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Machine Learning Methodology for Management of Shipbuilding Master Data

Cited 14 time in Web of Science Cited 19 time in Scopus
Authors

Jeong, Ju Hyeon; Woo, Jong Hun; Park, JungGoo

Issue Date
2020-01
Publisher
대한조선학회
Citation
International Journal of Naval Architecture and Ocean Engineering, Vol.12, pp.428-439
Abstract
The continuous development of information and communication technologies has resulted in an exponential increase in data. Consequently, technologies related to data analysis are growing in importance. The shipbuilding industry has high production uncertainty and variability, which has created an urgent need for data analysis techniques, such as machine learning. In particular, the industry cannot effectively respond to changes in the production-related standard time information systems, such as the basic cycle time and lead time. Improvement measures are necessary to enable the industry to respond swiftly to changes in the production environment. In this study, the lead times for fabrication, assembly of ship block, spool fabrication and painting were predicted using machine learning technology to propose a new management method for the process lead time using a master data system for the time element in the production data. Data preprocessing was performed in various ways using R and Python, which are open source programming languages, and process variables were selected considering their relationships with the lead time through correlation analysis and analysis of variables. Various machine learning, deep learning, and ensemble learning algorithms were applied to create the lead time prediction models. In addition, the applicability of the proposed machine learning methodology to standard work hour prediction was verified by evaluating the prediction models using the evaluation criteria, such as the Mean Absolute Percentage Error (MAPE) and Root Mean Squared Logarithmic Error (RMSLE). (C) 2020 Society of Naval Architects of Korea. Production and hosting by Elsevier B.V.
ISSN
2092-6782
URI
https://hdl.handle.net/10371/197948
DOI
https://doi.org/10.1016/j.ijnaoe.2020.03.005
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