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Energy-efficient shipping: An application of big data analysis for optimizing engine speed of inland ships considering multiple environmental factors

机译:节能航运:大数据分析在考虑多种环境因素的情况下优化内陆船舶发动机转速的应用

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摘要

Energy efficiency of inland ships is significantly influenced by navigational environment, including wind speed and direction as well as water depth and speed. The complexity of the inland navigational environment makes it rather difficult to determine the optimal speeds under different environmental conditions to achieve the best energy efficiency. Route division according to the characteristics of these environmental factors could provide a good solution for the optimization of ship engine speed under different navigational environments. In this paper, the distributed parallel k-means clustering algorithm is adopted to achieve an elaborate route division by analyzing the corresponding environmental factors based on a self-developed big data analytics platform. Subsequently, a ship energy efficiency optimization model considering multiple environmental factors is established through analyzing the energy transfer among hull, propeller and main engine. Then, decisions are made concerning the optimal engine speeds in different segments along the path. Finally, a case study on the Yangtze River is performed to validate the present optimization method. The results show that the proposed method can effectively reduce energy consumption and CO2 emissions of ships.
机译:内陆船舶的能源效率受航行环境的影响很大,包括风速和方向以及水深和速度。内陆航行环境的复杂性使得很难确定不同环境条件下的最佳航速以实现最佳能源效率。根据这些环境因素的特征进行航路划分,可以为不同航行环境下船舶发动机转速的优化提供良好的解决方案。本文采用分布式并行k-means聚类算法,通过自行开发的大数据分析平台,通过分析相应的环境因素,实现了精细的路由划分。随后,通过分析船体,螺旋桨和主机之间的能量传递,建立了考虑多种环境因素的船舶能效优化模型。然后,做出关于沿路径的不同部分中的最佳发动机速度的决策。最后,以长江为例,验证了目前的优化方法。结果表明,该方法可以有效降低船舶能耗和二氧化碳排放量。

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