James Marcicki
Ford Motor Company
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Publication
Featured researches published by James Marcicki.
IEEE Transactions on Control Systems and Technology | 2016
Alexander Bartlett; James Marcicki; Simona Onori; Giorgio Rizzoni; Xiao Guang Yang; Ted Miller
Increased demand for hybrid and electric vehicles has motivated research to improve onboard state of charge (SOC) and state of health estimation (SOH). In particular, batteries with composite electrodes have become popular for automotive applications due to their ability to balance energy density, power density, and cost by adjusting the amount of each material within the electrode. SOH algorithms that do not use electrochemical-based models may have more difficulty maintaining an accurate battery model as the cell ages under varying degradation modes, such as lithium consumption at the solid-electrolyte interface or active material dissolution. Furthermore, efforts to validate electrochemical model-based state estimation algorithms with experimental aging data are limited, particularly for composite electrode cells. In this paper, we first present a reduced-order electrochemical model for a composite LiMn2O4-LiNi1/3Mn1/3Co1/3O2 electrode battery that predicts the surface and bulk lithium concentration of each material in the composite electrode, as well as the current split between each material. The model is then used in dual-nonlinear observers to estimate the cell SOC and loss of cyclable lithium over time. Three different observer types are compared: 1) the extended Kalman filter; 2) fixed interval Kalman smoother; and 3) particle filter. Finally, an experimental aging campaign is used to compare the estimated capacities for five different cells with the measured capacities over time.
conference on decision and control | 2013
Alexander Bartlett; James Marcicki; Simona Onori; Giorgio Rizzoni; Xiao Guang Yang; Ted Miller
Composite electrode lithium-ion batteries can offer improved energy and power density, as well as increased cycle life compared to batteries with a single active material electrode. Both available power and cell life are functions of the local current allocated to each composite material, however there are no examples in literature of electrochemical-based models of composite electrode cells that are suitable for estimation and control. We present a reduced order, electrochemical model of a composite LiMn2O4 - LiNi1/3Mn1/3Co1/3O2 cell that predicts bulk and surface concentrations of each composite material, as well as the local current allocated to each material. Observability properties are analyzed by approximating the system as linear over certain operating conditions. A solution method is developed to use the model in an extended Kalman filter for online state of charge estimation, which is validated with experimental data.
ASME 2011 Dynamic Systems and Control Conference and Bath/ASME Symposium on Fluid Power and Motion Control, Volume 2 | 2011
James Marcicki; Giorgio Rizzoni; A. T. Conlisk; Marcello Canova
Lithium-ion batteries continue to garner interest as an energy storage system in stationary and vehicular applications. Considerable research effort is currently devoted to investigating the physical and chemical phenomena leading to aging, namely internal resistance growth and capacity fade. This paper presents a reduced-order model that characterizes the dynamic behavior of a Lithium-ion battery cell. The model is derived from the governing electrochemical principles and is applied to a Li-ion cell based upon a natural graphite negative electrode and iron phosphate positive electrode. The paper describes the modeling approach and equations, followed by a validation with experimental data. A sensitivity analysis is then conducted to investigate the influence of the model parameters on the cell internal resistance and capacity. The results of this study allows one to identify a subset of model parameters that may evolve throughout the battery’s life, providing guidance towards establishing which parameter trajectories must be quantified as batteries age.Copyright
Journal of Power Sources | 2013
James Marcicki; Marcello Canova; A. Terrence Conlisk; Giorgio Rizzoni
Archive | 2012
James Marcicki
Meeting Abstracts | 2013
James Marcicki; Alex Bartlett; Marcello Canova; A. Terrence Conlisk; Giorgio Rizzoni; Yann Guezennec; Xiao Guang Yang; Ted Miller
Journal of The Electrochemical Society | 2016
Guodong Fan; Ke Pan; Marcello Canova; James Marcicki; Xiao Guang Yang
Journal of The Electrochemical Society | 2014
James Marcicki; Xiao Guang Yang
Journal of The Electrochemical Society | 2017
Guodong Fan; Ke Pan; Gian Luca Storti; Marcello Canova; James Marcicki; Xiao Guang Yang
Journal of The Electrochemical Society | 2017
James Marcicki; Min Zhu; Alexander Bartlett; Xiao Guang Yang; Yijung Chen; Theodore James Miller; Pierre L'Eplattenier; Inaki Caldichoury