首页> 外文期刊>Journal of Computing in Civil Engineering >New Automated BIM Object Classification Method to Support BIM Interoperability
【24h】

New Automated BIM Object Classification Method to Support BIM Interoperability

机译:新的自动BIM对象分类方法,支持BIM互操作性

获取原文
获取原文并翻译 | 示例
       

摘要

Industry Foundation Classes (IFC) is widely accepted as the future of building information modeling (BIM) to take on the challenge of BIM interoperability and enable its support of various automation tasks. However, it is not uncommon to see misuses of IFC entities during the creation of BIM. Such misuses prevent a successful automation of BIM-supported tasks because misclassification of objects in BIM can lead to significant negative consequences in downstream applications due to incorrect semantic information provided. To address this problem, the authors propose a new data-driven, iterative method that can be used to develop an algorithm to automatically classify each object in an IFC model into predefined categories. The algorithm consists of multiple subalgorithms with each subalgorithm depicting a pattern matching rule that uses inherent features of the geometric representation of an architecture, engineering, and construction (AEC) object. The method was tested in an experiment in which IFC models from three different sources were collected and 1,891 AEC objects were extracted and divided into training and testing data for use. By comparing the classification results of the algorithm developed based on training data and applied to testing data with a manually developed gold standard, 84.45% recall and 85.20% precision were achieved in common building element categories, and 100% recall and precision were achieved in detailed beam categories. The sources of errors were found to be (1) different objects sharing the same geometric shape and (2) uncovered geometric shape representation in the training data. By adding locational information into consideration in addition to geometric information and making sure training data covers all geometric shape representations, 100% precision and recall can be achieved for all categories. (c) 2019 American Society of Civil Engineers.
机译:行业基金会课程(IFC)被广泛接受作为建筑信息建模(BIM)的未来,以承担BIM互操作性的挑战,并实现各种自动化任务的支持。然而,在BIM的创建期间看到IFC实体的滥用并不罕见。这种滥用阻止了BIM支持的任务的成功自动化,因为BIM中对象的错误分类可能导致下游应用的显着后果由于提供了不正确的信息。为了解决这个问题,作者提出了一种新的数据驱动的迭代方法,可用于开发算法,以将IFC模型中的每个对象自动对预定义类别分类为预定义的类别。该算法包括多个子格管,其中每个子介格都描绘了使用架构,工程和构造(AEC)对象的几何表示的固有特征的模式匹配规则。该方法在实验中进行了测试,其中收集了来自三种不同来源的IFC模型,并提取了1,891个AEC对象并分为训练和测试数据供使用。通过比较基于训练数据开发的算法的分类结果并应用于使用手动发育的金标准的测试数据,84.45%的召回和85.20%的精度在共同的建筑元素类别中实现,并且在详细中实现了100%的召回和精确度梁类别。发现错误源是(1)不同的物体共享相同的几何形状和(2)在训练数据中未被覆盖的几何形状表示。除了几何信息之外,通过添加位置信息并确保培训数据涵盖所有几何形状表示,可以为所有类别实现100%精度和召回。 (c)2019年美国土木工程学会。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号