识别自动化建筑活动的深层序列模型的相关性:低层建筑系统的案例研究

IF 3.6 Q1 ENGINEERING, CIVIL Journal of Information Technology in Construction Pub Date : 2023-08-25 DOI:10.36680/j.itcon.2023.023
Aparna Harichandran, B. Raphael, Abhijit Mukherjee
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引用次数: 0

摘要

识别施工设备的活动对于监测生产率、施工进度、安全和环境影响至关重要。对于土方开挖和移动设备的活动识别已有很多研究,但对于自动化施工系统的活动识别却鲜有尝试。特别是低层ACS,为迫切的住房需求提供了节能、经济的解决方案,并为更广泛的人群提供了更实惠的生活选择。深度学习方法因其无需手动提取相关特征即可执行分类的能力而受到广泛关注。本研究评估了深层序列模型用于开发低层自动化施工设备活动识别框架的可行性。从结构上收集时间序列加速度数据,以确定ACS的主要操作类别。将长短期记忆网络(LSTM)用于识别活动类别,并与传统机器学习分类器的性能进行了比较。采用多种增强方法生成训练深度学习分类器的数据集。最近发表的一些文献似乎建立了复杂深度学习技术优于传统机器学习算法的优势,而不考虑应用环境。然而,本研究的结果表明,所有传统的机器学习分类器在识别ACS活动方面的表现与深度学习分类器相当或更好。深度学习分类器的性能受到初始数据集缺乏多样性的影响。如果增强数据集显著改变了原始数据集的特征,则可能无法提供良好的识别结果。
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Relevance of deep sequence models for recognising automated construction activities: a case study on a low-rise construction system
Recognising activities of construction equipment is essential for monitoring productivity, construction progress, safety, and environmental impacts. While there have been many studies on activity recognition of earth excavation and moving equipment, activity identification of Automated Construction Systems (ACS) has been rarely attempted. Especially for low-rise ACS that offers energy-efficient, cost-effective solutions for urgent housing needs, and provides more affordable living options for a broader population. Deep learning methods have gained a lot of attention because of their ability to perform classification without manually extracting relevant features. This study evaluates the feasibility of deep sequence models for developing an activity recognition framework for low-rise automated construction equipment. Time series acceleration data was collected from the structure to identify major operation classes of an ACS. Long Short Term Memory Networks (LSTM) were applied for identifying the activity classes and the performance was compared with that of traditional machine learning classifiers. Diverse augmentation methods were adopted for generating datasets for training the deep learning classifiers. Several recently published literature seem to establish the superiority of complex deep learning techniques over traditional machine learning algorithms regardless of the application context. However, the results of this study show that all the conventional machine learning classifiers perform equivalently or better than deep learning classifiers in identifying activities of the ACS. The performance of the deep learning classifiers is affected by the lack of diversity in the initial dataset. If the augmented dataset significantly alters the characteristics of the original dataset, it may not deliver good recognition results.
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来源期刊
CiteScore
6.90
自引率
8.60%
发文量
44
审稿时长
26 weeks
期刊最新文献
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