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Online Classification and Sensor Selection Optimization With Applications to Human Material Handling Tasks Using Wearable Sensing Technologies

机译:在线分类和传感器选择优化及其在可穿戴传感技术中对人类物料处理任务的应用

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摘要

Occupational jobs often involve different types of manual material handling (MMH) tasks. Performing such tasks can be physically demanding, and which may put workers at an increased risk of work-related musculoskeletal disorders (WMSDs). To control and prevent WMSDs, there has been a growing interest in online posture monitoring using wearable sensors. In this paper, we developed an online, supervised, task classification algorithm for monitoring and evaluation of MMH activities. The classification algorithm is based on a fast sparse estimation methodology, which makes it computationally efficient for online decision making. We further propose an optimization approach to improve classification performance, by differentially weighting sensors, thereby representing the relative influence of a sensor in classification performance. Optimizing these weights enables us to determine the most relevant sensors for classification. A case study using 37 sensors with 111 channels of data was completed to validate performance of the proposed method. With only 30 optimally selected sensor channels, our method provides high classification accuracy (>84%) and outperforms several benchmark methods, including support vector machine, quadratic discriminant analysis, and neural network.
机译:职业工作通常涉及不同类型的手动物料处理(MMH)任务。执行此类任务可能对身体有很大要求,并且可能使工人面临与工作有关的肌肉骨骼疾病(WMSD)的风险增加。为了控制和预防WMSD,人们对使用可穿戴式传感器的在线姿势监测越来越感兴趣。在本文中,我们开发了一种用于监督和评估MMH活动的在线,监督,任务分类算法。分类算法基于快速稀疏估计方法,这使其在在线决策上的计算效率很高。我们进一步提出了一种优化方法,通过对传感器进行差分加权来提高分类性能,从而代表传感器在分类性能中的相对影响。优化这些权重使我们能够确定最相关的传感器进行分类。使用37个传感器和111个数据通道的案例研究已经完成,以验证所提出方法的性能。我们的方法只有30个最佳选择的传感器通道,可提供较高的分类精度(> 84%),并且优于几种基准方法,包括支持向量机,二次判别分析和神经网络。

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