Data Enabled Predictive Energy Management of a PV-Battery Smart Home Nanogrid

Abstract: 

This paper proposes a data-enabled predictive energy management strategy for a smart home nanogrid (NG) that includes a photovoltaic system and second-life battery energy storage. The key novelty is utilizing data-based forecasts of future load demand, weather conditions, electricity price, and power plant CO2 emissions to improve the NG system efficiency. Specifically, a load demand forecast model is developed using an artificial neural network (ANN). The forecast model predicts load demand signals for a model predictive controller (MPC). Simulation results show that the data-enabled predictive energy management strategy achieves 96%-98% of the optimal NG performance derived via dynamic programming (DP). Its sensitivity to the control horizon length and load demand forecast accuracy are also investigated.

Author: 
Sun, Chao
Sun, Fengchun
Moura, Scott J.
Publication date: 
July 1, 2015
Publication type: 
Conference Paper
Citation: 
Sun, C., Sun, F., & Moura, S. J. (2015). Data Enabled Predictive Energy Management of a PV-Battery Smart Home Nanogrid. 2015 American Control Conference (ACC), 1023–1028. https://doi.org/10.1109/ACC.2015.7170867