A framework for the application of shipboard energy efficiency monitoring, operational data prediction and reporting

IF 0.5 Q4 TRANSPORTATION
Aleksandar Vorkapic, Radoslav Radonja, Sanda Martinčić-Ipšić
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引用次数: 1

Abstract

In this study, a framework for the application of shipboard energy efficiency monitoring, operational data prediction and reporting based on the ship’s measurement data and meteorological and oceanographic data by the geographic position and time of navigation is presented. General system theory in synergy with machine learning (ML) is used to construct the framework. The general system theory is utilized for identification and transition of components of the proposed framework of energy efficiency monitoring and prediction. A systematic investigation of the internal and external environment is conducted, and the definition of information flow between the individual components provided. Then, the external opportunities and threats that the system faces were opposed to internal strengths and weaknesses to formulate strategies in which weaknesses and threats of the system are offset by existing strengths and probabilities. After assessing the results of the strengths, weaknesses, opportunities and threats (SWOT) and threats, opportunities, weaknesses and strengths (TOWS) analysis, it can be concluded that the proposed framework is feasible and widely applicable in the maritime industry. The novelty is that the proposed framework is using on-board data processing and is integrated into the existing ship monitoring, decision-making and reporting system, thus satisfying the prerequisites for simple application.
船用能效监测、运行数据预测和报告应用框架
在这项研究中,根据船舶的测量数据以及航行的地理位置和时间的气象和海洋学数据,提出了船上能效监测、运行数据预测和报告的应用框架。该框架采用了与机器学习(ML)协同的通用系统理论。通用系统理论用于识别和转换所提出的能效监测和预测框架的组成部分。对内部和外部环境进行了系统的调查,并提供了各个组件之间信息流的定义。然后,将系统面临的外部机会和威胁与内部优势和弱点进行对比,以制定策略,使系统的弱点和威胁被现有的优势和概率所抵消。在评估了优势、劣势、机会和威胁(SWOT)以及威胁、机会、劣势和优势(TOWS)分析的结果后,可以得出结论,所提出的框架是可行的,并在海事行业中广泛适用。新颖之处在于,所提出的框架使用了船上数据处理,并集成到现有的船舶监测、决策和报告系统中,从而满足了简单应用的先决条件。
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来源期刊
CiteScore
1.50
自引率
0.00%
发文量
19
审稿时长
8 weeks
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