학술논문

Analysis of NARXNN for State of Charge Estimation for Li-ion Batteries on various Drive Cycles
Document Type
Conference
Source
2020 8th International Conference on Power Electronics Systems and Applications (PESA) Power Electronics Systems and Applications (PESA), 2020 8th International Conference on. :1-4 Dec, 2020
Subject
Aerospace
General Topics for Engineers
Power, Energy and Industry Applications
Robotics and Control Systems
Transportation
Lithium-ion batteries
Neural networks
Machine learning
Electric vehicles
Power electronics
State of charge
Testing
Electric Vehicles
Lithium Ion
State of Charge
NARXNN
Machine Learning
Drive Cycles
Language
Abstract
Electric Vehicles (EVs) are rapidly increasing in popularity as they are environment friendly. Lithium Ion batteries are at the heart of EV technology and contribute to most of the weight and cost of an EV. State of Charge (SOC) is a very important metric which helps to predict the range of an EV. There is a need to accurately estimate available battery capacity in a battery pack such that the available range in a vehicle can be determined. There are various techniques available to estimate SOC. In this paper, a data driven approach is selected and a Nonlinear Autoregressive Network with Exogenous Inputs Neural Network (NARXNN) is explored to accurately estimate SOC. NARXNN has been shown to be superior to conventional Machine Learning techniques available in the literature. The NARXNN model is developed and tested on various EV Drive Cycles like LA92, US06, UDDS and HWFET to test its performance on realworld scenarios. The model is shown to outperform conventional statistical machine learning methods and achieve a Mean Squared Error (MSE) in the 10 −5 range.