Automated monitoring and warning solution for concrete placement and vibration workmanship quality issues

Sanggyu Lee, Miroslaw J. Skibniewski
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引用次数: 6

Abstract

Placing and vibrating concrete are vital activities that affect its quality. The current monitoring method relies on visual and time-consuming feedbacks by project managers, which can be subjective. With this method, poor workmanship cannot be detected well on the spot; rather, the concrete is inspected and repaired after it becomes hardened. To address the problems of retroactive quality control measures and to achieve real-time quality assurance of concrete operations, this paper presents a monitoring and warning solution for concrete placement and vibration workmanship quality. Specifically, the solution allows for collecting and compiling real-time sensor data related to the workmanship quality and can send alerts to project managers when related parameters are out of the required ranges. This study consists of four steps: (1) identifying key operational factors (KOFs) which determine acceptable workmanship of concrete work; (2) reviewing and selecting an appropriate positioning technology for collecting the data of KOFs; (3) designing and programming modules for a solution that can interpret the positioning data and send alerts to project managers when poor workmanship is suspected; and (4) testing the solution at a certain construction site for validation by comparing the positioning and warning data with a video record. The test results show that the monitoring performance of concrete placement is accurate and reliable. Follow-up studies will focus on developing a communication channel between the proposed solution and concrete workers, so that feedbacks can be directly delivered to them.

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混凝土浇筑和振动工艺质量问题的自动监控和预警解决方案
混凝土浇筑和振动是影响混凝土质量的重要环节。当前的监控方法依赖于项目经理提供的可视化且耗时的反馈,这可能是主观的。使用这种方法,不能在现场很好地检测出做工差;而是在混凝土变硬后进行检查和修复。为解决质量控制措施的追溯性问题,实现混凝土施工质量的实时保证,提出了混凝土浇筑和振动工艺质量的监测预警方案。具体来说,该解决方案允许收集和编译与工艺质量相关的实时传感器数据,并可以在相关参数超出要求范围时向项目经理发送警报。本研究包括四个步骤:(1)确定决定混凝土工程可接受工艺的关键操作因素(KOFs);(2)审查和选择合适的定位技术来收集KOFs数据;(3)为解决方案设计和编程模块,该解决方案可以解释定位数据,并在怀疑工艺不良时向项目经理发出警报;(4)通过将定位报警数据与视频记录进行对比,在某施工现场进行验证。试验结果表明,混凝土浇筑监测性能准确可靠。后续研究将侧重于在提出的解决方案和混凝土工人之间建立沟通渠道,以便将反馈直接传递给他们。
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