TY - JOUR
T1 - Non-Intrusive Load Monitoring for LED Light Classification: A Data-driven Machine Learning Approach
AU - Thanh Cong, Nguyen
AU - Ngoc Son, Nguyen
AU - Ngoc Nam Hai, Dao
AU - Huy Tinh, Nguyen
AU - Ware, Andrew
AU - Ngoc An, Nguyen
PY - 2024/6/10
Y1 - 2024/6/10
N2 - Monitoring the operational status of LED lights is important to achieve energy efficiency and protect user health. Recent studies employed machine learning and several parameters, such as the LED’s light output and electrical characteristics, to classify their operational status. However, under changing environmental conditions, these methods will no longer be effective, due to the compromise of the environmental noise to the input data of the models. In this study, we proposed a novel approach to identifying the operational status of household LED lights using non-intrusive load monitoring, machine learning models, confident learning, and the oscillation characteristic of the root-mean-square (RMS) current. By using the oscillation characteristics of the RMS current, we significantly reduced the number of inputs to the models and their computational hardware requirements compared to models using the RMS current. With the introduction of confident learning, we improved the prediction accuracy of the models by 2% on average. The models achieved prediction accuracy ranging from 94% to 97.5%. The proposed method shows potential in applying to different kinds of electrical devices.
AB - Monitoring the operational status of LED lights is important to achieve energy efficiency and protect user health. Recent studies employed machine learning and several parameters, such as the LED’s light output and electrical characteristics, to classify their operational status. However, under changing environmental conditions, these methods will no longer be effective, due to the compromise of the environmental noise to the input data of the models. In this study, we proposed a novel approach to identifying the operational status of household LED lights using non-intrusive load monitoring, machine learning models, confident learning, and the oscillation characteristic of the root-mean-square (RMS) current. By using the oscillation characteristics of the RMS current, we significantly reduced the number of inputs to the models and their computational hardware requirements compared to models using the RMS current. With the introduction of confident learning, we improved the prediction accuracy of the models by 2% on average. The models achieved prediction accuracy ranging from 94% to 97.5%. The proposed method shows potential in applying to different kinds of electrical devices.
KW - Non-intrusive load monitoring (NILM)
KW - LED operational state classification
KW - Discrete Fourier transform
KW - Confident Learning
KW - Data-centric machine learning
KW - Machine Learning
U2 - https://doi.org/10.34238/tnu-jst.10115
DO - https://doi.org/10.34238/tnu-jst.10115
M3 - Article
SN - 1859-2171
VL - 229
SP - 121
EP - 132
JO - TNU Journal of Science and Technology
JF - TNU Journal of Science and Technology
IS - 07
M1 - 10115
ER -