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Analyzing context and productivity of tunnel earthmoving processes using imaging and simulation

机译:使用成像和仿真分析隧道土方工程的环境和生产率

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摘要

This study presents an integrated method of construction-process simulation and vision-based context reasoning for productivity analysis of an earthmoving process in a tunnel. Convolutional networks are used to detect construction equipment in the tunnel CCTV video and the context of the earthmoving process is inferred by the context reasoning process. The construction equipment detection model exhibited enhanced performance, with a mean average precision of 99.09%, and the error rate of the estimated context information was only 1.6% of the actual earthmoving context measured by a human. The estimated context information was used as an input for the WebCYCLONE simulation to generate a productivity and cost analysis report. Sensitivity analysis regarding construction equipment provided a new equipment allocation plan that could reduce the cost of the current earthmoving process by 12.25%.
机译:这项研究提出了一种施工过程模拟和基于视觉的上下文推理的集成方法,用于隧道中土方工程的生产率分析。卷积网络用于检测隧道CCTV视频中的建筑设备,而推土过程的上下文是通过上下文推理过程来推断的。建筑设备检测模型表现出更高的性能,平均平均精度为99.09%,估计的上下文信息的错误率仅为人类测得的实际土方上下文的1.6%。估计的上下文信息用作WebCYCLONE模拟的输入,以生成生产率和成本分析报告。对建筑设备的敏感性分析提供了一种新的设备分配计划,该计划可以将当前土方工程的成本降低12.25%。

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