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基于智能手表的伐木作业索具工人活动识别模型的开发与验证。

Development and validation of smartwatch-based activity recognition models for rigging crew workers on cable logging operations.

机构信息

Department of Forest, Rangeland and Fire Sciences, University of Idaho, Moscow, ID, United States of America.

出版信息

PLoS One. 2021 May 12;16(5):e0250624. doi: 10.1371/journal.pone.0250624. eCollection 2021.

Abstract

Analysis of high-resolution inertial sensor and global navigation satellite system (GNSS) data collected by mobile and wearable devices is a relatively new methodology in forestry and safety research that provides opportunities for modeling work activities in greater detail than traditional time study analysis. The objective of this study was to evaluate whether smartwatch-based activity recognition models could quantify the activities of rigging crew workers setting and disconnecting log chokers on cable logging operations. Four productive cycle elements (travel to log, set choker, travel away, clear) were timed for choker setters and four productive cycle elements (travel to log, unhook, travel away, clear) were timed for chasers working at five logging sites in North Idaho. Each worker wore a smartwatch that recorded accelerometer data at 25 Hz. Random forest machine learning was used to develop predictive models that classified the different cycle elements based on features extracted from the smartwatch acceleration data using 15 sliding window sizes (1 to 15 s) and five window overlap levels (0%, 25%, 50%, 75%, and 90%). Models were compared using multiclass area under the Receiver Operating Characteristic (ROC) curve, or AUC. The best choker setter model was created using a 3-s window with 90% overlap and had sensitivity values ranging from 76.95% to 83.59% and precision values ranging from 41.42% to 97.08%. The best chaser model was created using a 1-s window with 90% overlap and had sensitivity values ranging from 71.95% to 82.75% and precision values ranging from 14.74% to 99.16%. These results have demonstrated the feasibility of quantifying forestry work activities using smartwatch-based activity recognition models, a basic step needed to develop real-time safety notifications associated with high-risk job functions and to advance subsequent, comparative analysis of health and safety metrics across stand, site, and work conditions.

摘要

利用移动和可穿戴设备采集的高分辨率惯性传感器和全球导航卫星系统 (GNSS) 数据进行分析,是林业和安全研究中一种相对较新的方法,它为更详细地建模工作活动提供了机会,这比传统的时间研究分析更加详细。本研究的目的是评估基于智能手表的活动识别模型是否可以量化设置和拆卸索具工人在索具设置和拆除过程中的活动。为了设置索具的工人,我们记录了四个生产周期元素(前往原木、设置索具、离开、清理)的时间;为了追逐者,我们记录了五个伐木现场的四个生产周期元素(前往原木、脱钩、离开、清理)的时间。每个工人都戴着一块记录加速度计数据的智能手表,数据采集频率为 25Hz。随机森林机器学习被用于开发预测模型,这些模型基于从智能手表加速度数据中提取的特征,根据 15 个滑动窗口大小(1 到 15 秒)和五个窗口重叠级别(0%、25%、50%、75%和 90%)对不同的周期元素进行分类。使用多类接收器工作特性曲线(ROC)下面积(AUC)比较模型。最佳的索具设置器模型是使用 3 秒窗口和 90%重叠创建的,其灵敏度值范围为 76.95%至 83.59%,精度值范围为 41.42%至 97.08%。最佳的追逐者模型是使用 1 秒窗口和 90%重叠创建的,其灵敏度值范围为 71.95%至 82.75%,精度值范围为 14.74%至 99.16%。这些结果表明,使用基于智能手表的活动识别模型来量化林业工作活动是可行的,这是开发与高风险工作功能相关的实时安全通知以及推进后续对不同立地、场地和工作条件下的健康和安全指标进行比较分析的基本步骤。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9d0e/8115790/74845fc26260/pone.0250624.g001.jpg

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