A three-electrode capacitive based sensing system to determine the direction of motion of humans

Poojitha Makireddy, Prashanth Vooka
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引用次数: 2

Abstract

This paper presents a novel capacitive sensor-based proximity detection system that can sense and determine a human being’s presence and the direction of motion. The proposed system consists of a coplanar-based three-electrode capacitive sensor and a sensor interface circuit that can accurately determine the direction of motion of humans and remain insensitive to other objects. The capacitive sensor structure is easily mountable on the side jamb of a door. Due to the shielding effect, the sensor capacitance value decreases, and a unique pattern in the sensor output is observed, based on the direction of motion of the human beings passing through the doorway. A simulation study conducted in ANSYS Multiphysics-based environment with copper electrodes of length 30 cm and width 1.2 cm will give a detection range of 50 cm. The same is experimentally verified through a prototype developed in the laboratory and the overall power consumption of the proposed system is around 27 mW. Rigorous tests are conducted to evaluate the performance of the system, and the experimental results indicate the versatility and the potential of the system.
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一种基于三电极电容的传感系统,用于确定人体的运动方向
本文提出了一种基于电容式传感器的接近检测系统,该系统可以感知并确定人的存在和运动方向。该系统由基于共面的三电极电容式传感器和传感器接口电路组成,可以准确地确定人体的运动方向,并且对其他物体不敏感。电容式传感器结构易于安装在门的侧门框上。由于屏蔽效应,传感器电容值减小,根据行人穿过门口的运动方向,在传感器输出中观察到独特的图案。采用长30 cm、宽1.2 cm的铜电极,在ANSYS multiphysics环境中进行仿真研究,得到的探测范围为50 cm。通过实验室开发的原型进行了实验验证,所提出系统的总功耗约为27兆瓦。对系统的性能进行了严格的测试,实验结果表明了系统的通用性和潜力。
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