TY - GEN
T1 - A Dual-input Multi-label Classification Approach for Non-Intrusive Load Monitoring via Deep Learning
AU - Cimen, Halil
AU - Palacios-Garcia, Emilio J.
AU - Cetinkaya, Nurettin
AU - Vasquez, Juan C.
AU - Guerrero, Josep M.
N1 - Publisher Copyright:
© 2020 IEEE.
PY - 2020/5
Y1 - 2020/5
N2 - Non-intrusive load monitoring (NILM) is the process of obtaining appliance-level data from users' total electricity consumption data. These data can be of great benefit, especially in demand response applications. In this paper, a multi-label classification for NILM based on a two-input gated recurrent unit (GRU) is presented. Since the presented method is designed with a multi-label approach, great savings in training time are achieved. While a separate model is trained for each appliance in the literature, only one model is trained in the proposed model. Besides, the model was trained using two different inputs. The first is the total active power value consumed by the whole house. The second input is the Spikes obtained by analyzing this active power consumption. Simply put, spikes are obtained by analyzing the instant power changes in active power. Both inputs are evaluated with a convolutional layer and necessary features are extracted. Obtained features are fed into the GRU to be able to analyze time-dependent changes. The simulation results show that an additional input can slightly improve the analysis accuracy. Besides, it was found that the second input is useful especially in the analysis of short-term devices.
AB - Non-intrusive load monitoring (NILM) is the process of obtaining appliance-level data from users' total electricity consumption data. These data can be of great benefit, especially in demand response applications. In this paper, a multi-label classification for NILM based on a two-input gated recurrent unit (GRU) is presented. Since the presented method is designed with a multi-label approach, great savings in training time are achieved. While a separate model is trained for each appliance in the literature, only one model is trained in the proposed model. Besides, the model was trained using two different inputs. The first is the total active power value consumed by the whole house. The second input is the Spikes obtained by analyzing this active power consumption. Simply put, spikes are obtained by analyzing the instant power changes in active power. Both inputs are evaluated with a convolutional layer and necessary features are extracted. Obtained features are fed into the GRU to be able to analyze time-dependent changes. The simulation results show that an additional input can slightly improve the analysis accuracy. Besides, it was found that the second input is useful especially in the analysis of short-term devices.
KW - deep learning
KW - energy management
KW - microgrid
KW - Non-intrusive load monitoring
KW - recurrent neural network
UR - https://www.scopus.com/pages/publications/85091339170
U2 - 10.1109/ZINC50678.2020.9161776
DO - 10.1109/ZINC50678.2020.9161776
M3 - Conference proceeding
AN - SCOPUS:85091339170
T3 - 2020 Zooming Innovation in Consumer Technologies Conference, ZINC 2020
SP - 259
EP - 263
BT - 2020 Zooming Innovation in Consumer Technologies Conference, ZINC 2020
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 2020 Zooming Innovation in Consumer Technologies Conference, ZINC 2020
Y2 - 26 May 2020 through 27 May 2020
ER -