Optimizing Drive Force Allocation in Hydraulic Hybrid Motor-Assisted Systems Using Machine Learning

Authors

  • Dr.P. Nagasekhar Reddy,Dr. P. Ram Kishore Kumar Reddy,Mr. Ch. Vinay Kumar

Keywords:

Hydraulic Hybrid Motor, ML, Optimized drive, Motor Assisted model.

Abstract

Hydraulic hybrid powertrains offer a feasible solution for urban mobility in light of the increasing need for energy-efficient and eco-friendly automobiles. This research presents an innovative hydraulic hybrid vehicle including wheel motors, aimed at improving power output and fuel efficiency. A predictive simulation model of the proposed vehicle is created, with system characteristics customized to fulfill particular power performance criteria. A diminutive engine, with its maximum power diminished by 11.96%, is chosen to enhance efficiency.

References

Fu, X., Zhang, Q., Tang, J., & Wang, C. (2019). Parameter matching optimization of a powertrain system of hybrid electric vehicles based on multi-objective optimization. Electronics, 8(8), 875.

Song, D., Li, L., Zeng, X., Li, S., Li, G., Li, G., ... & Li, X. (2018). Hardware-in-the loop validation of speed synchronization controller for a heavy vehicle with Hydraulics AddiDrive System. Advances in Mechanical Engineering, 10(4), 1687814018767169.

Liga, A. (2018). Development of microfluidic sample preparation devices for circulating nucleic acids isolation at the point of care (Doctoral dissertation, Heriot Watt University).

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Published

2023-04-21

How to Cite

Dr.P. Nagasekhar Reddy,Dr. P. Ram Kishore Kumar Reddy,Mr. Ch. Vinay Kumar. (2023). Optimizing Drive Force Allocation in Hydraulic Hybrid Motor-Assisted Systems Using Machine Learning . Journal of Computational Analysis and Applications (JoCAAA), 31(2), 366–377. Retrieved from https://eudoxuspress.com/index.php/pub/article/view/1792

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