基于人工神经网络的船舶维修劳动预测

IF 0.5 4区 工程技术 Q4 ENGINEERING, MARINE Journal of Ship Production and Design Pub Date : 2021-10-22 DOI:10.5957/jspd.10200027
P. M. Fruytier, Arun Kr Arun Kr Dev
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引用次数: 1

摘要

船舶维护和修理工作成本估算通常被视为一门“艺术”,它可能会导致造船厂的财务成功或陷入困境。被高级管理层视为专家的评估人员是最有价值的资源之一,尽管如此,也是人力资源。随着时间的推移,评估人员会从错误中吸取教训,并在任期内提高评估水平。当评估人员在没有培养学徒的情况下退休时,造船厂可能会面临同时失去大量专业知识的风险。在一段时间内,这些造船厂很可能会发现,在学习曲线上评估技能的经验非常昂贵。然而,即使是依赖不太先进的信息技术的造船厂,也可能在不知不觉中积累了许多与船舶维护和修理工作有关的宝贵数据。这些造船厂可能忽略了如何通过预测分析将容易获取的知识转化为竞争优势。不仅可以从字面上挖掘这些数据,而且机器学习算法,如人工神经网络(ANN),现在可以通过更快、更便宜的计算能力对其进行快速、初步的估计。需要明确的是,其目的不是取代人工估算器,而是帮助专家在繁忙的时候快速评估是否对特定的项目机会进行投标。在没有估价大师的情况下,学徒也可以在提交投标书之前,对准备好的估价进行快速、廉价的健全性检查。本文中进行的研究基于自当前信息系统实施以来,过去19年中在北美一家造船厂记录的所有船舶维护和维修数据。1277个船舶维护和修理项目的工人每天记录的所有直接带薪工作时间的原始数据提取通过高级数据清理进行了筛选。为了丰富清理后的数据表,随后在内部和外部收集了额外的自变量,以开发训练-测试数据集。最后的657个项目代表了136艘重新组合成八种类型的船只,其中28个其他自变量都可用于训练和测试简单的人工神经网络模型。本条的范围仅限于对完成特定类型船舶的船舶维护和维修项目所需的直接劳动力的估计,劳动力规划和战术定价被认为是维持业务运营最相关的。
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Predicting Ship Maintenance and Repair Labor with Artificial Neural Networks
Ship maintenance and repair work cost estimation is often regarded as an “Art,” which may contribute to the financial success or distress of a shipyard. Regarded as experts by senior management, estimators are among the most valued resources, and nonetheless, human. Over time, estimators learn from mistakes, and get better with tenure at sharpening assessments. When estimators retire without having groomed an apprentice, shipyards may be at risk of losing a lot of know-how, all at once. These shipyards may well find very costly to experience, for a while, estimating skills stepping back on the learning curve. Yet, even shipyards relying on less advanced information technology may have unwittingly accumulated a lot of valuable data relevant to ship maintenance and repair works. These shipyards may overlook how easily accessible knowledge can be turned into a competitive advantage through predictive analytics. Not only can this data be literally mined, but machine learning algorithms, such as Artificial Neural Networks (ANN), can now process it for a speedy and preliminary estimate through faster and cheaper computing power. To be clear, the purpose is not to replace the human estimator but to help the expert quickly assess, when times are busy, whether to bid or not on a specific project opportunity. In the absence of The Master Estimator, an Apprentice may also look for a quick and cheap sanity check of the prepared estimate before submitting a bid. The study carried out in this article is based on all ship maintenance and repair data recorded at a single North American shipyard over the last 19 years since the current information systems were implemented. This raw data extract with all directly paid hours logged daily by workers on 1277 ship maintenance and repair projects was screened through advanced data cleansing. To enrich the cleansed data tables, additional independent variables were subsequently collected internally and externally to develop a training–testing data set. The final 657 projects represent 136 vessels regrouped in eight types, for which 28 other independent variables were all made available for training up to testing simple ANN models. The scope of this article is limited to the estimation of the direct labor required to complete ship maintenance and repair projects on a specific type of vessels for which workforce planning and tactical pricing was deemed the most relevant to keep the business afloat.
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来源期刊
CiteScore
1.10
自引率
0.00%
发文量
19
期刊介绍: Original and timely technical papers addressing problems of shipyard techniques and production of merchant and naval ships appear in this quarterly publication. Since its inception, the Journal of Ship Production and Design (formerly the Journal of Ship Production) has been a forum for peer-reviewed, professionally edited papers from academic and industry sources. As such it has influenced the worldwide development of ship production engineering as a fully qualified professional discipline. The expanded scope seeks papers in additional areas, specifically ship design, including design for production, plus other marine technology topics, such as ship operations, shipping economics, and safety. Each issue contains a well-rounded selection of technical papers relevant to marine professionals.
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