A Computational Framework For Robotic Quality Assessment and Management In Construction

Jingyang Liu, Yumeng Zhuang, Joshua Bard
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Abstract

—As an integrated process in construction projects, quality assessment and management (QA&M) can be important to prevent failures during construction. The existing QA&M practice such as the evaluation of the geometric tolerance and surface qualities is mostly performed manually which can be labor-intensive and tedious. This study proposes a computational framework for a robot to perform automatic QA&M in unknown environments. The framework is composed of three parts: (1) motion planning; (2) defect detection; and (3) defect registration. The motion planning component generates efficient robotic path for autonomous exploration and surface inspection. The defect detection component quantifies surface anomalies within a user-defined area of interests through multiple sensor measurements. The defect registration component localizes the detected defects and registers the defects to a site model. To demonstrate the feasibility of the proposed framework, we present a user case for assessing geometric tolerance and surface quality of a 1500 mm (L) x 745 mm (W) x 1980 mm interior wall mockup. The result of the case study shows that the proposed framework has the potential to provide reliable geometric measurement and defect detection for gypsum wall panels in a lab environment.
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施工机器人质量评估与管理的计算框架
-作为建设项目的一个综合过程,质量评估和管理(QA&M)对于防止施工过程中的故障是非常重要的。现有的质量保证与管理实践,如几何公差和表面质量的评定,大多是手工进行的,这是一种劳动密集型和繁琐的工作。本研究提出了一个机器人在未知环境中执行自动QA&M的计算框架。该框架由三部分组成:(1)运动规划;(2)缺陷检测;(3)缺陷登记。运动规划组件生成有效的机器人路径,用于自主探测和表面检测。缺陷检测组件通过多个传感器测量来量化用户定义的感兴趣区域内的表面异常。缺陷注册组件将检测到的缺陷定位,并将缺陷注册到站点模型。为了证明所提出框架的可行性,我们提出了一个用户案例,用于评估1500毫米(长)x 745毫米(宽)x 1980毫米内墙模型的几何公差和表面质量。案例研究结果表明,所提出的框架具有在实验室环境中为石膏墙板提供可靠的几何测量和缺陷检测的潜力。
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