...
首页> 外文期刊>Automation in construction >Construction activity recognition with convolutional recurrent networks
【24h】

Construction activity recognition with convolutional recurrent networks

机译:卷积递归网络的施工活动识别

获取原文
获取原文并翻译 | 示例
           

摘要

Although heavy equipment is an indispensable resource in many construction projects, it is often underutilized. Inefficient usage patterns and frequent idling contribute to increased emissions and project costs. Efforts to improve usage patterns often begin with activity tracking. Recent research into automated activity tracking has leveraged sensing devices and Internet-of-Things (IoT) frameworks to power machine learning models that can predict the behaviors of monitored equipment. However, shallow machine learning models require complex manual feature engineering that could be further automated with more recent deep learning approaches. Deep learning approaches not only increase automation but also promise improved accuracies by avoiding biases introduced by manual feature design. This paper proposes a construction equipment activity recognition framework that uses deep learning architectures to predict the activities of heavy construction equipment monitored via accelerometers and applies this framework to a roller compactor and an excavator performing real work. The performance of a simple baseline convolutional neural network (CNN) is compared to a hybrid network that contains both convolutional and recurrent long short-term memory (LSTM) layers. The hybrid model outperforms the baseline model in all instances studied. In the task of classifying the activities of the roller compactor, the hybrid model achieves a validation accuracy of 77.1% when presented with six activities and a validation accuracy of 96.2% when distinguishing only direction. In the task of classifying seven activities of the excavator, the hybrid model achieves a validation accuracy of 77.6%, with some confusion between isolated activities and a Various category that includes elements of the isolated activities. With the Various category removed, the hybrid model achieves a validation accuracy of 90.7%. This study demonstrates that deep learning frameworks can model the activities of construction equipment with high accuracy. In particular, this work shows that convolutional and LSTM layers can each form effective parts of deep learning models that characterize equipment activities based on accelerometer data, and furthermore that these components can produce more effective models when combined. The findings of this study can be leveraged by researchers and industry professionals to develop reliable automated activity recognition systems for tracking and monitoring equipment performance and for measuring the productivity and the efficiency of the work performed.
机译:尽管重型设备在许多建筑项目中是必不可少的资源,但往往利用率不高。低效的使用方式和频繁的空转会增加排放量和项目成本。改善使用模式的努力通常始于活动跟踪。对自动活动跟踪的最新研究已经利用传感设备和物联网(IoT)框架来增强机器学习模型,该模型可以预测受监视设备的行为。但是,浅层机器学习模型需要复杂的手动特征工程,可以使用最新的深度学习方法将其进一步自动化。深度学习方法不仅可以提高自动化程度,而且还可以避免手动功能设计带来的偏差,从而提高准确性。本文提出了一种建筑设备活动识别框架,该框架使用深度学习架构来预测通过加速度计监视的重型建筑设备的活动,并将该框架应用于执行实际工作的压路机和挖掘机。将简单的基线卷积神经网络(CNN)的性能与包含卷积和循环长短期记忆(LSTM)层的混合网络进行了比较。在所有研究的实例中,混合模型均优于基准模型。在对压路机的活动进行分类的任务中,混合模型在显示六个活动时可达到77.1%的验证准确度,而仅区分方向时可达到96.2%的验证准确度。在对挖掘机的七项活动进行分类的任务中,混合模型的验证精度达到77.6%,在孤立活动与包括孤立活动元素的“各种”类别之间有些混淆。删除“各种”类别后,混合模型的验证精度达到90.7%。这项研究表明,深度学习框架可以高精度地模拟建筑设备的活动。特别是,这项工作表明,卷积层和LSTM层均可以构成深度学习模型的有效部分,这些深度学习模型基于加速度计数据来表征设备活动,此外,这些组件在组合时可以产生更有效的模型。研究人员和行业专家可以利用这项研究的结果来开发可靠的自动化活动识别系统,以跟踪和监视设备性能以及测量生产率和工作效率。

著录项

  • 来源
    《Automation in construction》 |2020年第5期|103138.1-103138.12|共12页
  • 作者

  • 作者单位

    Calif State Univ East Bay Dept Math 25800 Carlos Bee Blvd Hayward CA 94542 USA;

    Calif State Univ East Bay Sch Engn 25800 Carlos Bee Blvd Hayward CA 94542 USA;

    San Diego State Univ Dept Civil Construct & Environm Engn San Diego CA 92182 USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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