多二元分类器分析不符合决策:用于管道布置自动化评价

Wei-Chian Tan, I. Chen, H. K. Tan
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引用次数: 2

摘要

本文提出了一种基于现有框架的管道布置或设计不符合原因自动评价的分析决策方法。在直方图连通性和基于线性支持向量机的方法预测设计是否合规的基础上,使用线性支持向量机训练多个二元分类器,根据不合规的性质在直方图连通性空间中进一步对不合规设计进行分类。《国际防止船舶造成污染公约》附件I第12条现有数据集中的不符合设计,根据不符合的原因进一步划分为不同的类别。对于每个不合规子类别,使用线性支持向量机将属于当前类别的所有不合规设计视为正类,将所有其他设计视为负类,从而训练二元分类器。现有1318个不合规设计数据集分为7个子类别。所开发的方法在现有的《国际防止船舶污染公约》数据集上显示了令人鼓舞的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiple binary classifiers to analyse decision of non-compliance: For automated evaluation of piping layout
This paper presents an approach to analyse decision from existing framework on automated evaluation of piping layout or design for reason of non-compliance. On top of Histogram of Connectivity and linear Support Vector Machines based approach for prediction if a design is compliant or non-compliant, multiple binary classifiers are trained using linear Support Vector Machines to classify a non-compliant design further according to nature of non-compliance, in space of Histogram of Connectivity. Non-compliant designs in existing dataset of Regulation 12, Annex I, International Convention for the Prevention of Pollution from Ships are further divided into separate categories according to reason of non-compliance. For each sub-category of non-compliance, a binary classifier is trained using linear Support Vector Machines by taking all non-compliant designs belonging to current category as positive and all others as negative class. Existing dataset of 1318 non-compliant designs is divided into seven sub-categories. Developed method has demonstrated encouraging performance on existing dataset of International Convention for the Prevention of Pollution from Ships.
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