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Recognizing Product Application based on Integrated Consumer Grade Sensors: A Case Study with Handheld Power Tools

机译:基于集成消费级传感器的产品应用识别:手持电动工具案例研究

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摘要

As more and more consumer grade sensors are integrated into products such as handheld power tools, data acquisition is becoming more affordable. The product development process benefits greatly from the knowledge of the incidence and the relevance of applications performed by a user. Using the collected sensor data remains a challenge due to the noise caused by the consumer grade sensors and the complexity of the applications. In this study, the use of machine learning on time series to identify which predefined applications a user performed with a power tool, using an angle grinder and a cordless screwdriver as example, is explored. An acceleration sensor, a rotation rate sensor, a geomagnetic sensor and a current sensor were used for data acquisition. We tested two sampling rates and two approaches of feature extraction: An effectively off-the-shelf method of feature extraction and an expert-tuned extraction of the features. The study shows that both methods achieve very good results within existing data sets (>95% accuracy). When applied to new experiments, overfitting occurs due to the complexity of the application and the noise of the consumer-grade sensors. Thus, this study shows first promising results and further potentials for the future application of machine learning for the recognition of applications in products such as handheld power tools.
机译:随着越来越多的消费级传感器集成到诸如手持式电动工具之类的产品中,数据采集变得越来越便宜。产品开发过程极大地受益于用户对应用程序的发生率和相关性的了解。由于消费级传感器引起的噪声和应用程序的复杂性,使用收集的传感器数据仍然是一个挑战。在这项研究中,探索了使用时间序列机器学习来识别用户使用电动工具(例如角磨机和无绳螺丝刀)执行的预定义应用程序。加速度传感器,转速传感器,地磁传感器和电流传感器用于数据采集。我们测试了两种采样率和两种特征提取方法:有效的现成特征提取方法和专家调整的特征提取。研究表明,这两种方法在现有数据集中均取得了很好的结果(准确度> 95%)。当应用于新的实验时,由于应用的复杂性和消费级传感器的噪声,会导致过度拟合。因此,本研究显示了机器学习在识别手持式电动工具等产品中的应用程序方面的首次应用前景,以及未来机器学习应用的进一步潜力。

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