Enhancing early-stage energy consumption predictions using dynamic operational voyage data: A grey-box modelling investigation

IF 2.3 3区 工程技术 Q2 ENGINEERING, MARINE
Kirsten Odendaal , Aaron Alkemade , Austin A. Kana
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引用次数: 0

Abstract

The adverse human contribution to global climate change has forced the yachting industry to acknowledge the need to reduce its environmental impact due to the client's increasing pressure and potential future regulations to limit the ecological effects. Unfortunately, current real-world data presents a significant disparity between predicted and actual gathered energy consumption results. Thus, this research aims to develop an approach to accurately predict total dynamic Energy Consumption (EC) using real operation voyage data for the improved early-stage design of future yachts. A Grey-Box Modelling (GBM) solution combines: physics-based White-Box Models (WBM); and Black-Box Model (BBM) artificial neural networks to provide estimations with high accuracy and improved extrapolation capacity. The study utilizes ten months of onboard continuous monitoring data, hindcasted weather, and voyage information from a Feadship fleet yacht. Upon applying a sequential modelling methodology, predictions are compared between the three model categories, indicating propulsion and auxiliary estimates fall within 3% and 7% error of operational conditions. The study is then continued using external range datasets to evaluate the extrapolation potential. While GBM improvements are seen over the BBM, limitations were directly related to the strength between dynamic WBM input-output correlations. Ultimately, GBM's have the potential to improve both accuracy and extrapolation ability over existing WBM and BBM's; however, much is dependent on the strength of the input-output relationships.

使用动态操作航次数据增强早期能源消耗预测:灰盒模型调查
人类对全球气候变化的不利影响迫使游艇行业认识到,由于客户日益增加的压力和未来限制生态影响的潜在法规,需要减少对环境的影响。不幸的是,目前的真实世界数据在预测和实际收集的能源消耗结果之间存在显著差异。因此,本研究旨在开发一种利用实际航行数据准确预测总动态能耗(EC)的方法,以改进未来游艇的早期设计。灰盒建模(GBM)解决方案结合了:基于物理的白盒模型(WBM);和黑盒模型(BBM)人工神经网络,提供高精度的估计和改进的外推能力。这项研究利用了10个月的船上连续监测数据、天气预报和来自一艘船队游艇的航行信息。在应用顺序建模方法后,将三种模型类别之间的预测进行比较,表明推进和辅助估计的运行条件误差在3%和7%之间。然后继续使用外部范围数据集来评估外推的潜力。虽然在BBM上可以看到GBM的改进,但限制与动态WBM输入输出相关性之间的强度直接相关。最终,与现有的WBM和BBM相比,GBM具有提高准确性和外推能力的潜力;然而,这在很大程度上取决于投入产出关系的强度。
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来源期刊
CiteScore
4.90
自引率
4.50%
发文量
62
审稿时长
12 months
期刊介绍: International Journal of Naval Architecture and Ocean Engineering provides a forum for engineers and scientists from a wide range of disciplines to present and discuss various phenomena in the utilization and preservation of ocean environment. Without being limited by the traditional categorization, it is encouraged to present advanced technology development and scientific research, as long as they are aimed for more and better human engagement with ocean environment. Topics include, but not limited to: marine hydrodynamics; structural mechanics; marine propulsion system; design methodology & practice; production technology; system dynamics & control; marine equipment technology; materials science; underwater acoustics; ocean remote sensing; and information technology related to ship and marine systems; ocean energy systems; marine environmental engineering; maritime safety engineering; polar & arctic engineering; coastal & port engineering; subsea engineering; and specialized watercraft engineering.
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