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An artificial neural network based decision support system for energy efficient ship operations

机译:基于人工神经网络的船舶节能运营决策支持系统

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Reducing fuel consumption of ships against volatile fuel prices and greenhouse gas emissions resulted from international shipping are the challenges that the industry faces today. The potential for fuel savings is possible for new builds, as well as for existing ships through increased energy efficiency measures; technical and operational respectively. The limitations of implementing technical measures increase the potential of operational measures for energy efficient ship operations. Ship owners and operators need to rationalise their energy use and produce energy efficient solutions. Reducing the speed of the ship is the most efficient method in terms of fuel economy and environmental impact. The aim of this paper is twofold: (i) predict ship fuel consumption for various operational conditions through an inexact method, Artificial Neural Network ANN; (ii) develop a decision support system (DSS) employing ANN-based fuel prediction model to be used on-board ships on a real time basis for energy efficient ship operations. The fuel prediction model uses operating data - 'Noon Data' - which provides information on a ship's daily fuel consumption. The parameters considered for fuel prediction are ship speed, revolutions per minute (RPM), mean draft, trim, cargo quantity on board, wind and sea effects, in which output data of ANN is fuel consumption. The performance of the ANN is compared with multiple regression analysis (MR), a widely used surface fitting method, and its superiority is confirmed. The developed DSS is exemplified with two scenarios, and it can be concluded that it has a promising potential to provide strategic approach when ship operators have to make their decisions at an operational level considering both the economic and environmental aspects. (c) 2015 Elsevier Ltd. All rights reserved.
机译:降低船舶的油耗以应对波动的燃油价格和国际运输带来的温室气体排放,是该行业当今面临的挑战。通过增加能效措施,新造船以及现有船舶都可能节省燃料。技术和运营。实施技术措施的局限性增加了用于节能船舶运营的运营措施的潜力。船东和运营人需要合理化能源使用并产生节能解决方案。就燃油经济性和环境影响而言,降低船速是最有效的方法。本文的目的是双重的:(i)通过一种不精确的方法,即人工神经网络人工神经网络来预测各种工况下的船舶燃油消耗; (ii)开发基于ANN的燃料预测模型的决策支持系统(DSS),以实时在船上使用以提高船舶能效。燃油预测模型使用运行数据-“正午数据”-提供有关船舶每日燃油消耗的信息。用于燃料预测的参数包括船速,每分钟转数(RPM),平均吃水,纵倾,船上货物数量,风和海影响,其中ANN的输出数据为燃料消耗。将ANN的性能与广泛使用的表面拟合方法多元回归分析(MR)进行比较,并证实了其优越性。所开发的DSS可以通过两种情况进行举例说明,并且可以得出结论,当船舶经营人必须在经济和环境两方面进行决策时,它具有提供战略方法的潜力。 (c)2015 Elsevier Ltd.保留所有权利。

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