Abstract

Smart sensors are an integral part of the Fourth Industrial Revolution and are widely used to add safety measures to human–robot interaction applications. With the advancement of machine learning methods in resource-constrained environments, smart sensor systems have become increasingly powerful. As more data-driven approaches are deployed on the sensors, it is of growing importance to monitor data quality at all times of system operation. We introduce a smart capacitive sensor system with an embedded data quality monitoring algorithm to enhance the safety of human–robot interaction scenarios. The smart capacitive skin sensor is capable of detecting the distance and angle of objects nearby by utilizing consumer-grade sensor electronics. To further acknowledge the safety aspect of the sensor, a dedicated layer to monitor data quality in real-time is added to the embedded software of the sensor. Two learning algorithms are used to implement the sensor functionality: (1) a fully connected neural network to infer the position and angle of objects nearby and (2) a one-class SVM to account for the data quality assessment based on out-of-distribution detection. We show that the sensor performs well under normal operating conditions within a range of 200 and also detects abnormal operating conditions in terms of poor data quality successfully. A mean absolute distance error of was achieved without data quality indication. The overall performance of the sensor system could be further improved to by monitoring the data quality, adding an additional layer of safety for human–robot interaction.

Highlights

  • Introduction iationsSensor systems are intrinsic to all fields of industrial applications

  • The overall performance of the sensor system could be further improved to 7.5 mm by monitoring the data quality, adding an additional layer of safety for human–robot interaction

  • As sensor systems become more powerful and as more machine learning methods are used on the sensor level, it is necessary to monitor the results of these methods in terms of data quality

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Summary

Introduction

Sensor systems are intrinsic to all fields of industrial applications. With the advancement of the Fourth Industrial Revolution and the Internet of things (IoT), the monitoring of processes and devices is of growing importance. Various types of sensor systems have been developed to enhance the functionality and safety of human–robot interaction (HRI). As sensor systems become more powerful and as more machine learning methods are used on the sensor level, it is necessary to monitor the results of these methods in terms of data quality. In human–robot interaction, active and passive safety measures [2] can be added to ensure safe cooperation. According to Robla-Gomez et al [2], passive safety measures include lightweight structures or mechanical compliance systems such as series elastic

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