TY - GEN
T1 - Energy Demand Prediction with Optimized Clustering-Based Federated Learning
AU - Perry, Dylan
AU - Wang, Ning
AU - Ho, Shen Shyang
N1 - Publisher Copyright:
© 2021 IEEE.
PY - 2021
Y1 - 2021
N2 - The rapid growth in pervasive Internet-of-Things (IoT) and Deep Learning (DL) is creating a huge demand for applying DL on IoT systems. However, it is non-trivial to train highly accurate DL models in such scenarios due to the following two challenges: (1) individual IoT devices may not have sufficient training data, and (2) simply combining all sensory data across all devices may cause performance degradation due to data imbalance and varying temporal patterns across different devices. The objective of this paper is to achieve high-accurate prediction models for each device in an IoT system. We propose a federated learning approach for IoT systems driven by trend-based clustering for energy demand prediction for Electric Vehicle (EV) charging station network. We first apply a time-series clustering method to identify stations with similar temporal demand patterns. Using time-series data from stations in a cluster, a single Long-Short Term Memory (LSTM) network is trained using FedAvg algorithm for energy demand prediction for all the stations in the cluster. Experimental results on a real-world energy usage dataset from an EV charging station network show that our proposed approach is very competitive against baseline federated learning approaches. In particular, the energy demand prediction error decreases by 80%.
AB - The rapid growth in pervasive Internet-of-Things (IoT) and Deep Learning (DL) is creating a huge demand for applying DL on IoT systems. However, it is non-trivial to train highly accurate DL models in such scenarios due to the following two challenges: (1) individual IoT devices may not have sufficient training data, and (2) simply combining all sensory data across all devices may cause performance degradation due to data imbalance and varying temporal patterns across different devices. The objective of this paper is to achieve high-accurate prediction models for each device in an IoT system. We propose a federated learning approach for IoT systems driven by trend-based clustering for energy demand prediction for Electric Vehicle (EV) charging station network. We first apply a time-series clustering method to identify stations with similar temporal demand patterns. Using time-series data from stations in a cluster, a single Long-Short Term Memory (LSTM) network is trained using FedAvg algorithm for energy demand prediction for all the stations in the cluster. Experimental results on a real-world energy usage dataset from an EV charging station network show that our proposed approach is very competitive against baseline federated learning approaches. In particular, the energy demand prediction error decreases by 80%.
UR - http://www.scopus.com/inward/record.url?scp=85127238018&partnerID=8YFLogxK
UR - http://www.scopus.com/inward/citedby.url?scp=85127238018&partnerID=8YFLogxK
U2 - 10.1109/GLOBECOM46510.2021.9685647
DO - 10.1109/GLOBECOM46510.2021.9685647
M3 - Conference contribution
AN - SCOPUS:85127238018
T3 - 2021 IEEE Global Communications Conference, GLOBECOM 2021 - Proceedings
BT - 2021 IEEE Global Communications Conference, GLOBECOM 2021 - Proceedings
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 2021 IEEE Global Communications Conference, GLOBECOM 2021
Y2 - 7 December 2021 through 11 December 2021
ER -