使用深度学习自动化挖掘机生产率测量

Elham Mahamedi, K. Rogage, Omar Doukari, M. Kassem
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引用次数: 4

摘要

重型设备是大型基础设施项目的主要成本因素和关键资源。自动化它们的生产力度量对于消除当前手工度量过程的不准确性和低效率以及改进项目的性能是很重要的。现有的研究主要集中在设备活动识别上,主要使用基于视觉的系统,这需要侵入式现场安装和应用计算要求更高的方法。本研究旨在通过智能手机传感器的组合来收集运动和噪声数据以及深度学习算法,实现设备生产率的自动化测量。不同的组合输入和深度学习方法在拆除活动的实际案例研究中实施和测试。结果表明,测量挖掘机生产率的准确度非常高(99.78%)。建筑项目可以从提议的方法中受益,自动化生产率测量,近乎实时地识别设备效率低下,并通知纠正措施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automating excavator productivity measurement using deep learning
Heavy equipment represents a major cost element and a critical resource in large infrastructure projects. Automating the measurement of their productivity is important to remove the inaccuracies and inefficiencies of current manual measurement processes and to improve the performance of projects. Existing studies have prevalently focused on equipment activity recognition using mainly vision based systems which require intrusive field installation and the application of more computationally demanding methods. This study aims to automate the measurement of equipment productivity using a combination of smartphone sensors to collect kinematic and noise data and deep learning algorithms. Different combination inputs and deep learning methods were implemented and tested in a real-world case study of a demolition activity. The results demonstrated very high accuracy (99.78%) in measuring the productivity of the excavator. Construction projects can benefit from the proposed method to automate productivity measurement, identify equipment inefficiencies in near real-time, and inform corrective actions.
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