Non-linear and multi-domain modelling of a permanent magnet linear synchronous machine for free piston engine generators

Brosnan P, Tian G, Zhang H, Wu Z, Jin Y (2022)
Energy Conversion and Management: X 14: 100195.

Zeitschriftenaufsatz | Veröffentlicht | Englisch
 
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Brosnan, Patrick; Tian, Guohong; Zhang, Hongguang; Wu, Zhong; Jin, YaochuUniBi
Abstract / Bemerkung
The Free Piston Engine (FPE) can be considered a viable and promising option in future low-carbon technology development. When coupled to the Linear Electric Machine (LEM) to produce electrical energy, its characteristic non-linear dynamics typically have been described as linear when considering a systems-level modelling approach. This paper presents a multi-domain model of a Permanent Magnet Linear Synchronous Machine (PMLSM) for Free Piston Engine Generators (FPEG) and offers a detailed non-linear mathematical description of the machine dynamics. The model was implemented in a free-piston expander system and validated against experimental data from a test rig that has identical parameters. The simulation results indicate a strong correlation to the experimental data, which captured the dominant dynamics of the PMLSM and prove the satisfactory accuracy and performance of the model, together with a similar voltage and current output trace, indicating a cyclic energy output error of approximately 10 %. This paper aims to extend the current knowledge and literature within FPEG PMLSM design by considering the inherent non-linearity and multi-directional nature of the system dynamics and its interactions with multi-physical domains.
Erscheinungsjahr
2022
Zeitschriftentitel
Energy Conversion and Management: X
Band
14
Art.-Nr.
100195
ISSN
2590-1745
Page URI
https://pub.uni-bielefeld.de/record/2978354

Zitieren

Brosnan P, Tian G, Zhang H, Wu Z, Jin Y. Non-linear and multi-domain modelling of a permanent magnet linear synchronous machine for free piston engine generators. Energy Conversion and Management: X. 2022;14: 100195.
Brosnan, P., Tian, G., Zhang, H., Wu, Z., & Jin, Y. (2022). Non-linear and multi-domain modelling of a permanent magnet linear synchronous machine for free piston engine generators. Energy Conversion and Management: X, 14, 100195. https://doi.org/10.1016/j.ecmx.2022.100195
Brosnan, Patrick, Tian, Guohong, Zhang, Hongguang, Wu, Zhong, and Jin, Yaochu. 2022. “Non-linear and multi-domain modelling of a permanent magnet linear synchronous machine for free piston engine generators”. Energy Conversion and Management: X 14: 100195.
Brosnan, P., Tian, G., Zhang, H., Wu, Z., and Jin, Y. (2022). Non-linear and multi-domain modelling of a permanent magnet linear synchronous machine for free piston engine generators. Energy Conversion and Management: X 14:100195.
Brosnan, P., et al., 2022. Non-linear and multi-domain modelling of a permanent magnet linear synchronous machine for free piston engine generators. Energy Conversion and Management: X, 14: 100195.
P. Brosnan, et al., “Non-linear and multi-domain modelling of a permanent magnet linear synchronous machine for free piston engine generators”, Energy Conversion and Management: X, vol. 14, 2022, : 100195.
Brosnan, P., Tian, G., Zhang, H., Wu, Z., Jin, Y.: Non-linear and multi-domain modelling of a permanent magnet linear synchronous machine for free piston engine generators. Energy Conversion and Management: X. 14, : 100195 (2022).
Brosnan, Patrick, Tian, Guohong, Zhang, Hongguang, Wu, Zhong, and Jin, Yaochu. “Non-linear and multi-domain modelling of a permanent magnet linear synchronous machine for free piston engine generators”. Energy Conversion and Management: X 14 (2022): 100195.
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2023-04-26T14:41:46Z
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