Humidity Monitoring Using a Flexible Polymer- based Microwave Sensor and Machine Learning
Idioma
EN
Communication dans un congrès
Este ítem está publicado en
2022 IEEE Sensors, 2022 IEEE Sensors, 2022-10-30, Dallas. 2022-10p. 1-4
Resumen en inglés
This work presents humidity monitoring using a highly sensitive flexible microwave sensor associated with polyethyleneimine sensitive material with high endurance against temperature by a machine learning approach. A ...Leer más >
This work presents humidity monitoring using a highly sensitive flexible microwave sensor associated with polyethyleneimine sensitive material with high endurance against temperature by a machine learning approach. A climatic chamber was used to generate humidity at different temperatures and a commercialized humidity and temperature sensor was used as a reference. The sensor showed a high frequency sensitivity (−3.65 and -7.69 MHz/%RH in a range of 30 - 50 %RH and 50 - 70%RH respectively), low hysteresis, good reversibility and repeatability. Moreover, the extracted sensing features were associated to linear regression, support vector machine, random forest and k-nearest neighbours regression algorithms for humidity prediction. The performance of the different models was evaluated and random forest (MAE: 1.63 %RH, R2: 0.970, pred time: 0.44s) and k-nearest neighbours ((MAE: 1.52 %RH, R2: 0.971, pred time: 0.12s) showed the best results on prediction on the test data set.< Leer menos
Palabras clave
Temperature sensors
Support vector machines
Sensitivity
Humidity
Microwave sensors
Predictive models
Feature extraction
Microwave sensor
Humidity
Machine learning approach
Polymer sensitive material
Passive resonator
Centros de investigación