School of Civil and Environmental Engineering, Harbin Institute of Technology, Shenzhen 518055, China.
Department of Building and Real Estate, The Hong Kong Polytechnic University, Hong Kong.
Sensors (Basel). 2023 Nov 26;23(23):9420. doi: 10.3390/s23239420.
Efficient measurement of labor input is a critical aspect of on-site control and management in construction projects, as labor input serves as the primary and direct determinant of project outcomes. However, conventional manual inspection methods are off-line, tedious, and fail to capture their effectiveness. To address this issue, this research presents a novel method that leverages Inertial Measurement Unit (IMU) sensors attached to hand tools during construction activities to measure labor input in a timely and precise manner. This approach encompasses three steps: temporal-spatial feature extraction, self-similarity matrix calculation, and local specific structure identification. The underlying principle is based on the hypothesis that repetitive use data from hand tools can be systematically collected, analyzed, and converted into quantitative measures of labor input by the automatic recognition of repetition patterns. To validate this concept and assess its feasibility for general construction activities, we developed a preliminary prototype and conducted a pilot study focusing on rotation counting for a screw-connection task. A comparative analysis between the ground truth and the predicted results obtained from the experiments demonstrates the effectiveness and efficiency of measuring labor input using IMU sensors on hand tools, with a relative error of less than 5%. To minimize the measurement error, further work is currently underway for accurate activity segmentation and fast feature extraction, enabling deeper insights into on-site construction behaviors.
有效衡量劳动力投入是施工现场控制和管理的关键环节,因为劳动力投入是项目成果的主要和直接决定因素。然而,传统的手动检查方法是离线的、繁琐的,并且无法捕捉其效果。为了解决这个问题,本研究提出了一种新方法,该方法利用施工活动中附在手工具上的惯性测量单元(IMU)传感器来及时、精确地衡量劳动力投入。该方法包括三个步骤:时-空特征提取、自相似矩阵计算和局部特定结构识别。其基本原理基于这样的假设,即可以系统地收集、分析和转换手工具的重复使用数据,并通过自动识别重复模式将其转化为劳动力投入的定量度量。为了验证这一概念并评估其在一般施工活动中的可行性,我们开发了一个初步原型,并进行了一项侧重于螺丝连接任务的旋转计数的试点研究。通过对实验获得的真实值和预测值进行比较分析,证明了在手工具上使用 IMU 传感器测量劳动力投入的有效性和效率,相对误差小于 5%。为了最小化测量误差,目前正在进行准确的活动分割和快速特征提取的工作,以深入了解施工现场的施工行为。