基于LDA算法的主题建模的背驮式交通系统技术开发策略

S. Jun, Seong-Ho Han, Sangbaek Kim
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引用次数: 1

摘要

在本研究中,我们通过分析相关专利信息,确定了有前途的背驮式运输系统技术。为此,我们首先从Piggyback flactcar系统的前沿研究论文中提取相关技术关键词,建立专利数据库。然后,我们使用文本挖掘从专利数据库中识别经常被引用的单词,并使用这些单词,我们应用LDA (Latent Dirichlet Allocation)算法来识别与Piggyback系统的“关键”技术相对应的“主题”。最后,利用ARIMA模型对这些“关键”技术的发展趋势进行预测,确定了具有发展前景的技术。用关键词检索法进行专利分析。结果表明,数据驱动的综合管理系统、作业计划系统和特殊货物(特别是流体和气体)处理/存储技术是未来Piggyback系统的“关键”技术,必须开发数据接收/分析技术以提高系统性能。所提出的程序和分析方法为制定背驮式系统的研发战略和技术路线图提供了有用的见解。
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Technology Development Strategy of Piggyback Transportation System Using Topic Modeling Based on LDA Algorithm
In this study, we identify promising technologies for Piggyback transportation system by analyzing the relevant patent information. In order for this, we first develop the patent database by extracting relevant technology keywords from the pioneering research papers for the Piggyback flactcar system. We then employed textmining to identify the frequently referred words from the patent database, and using these words, we applied the LDA (Latent Dirichlet Allocation) algorithm in order to identify “topics” that are corresponding to “key” technologies for the Piggyback system. Finally, we employ the ARIMA model to forecast the trends of these “key” technologies for technology forecasting, and identify the promising technologies for the Piggyback system. with keyword search method the patent analysis. The results show that data-driven integrated management system, operation planning system and special cargo (especially fluid and gas) handling/storage technologies are identified to be the “key” promising technolgies for the future of the Piggyback system, and data reception/analysis techniques must be developed in order to improve the system performance. The proposed procedure and analysis method provides useful insights to develop the R&D strategy and the technology roadmap for the Piggyback system.
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