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Methodology of Learning Curve Analysis for Development of Incoming Material Clustering Neural Network

机译:用于开发进入材料聚类神经网络的学习曲线分析方法

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This paper describes the methodology of learning curve analysis for development of incoming material clustering neural network. This methodology helps to understand deeply the learning curve adequate level and to bring learning curve structure to the relevant one of the thematic scope of incoming materials. The methodology is based on visual analysis and comprises the building of directed graphs in order to identify data templates. As the battlefield for material clustering the Nuclear Infrastructure Development Section (NIDS) of the International Atom Energy Agency (IAEA) is selected as the support from NIDS' experts had been available during the research. Some of the challenges the NIDS faces are data aggregation for Country Nuclear Infrastructure Profiles (CNIP) and data assessment after Nuclear Infrastructure Review Missions (INIR).
机译:本文介绍了用于开发进入材料聚类神经网络的学习曲线分析的方法。这种方法有助于深入了解学习曲线足够水平,并将学习曲线结构带到相关的进入材料的主题范围之一。该方法基于可视化分析,并包括构建定向图形,以便识别数据模板。作为物料集群的战场,被选中国际atom能源机构(IAEA)的核基础设施开发部分(NID)被选为NIDS专家在研究期间提供的支持。 NIDS面临的一些挑战是国家核基础设施概况(CNIP)和核基础设施审查任务(INIR)之后的数据评估的数据汇总。

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