Usage of Machine Learning Techniques to Classify and Predict the Performance of Force Sensing Resistors

被引:0
|
作者
Pena, Angela [1 ,2 ]
Alvarez, Edwin L. [3 ]
Ayala Valderrama, Diana M. [4 ]
Palacio, Carlos [5 ]
Bermudez, Yosmely [6 ]
Paredes-Madrid, Leonel [1 ]
机构
[1] Univ Antonio Narino, Fac Mech Elect & Biomed Engn, Carrera 7 N 21-84, Tunja 150001, Boyaca, Colombia
[2] Univ Antonio Narino, Ciencia Aplicada, Carrera 3 Este N 47 A15, Bogota 110231, DC, Colombia
[3] Univ Boyaca, Fac Sci & Engn, Mechatron Engn Program, GIMAC Modeling Automat & Control Res Grp, Carrera 2A Este N 64-169, Tunja 150003, Boyaca, Colombia
[4] Santo Tomas Univ, Comprehens Management Agroind Prod & Serv GISPA, Av Univ 45-202, Tunja 15003, Boyaca, Colombia
[5] Univ Antonio Narino, Fac Sci, Carrera 7 N 21-84, Tunja 150001, Boyaca, Colombia
[6] Univ Simon Bolivar, Caracas, Venezuela
关键词
conductive polymer composite; force sensing resistor; machine learning; ELECTRICAL-CONDUCTIVITY; POLYMER COMPOSITES; STRAIN;
D O I
10.3390/s24206592
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
Recently, there has been a huge increase in the different ways to manufacture polymer-based sensors. Methods like additive manufacturing, microfluidic preparation, and brush painting are just a few examples of new approaches designed to improve sensor features like self-healing, higher sensitivity, reduced drift over time, and lower hysteresis. That being said, we believe there is still a lot of potential to boost the performance of current sensors by applying modeling, classification, and machine learning techniques. With this approach, final sensor users may benefit from inexpensive computational methods instead of dealing with the already mentioned manufacturing routes. In this study, a total of 96 specimens of two commercial brands of Force Sensing Resistors (FSRs) were characterized under the error metrics of drift and hysteresis; the characterization was performed at multiple input voltages in a tailored test bench. It was found that the output voltage at null force (Vo_null) of a given specimen is inversely correlated with its drift error, and, consequently, it is possible to predict the sensor's performance by performing inexpensive electrical measurements on the sensor before deploying it to the final application. Hysteresis error was also studied in regard to Vo_null readings; nonetheless, a relationship between Vo_null and hysteresis was not found. However, a classification rule base on k-means clustering method was implemented; the clustering allowed us to distinguish in advance between sensors with high and low hysteresis by relying solely on Vo_null readings; the method was successfully implemented on Peratech SP200 sensors, but it could be applied to Interlink FSR402 sensors. With the aim of providing a comprehensive insight of the experimental data, the theoretical foundations of FSRs are also presented and correlated with the introduced modeling/classification techniques.
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页数:23
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