使用机械臂进行基础设施维护的计算机视觉引导半自主混凝土裂缝修复

Rui Chen, Cheng Zhou, Li-li Cheng
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引用次数: 3

摘要

工程检测与维修技术在建筑物的安全、运行、维修和管理中发挥着重要作用。在工程建设控制中,工程质量监督是一项艰巨的任务。为了解决这些检查和维护问题,本研究提出了一种计算机视觉引导的半自主机器人系统,用于混凝土裂缝的识别和修复,人类可以为该系统制定修复计划。利用计算机视觉对混凝土裂缝进行表征,建立裂缝特征库。在此基础上,设计了一种轨迹生成和坐标变换方法来确定机器人的执行坐标。此外,研究了基于知识库的混凝土裂缝修复方法,对混凝土裂缝的修复工艺进行决策,并设计了用于混凝土裂缝修复的机械臂。最后进行了仿真和实验,验证了所提修复方法的可行性。本研究结果在解决现场混凝土裂缝自动修复事故发生率高、效率低、熟练工人流失大等问题的同时,具有提高现场混凝土裂缝自动修复性能的潜力。
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Computer-vision-guided semi-autonomous concrete crack repair for infrastructure maintenance using a robotic arm

Engineering inspection and maintenance technologies play an important role in safety, operation, maintenance and management of buildings. In project construction control, supervision of engineering quality is a difficult task. To address such inspection and maintenance issues, this study presents a computer-vision-guided semi-autonomous robotic system for identification and repair of concrete cracks, and humans can make repair plans for this system. Concrete cracks are characterized through computer vision, and a crack feature database is established. Furthermore, a trajectory generation and coordinate transformation method is designed to determine the robotic execution coordinates. In addition, a knowledge base repair method is examined to make appropriate decisions on repair technology for concrete cracks, and a robotic arm is designed for crack repair. Finally, simulations and experiments are conducted, proving the feasibility of the repair method proposed. The result of this study can potentially improve the performance of on-site automatic concrete crack repair, while addressing such issues as high accident rate, low efficiency, and big loss of skilled workers.

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