论文标题
通过CRBMS提高有关丢失数据的海上交通排放估算
Improving Maritime Traffic Emission Estimations on Missing Data with CRBMs
论文作者
论文摘要
海上交通排放是政府的主要问题,因为它们严重影响了沿海城市的空气质量。船舶使用自动识别系统(AIS)在其他功能中连续报告位置和速度,因此,如果将其与发动机数据结合使用,则适用于该数据用于估计排放。但是,重要的船舶特征通常不准确或缺失。最先进的复杂系统,例如巴塞罗那超级计算中心的Caliope,用于建模空气质量。这些系统可以从基于AIS的排放模型中受益,因为它们在定位污染方面非常精确。不幸的是,这些模型对缺失或损坏的数据敏感,因此它们需要数据策划技术以显着提高估计准确性。在这项工作中,我们提出了一种使用条件限制的玻尔兹曼机器(CRBMS)以及机器学习方法来治疗船只数据的方法,以提高传递给排放模型的数据的质量。结果表明,我们可以改进提议涵盖缺少数据的默认方法。在我们的结果中,我们观察到,使用我们的方法,模型提高了它们的准确性,以检测其他无法检测到的排放。特别是,我们使用了西班牙港口管理局提供的AIS数据的真实数据集,以估计鉴于我们的方法,该模型能够检测出45%的其他排放物,这些排放量的其他排放量,代表巴塞罗那每周152吨污染物,并提出了可以增强发射模型的新功能。
Maritime traffic emissions are a major concern to governments as they heavily impact the Air Quality in coastal cities. Ships use the Automatic Identification System (AIS) to continuously report position and speed among other features, and therefore this data is suitable to be used to estimate emissions, if it is combined with engine data. However, important ship features are often inaccurate or missing. State-of-the-art complex systems, like CALIOPE at the Barcelona Supercomputing Center, are used to model Air Quality. These systems can benefit from AIS based emission models as they are very precise in positioning the pollution. Unfortunately, these models are sensitive to missing or corrupted data, and therefore they need data curation techniques to significantly improve the estimation accuracy. In this work, we propose a methodology for treating ship data using Conditional Restricted Boltzmann Machines (CRBMs) plus machine learning methods to improve the quality of data passed to emission models. Results show that we can improve the default methods proposed to cover missing data. In our results, we observed that using our method the models boosted their accuracy to detect otherwise undetectable emissions. In particular, we used a real data-set of AIS data, provided by the Spanish Port Authority, to estimate that thanks to our method, the model was able to detect 45% of additional emissions, of additional emissions, representing 152 tonnes of pollutants per week in Barcelona and propose new features that may enhance emission modeling.