论文标题
海洋船只的等级贝叶斯推进能力模型
Hierarchical Bayesian propulsion power models for marine vessels
论文作者
论文摘要
评估海洋交通燃料的幅度是一项艰巨的任务。可以通过船只的操作方式来减少消耗量,以提高成本效率和降低的二氧化碳排放量。在这两个任务中,用于预测船舶消耗的数学模型在这两个任务中都扮演着核心角色。如今,许多船只配备了数据收集系统,这可以对消费模型进行基于数据的校准。通常,仅使用从相关船只收集的数据独立执行此校准程序。在本文中,我们演示了一种分层的贝叶斯建模方法,在该方法中,我们将单个模型拟合在许多血管上,并假设相同类型和相似特征(例如容器大小)的血管参数可能彼此接近。这种方法的好处是两个方面。 1)我们可以使用来自类似船只的数据借用有关船舶特定数据不充分告知参数的信息,2)我们可以使用最终的分层模型来预测我们没有任何数据的船只的行为,仅基于其特征。在本文中,我们讨论了基本概念,并提出了模型的第一个简单版本。我们将Stan统计建模工具应用于模型拟合,并使用通过广泛使用的商业Eniram平台收集的64艘游轮的真实数据。通过使用贝叶斯统计方法,我们也获得了模型预测的不确定性。将模型的预测准确性与现有的无数据建模方法进行了比较。
Assessing the magnitude of fuel consumption of marine traffic is a challenging task. The consumption can be reduced by the ways the vessels are operated, to achieve both improved cost efficiency and reduced CO2 emissions. Mathematical models for predicting ships' consumption are in a central role in both of these tasks. Nowadays, many ships are equipped with data collection systems, which enable data-based calibration of the consumption models. Typically this calibration procedure is carried out independently for each particular ship, using only data collected from the ship in question. In this paper, we demonstrate a hierarchical Bayesian modeling approach, where we fit a single model over many vessels, with the assumption that the parameters of vessels of same type and similar characteristics (e.g. vessel size) are likely close to each other. The benefits of such an approach are two-fold; 1) we can borrow information about parameters that are not well informed by the vessel-specific data using data from similar ships, and 2) we can use the final hierarchical model to predict the behavior of a vessel from which we don't have any data, based only on its characteristics. In this paper, we discuss the basic concept and present a first simple version of the model. We apply the Stan statistical modeling tool for the model fitting and use real data from 64 cruise ships collected via the widely used commercial Eniram platform. By using Bayesian statistical methods we obtain uncertainties for the model predictions, too. The prediction accuracy of the model is compared to an existing data-free modeling approach.