Integrated Ship Energy Flowchart: A digital twin to mitigate GHG emissions

Elias Elias Yfantis, Constantina Ioannou, A. Paradeisiotis
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引用次数: 1

Abstract

The alarming rate of climate change accentuates the need to reduce greenhouse gas (GHG) emissions produced from anthropogenic activities and consequently the consumption of fossil fuels. The transportation sector is one of the most energy-demanding activities, consisting around 27% of the global primary energy demand and one of the major contributors of GHG emissions to the atmosphere, while shipping transportation accounts for nearly 12% of its CO2 emissions. Decarbonization is vital for emission mitigation using innovative technologies, policies, and incentives at a local and international level. In this context, the presented Integrated Ship Energy Flowchart (ISEF), aims to create a digital twin of a ship and carry out deterministic calculations, such as engine power requirements and by extension fuel consumption and emissions, by modelling the various components of a ship’s energy flow. Most modeling approaches depend on tracking data from automatic identification systems (AIS) and commercial vessel databases, accompanied with prohibitive costs for many, as well as missing vessel characteristics. ISEF, on the other hand, aims to fill in the gap in case of missing or costly to obtain data while maintaining the flexibility to utilize field data if available. This is done by providing representative vessel characteristics, detailed engine modeling and simulating components such as environmental conditions (sea-state, wind). At the same time, ISEF develops a library of vessel data including ship particulars, engine and route information among others. Thus, it is also suitable for the validation of tracking information and machine learning or other deterministic algorithms. Additionally, this library will enable the development of a statistically representative ship describing the international fleet. This will therefore improve projection algorithms utilized in calculations and aid the evaluation of mitigation options regarding decarbonisation in terms of the overall fleet. Such a model also enables the investigation of alternative fuels and fuel mixtures, route optimization, and inclusion of cold ironing amongst others. The current objectives include the validation of the core modelling implementation via comparisons with available raw data to serve as a reference case and build the necessary libraries. Therefore, a case study of a specific ship utilizing real navigational data will be used to demonstrate the capabilities of the algorithm.
综合船舶能源流程图:减少温室气体排放的数字孪生
气候变化的速度令人震惊,因此需要减少人为活动产生的温室气体排放,从而减少化石燃料的消耗。交通运输部门是能源需求最大的活动之一,占全球一次能源需求的27%左右,是大气中温室气体排放的主要来源之一,而航运运输占二氧化碳排放量的近12%。脱碳对于利用创新技术、政策和激励措施在地方和国际一级减缓排放至关重要。在此背景下,本文提出的综合船舶能量流程图(ISEF)旨在创建船舶的数字孪生,并通过对船舶能量流的各个组成部分进行建模,进行确定性计算,例如发动机功率需求以及扩展后的燃料消耗和排放。大多数建模方法依赖于来自自动识别系统(AIS)和商业船舶数据库的跟踪数据,这对许多人来说伴随着高昂的成本,以及缺少船舶特征。另一方面,ISEF的目标是在丢失数据或获取数据代价高昂的情况下填补空白,同时保持可用时利用现场数据的灵活性。这是通过提供具有代表性的船舶特性、详细的发动机建模和模拟环境条件(海况、风)等组件来实现的。同时,ISEF开发了一个船舶数据库,包括船舶细节、发动机和航线信息等。因此,它也适用于跟踪信息和机器学习或其他确定性算法的验证。此外,该库将有助于开发统计代表性船舶,描述国际船队。因此,这将改进计算中使用的预测算法,并有助于评估整个船队脱碳的缓解方案。这样的模型还可以用于研究替代燃料和燃料混合物、路线优化以及包括冷熨烫在内的其他问题。当前的目标包括通过与可用的原始数据进行比较来验证核心建模实现,以作为参考案例并构建必要的库。因此,本文将利用实际导航数据对一艘特定船舶进行案例研究,以演示该算法的功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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