Automatic Understanding of Construction Schedules: Part-of-Activity Tagging

Fouad Amer, M. Golparvar-Fard
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引用次数: 9

Abstract

Nowadays, construction planning practices, whether conducted by human planners or artificial intelligence (AI) systems, rely heavily on manually elaborated descriptions of construction means and methods. As part of envisioning a new planning system that automatically learns construction knowledge from previous projects’ schedules, this paper introduces Part-of-Activity (POA) Tagging: a construction-specific word-category disambiguation method for decoding the constructional functionalities encoded in activity names. These functionalities represent the roles each token, i.e. word, in an activity name plays in understanding that activity from a construction point of view. The model is built using Bidirectional Long Short Term Memory Recurrent Neural Networks (BI-LSTM RNN). After training on a manually annotated dataset of more than 7000 activities, the model achieved a token accuracy of ~92%. The significance of this method lies in its ability to allow an AI System to decipher construction schedules. This schedule understanding opens the door for further applications such as the automated elaboration of weekly work plans and alignment of master schedules to weekly work plans.
施工进度的自动理解:部分活动标记
如今,无论是由人类规划者还是人工智能(AI)系统进行的建筑规划实践,都严重依赖于人工对施工手段和方法的详细描述。作为设想一种新的规划系统的一部分,该系统可以自动从以前的项目进度中学习施工知识,本文介绍了活动部分(POA)标记:一种特定于施工的词类消歧方法,用于解码编码在活动名称中的施工功能。这些功能表示活动名称中的每个令牌(即单词)在从构造的角度理解该活动时所扮演的角色。该模型采用双向长短期记忆递归神经网络(BI-LSTM RNN)建立。在超过7000个活动的人工标注数据集上训练后,该模型达到了约92%的标记准确率。这种方法的意义在于它能够让人工智能系统破译施工时间表。这种对时间表的理解为进一步的应用打开了大门,例如每周工作计划的自动细化,以及主时间表与每周工作计划的对齐。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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