Title :
System Identification and Estimation Framework for Pivotal Automotive Battery Management System Characteristics
Author :
Pattipati, Bharath ; Sankavaram, Chaitanya ; Pattipati, Krishna R.
Author_Institution :
Electr. & Comput. Eng. Dept., Univ. of Connecticut, Storrs, CT, USA
Abstract :
The battery management system (BMS) is an integral part of an automobile. It protects the battery from damage, predicts battery life, and maintains the battery in an operational condition. The BMS performs these tasks by integrating one or more of the functions, such as protecting the cell, thermal management, controlling the charge-discharge, determining the state of charge (SOC), state of health (SOH), and remaining useful life (RUL) of the battery, cell balancing, data acquisition, communication with on-board and off-board modules, as well as monitoring and storing historical data. In this paper, we propose a BMS that estimates the critical characteristics of the battery (such as SOC, SOH, and RUL) using a data-driven approach. Our estimation procedure is based on a modified Randles circuit model consisting of resistors, a capacitor, the Warburg impedance for electrochemical impedance spectroscopy test data, and a lumped parameter model for hybrid pulse power characterization test data. The resistors in a Randles circuit model usually characterize the self-discharge and internal resistance of the battery, the capacitor generally represents the charge stored in the battery, and the Warburg impedance represents the diffusion phenomenon. The Randles circuit parameters are estimated using a frequency-selective nonlinear least squares estimation technique, while the lumped parameter model parameters are estimated by the prediction error minimization method. We investigate the use of support vector machines (SVMs) to predict the capacity fade and power fade, which characterize the SOH of a battery, as well as estimate the SOC of the battery. An alternate procedure for estimating the power fade and energy fade from low-current Hybrid Pulse Power characterization (L-HPPC) test data using the lumped parameter battery model has been proposed. Predictions of RUL of the battery are obtained by support vector regression of the power fade and capacity fade estimates. Survival - - function estimates for reliability analysis of the battery are obtained using a hidden Markov model (HMM) trained using time-dependent estimates of capacity fade and power fade as observations. The proposed framework provides a systematic way for estimating relevant battery characteristics with a high-degree of accuracy.
Keywords :
battery management systems; battery powered vehicles; capacitors; electrochemical impedance spectroscopy; hidden Markov models; least squares approximations; lumped parameter networks; nonlinear estimation; parameter estimation; pulsed power technology; reliability; remaining life assessment; resistors; secondary cells; state estimation; support vector machines; HMM; L-HPPC test data; SVM; Warburg impedance; battery RUL prediction; battery SOC estimation; battery SOH estimation; battery life prediction; battery reliability analysis; capacitor; capacity fade estimation; damage protection; electrochemical impedance spectroscopy test data; energy fade estimation; frequency-selective nonlinear least squares estimation technique; hidden Markov model; low-current hybrid pulse power characterization test data; lumped parameter model; modified Randles circuit model; pivotal automotive battery management system characteristics; power fade estimation; prediction error minimization method; remaining useful life; resistors; self-discharge; state of charge; state of health; support vector machines; system estimation; system identification; time-dependent estimates; Battery charge measurement; Battery management systems; Hidden Markov models; Hybrid electric vehicles; Remaining life assessment; Support vector machines; Battery management system (BMS); hidden Markov model (HMM); remaining useful life (RUL); state of charge (SOC); state of health (SOH); support vector machines (SVMs);
Journal_Title :
Systems, Man, and Cybernetics, Part C: Applications and Reviews, IEEE Transactions on
DOI :
10.1109/TSMCC.2010.2089979