform better than analytical alternatives. However, if sufficient effort is spent to validate the results, the use of artificial data may be informative for cases where the stakes and the uncertainties are particularly high, such as for operations performed during the late fall and winter season in the North Sea region.
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来源期刊
Applied Ocean Research
Applied Ocean Research 地学-工程:大洋
CiteScore
8.70
自引率
7.00%
发文量
316
审稿时长
59 days
期刊介绍: The aim of Applied Ocean Research is to encourage the submission of papers that advance the state of knowledge in a range of topics relevant to ocean engineering.
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