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An Integrated Physical-based and Parameter Learning Method for Ship Energy Prediction under Varying Operating Conditions

机译:不同运行条件下船舶能量预测的集成物理基于和参数学习方法

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The efficiency of energy consumption of an engineering system dynamically changes during the its operation when the operational and environmental conditions vary in time. Various methods have been developed to monitor the energy consumption rate and predict the consumption efficiency for a given operating condition. The main challenges to maintain the accuracy of modeling and prediction stem from the great diversity of operational and environmental inputs that affect the energy consumption rate dynamically, as well as the lack of a full understanding of the physical relationship between energy efficiency and operation parameters of the system. Operating condition is a key component in system modeling and state identification in many applications because not only the system parameters, but also the structure and complexity of a model might vary significantly during different operation modes. This paper investigates a novel method that integrates a physicsbased hydrodynamic model and dynamic parameter learning and estimation, using energy consumption monitoring data and operating condition data, in purpose of improving the prediction accuracy of energy consumption. By leveraging the strengths of both the physics-based models and data-driven parameter learning methods, the proposed method is advantageous when the complex system physics is not perfectly known and the performance of system is affected by the environmental operating condition, while abundant monitoring data are available. We demonstrate the model on a ship propulsion system for fuel consumption prediction, which achieves higher prediction accuracy compared with models without operating condition adaption and tuning.
机译:当运营和环境条件随着时间的变化时,工程系统能耗的能耗效率在其运行期间动态地改变。已经开发了各种方法来监测能量消耗率并预测给定的操作条件的消耗效率。维持建模和预测精度的主要挑战与动态影响能量消耗率的巨大多样性,以及缺乏全面了解能源效率与操作参数之间的物理关系系统。操作条件是在许多应用中系统建模和状态识别中的关键组件,因为不仅系统参数,而且模型的结构和复杂性也可能在不同的操作模式下显着变化。本文研究了一种新的方法,其利用能耗监测数据和操作条件数据集成了物理基流模型和动态参数学习和估计的新方法,目的是提高能量消耗的预测精度。通过利用基于物理的模型和数据驱动的参数学习方法的强度,所提出的方法有利的是,当复杂的系统物理没有完全已知并且系统的性能受环境操作条件的影响,而富裕的监测数据可用。我们展示了燃料消耗预测船舶推进系统的模型,这与没有运行条件适应和调整的模型相比,实现更高的预测精度。

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