Prediction of Labor Activity Recognition in Construction with Machine Learning Algorithms

Ibrahim Karatas, A. Budak
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引用次数: 1

Abstract

It is essential that the control and management of the work of labors in construction project management is effective. In this study, it is aimed to building artificial intelligence models to recognition on activities in a construction work to effectively utilization project management and control. In accordance with this purpose, 3-axis accelerometer, gyroscope, and magnetometer data were obtained from the labors through the sensor to predict the activities determined for a construction work. These raw data were made compliance for the model by going through a series of preprocessing applications. These data are trained and modeled with basic machine learning algorithms logistic regression, SVC, DT and KNN algorithms. According to the results of the analysis, the best prediction was obtained with the SVC algorithm with an accuracy of 90%. In other algorithms, respectively, 87% accuracy was contrived in the KNN algorithm, and approximately 80% accuracy in the logistic regression and DT algorithms. According to these values, it has been observed that the activities performed in a construction work can be estimated at a high rate. In this way, at the construction sites, it can be automatically determined which work the laborer do at a certain accuracy rate.
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用机器学习算法预测建筑业中的劳动活动识别
在建设项目管理中,对劳动者工作的有效控制和管理是至关重要的。本研究旨在建立人工智能模型来识别建筑工程中的活动,从而有效地利用项目管理和控制。根据这一目的,通过传感器从劳动力中获得3轴加速度计、陀螺仪和磁力计数据,以预测为建筑工作确定的活动。这些原始数据经过一系列的预处理应用程序,使其符合模型。这些数据用基本的机器学习算法逻辑回归、SVC、DT和KNN算法进行训练和建模。分析结果表明,SVC算法预测精度最高,达到90%。在其他算法中,KNN算法的准确率分别达到87%,逻辑回归和DT算法的准确率约为80%。根据这些值,可以观察到在建筑工程中进行的活动可以以很高的比率进行估计。这样,在施工现场,它就能以一定的准确率自动确定工人在做什么工作。
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