The demand for the development of hybrid electric locomotives is increasing due to increased demand and cost of diesel oil, uncertainty in the steady supply of oil, and increased emissions standards. Electrical energy is lost from diesel-electric locomotives in the form of heat during dynamic braking. Using a regenerative braking system can improve the overall efficiency as it can be used later to provide traction force during acceleration. The objective of this study is to evaluate experimentally battery performance considering different discharge and charge rate, and investigate the thermal management requirements and thermal runaway effect of the batteries under a variety of environmental conditions. This was done in an environmental chamber, which controls temperature and humidity. This chamber is also fitted with an external window designed to allow thermal imaging from outside the unit. The batteries were monitored with thermal sensors and a thermal imaging camera while they were run through different load scenarios. Loads were applied using a computerized battery analyzer, which allows control over discharge rates and load cycles. Results indicate high discharge rates, above 1 C, and low operating temperatures, below 20 °C, greatly diminish capacity.
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December 2014
Research-Article
Experimental Investigation of the Thermal Characteristics of Li-Ion Battery for Use in Hybrid Locomotives
Andrew Arendas,
Andrew Arendas
Department of Mechanical Engineering,
Northern Illinois University
,DeKalb, IL 60115
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Pradip Majumdar,
Pradip Majumdar
1
Department of Mechanical Engineering,
e-mail: pmajumdar@niu.edu
Northern Illinois University
,DeKalb, IL 60115
e-mail: pmajumdar@niu.edu
1Corresponding author.
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David Schroeder,
David Schroeder
Department of Technology,
Northern Illinois University
,DeKalb, IL 60115
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S. Rao Kilaparti
S. Rao Kilaparti
Department of Technology,
Northern Illinois University
,DeKalb
, IL 60115
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Andrew Arendas
Department of Mechanical Engineering,
Northern Illinois University
,DeKalb, IL 60115
Pradip Majumdar
Department of Mechanical Engineering,
e-mail: pmajumdar@niu.edu
Northern Illinois University
,DeKalb, IL 60115
e-mail: pmajumdar@niu.edu
David Schroeder
Department of Technology,
Northern Illinois University
,DeKalb, IL 60115
S. Rao Kilaparti
Department of Technology,
Northern Illinois University
,DeKalb
, IL 60115
1Corresponding author.
Contributed by the Heat Transfer Division of ASME for publication in the JOURNAL OF THERMAL SCIENCE AND ENGINEERING APPLICATIONS. Manuscript received March 11, 2013; final manuscript received January 2, 2014; published online May 2, 2014. Assoc. Editor: Bengt Sunden.
J. Thermal Sci. Eng. Appl. Dec 2014, 6(4): 041003 (7 pages)
Published Online: May 2, 2014
Article history
Received:
March 11, 2013
Revision Received:
January 2, 2014
Citation
Arendas, A., Majumdar, P., Schroeder, D., and Kilaparti, S. R. (May 2, 2014). "Experimental Investigation of the Thermal Characteristics of Li-Ion Battery for Use in Hybrid Locomotives." ASME. J. Thermal Sci. Eng. Appl. December 2014; 6(4): 041003. https://doi.org/10.1115/1.4026987
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