Welcome to Scholar Publishing Group

International Journal of Neural Network, 2021, 2(2); doi: 10.38007/NN.2021.020201.

A Gear Decision of Hybrid Electric Truck Based on Neural Network

Author(s)

Zhen Cheng

Corresponding Author:
Zhen Cheng
Affiliation(s)

Wuhan University of Bioengineering, Wuhan, China

Abstract

The basic shifting law of hybrid electric vehicles is formulated in a static environment and cannot adapt to the complex and changeable vehicle operating environment. Therefore, its gear decision must comprehensively consider the driver's driving intention, road conditions and vehicle operation parameters, etc. It can effectively solve the unnecessary shifting phenomenon and the cyclic shifting problem of the vehicle under complex road surface, and can improve the dynamic performance and economy of the vehicle. The purpose of this paper is to analyze the gear position decision of hybrid electric truck based on neural network. In the experiment, the main parameters of the hybrid truck are determined, and the gear prediction algorithm is used. Experiments are carried out in two aspects: the solution of the optimal dynamic shift curve of the hybrid truck and the example simulation and analysis of gear decision based on neural network.

Keywords

Neural Network, Hybrid, Truck Gear, Decision Analysis

Cite This Paper

Zhen Cheng. A Gear Decision of Hybrid Electric Truck Based on Neural Network. International Journal of Neural Network (2021), Vol. 2, Issue 2: 1-9. https://doi.org/10.38007/NN.2021.020201.

References

[1] Amer Y A, El-Sayed A T, El-Salam M. Outcomes of the NIPPF Controller Linked to a Hybrid Rayleigh – Van der Pol- Duffing Oscillator. Control Engineering and Applied Informatics. (2020) 22(3):33-41.

[2] Hayslett S, Maanen K V, Wenzel W, et al. The 48-V Mild Hybrid: Benefits, Motivation, and the Future Outlook. IEEE Electrification Magazine. (2020) 8(2):11-17. https://doi.org/10.1109/MELE.2020.2985481

[3] Li G, Goerges D. Fuel-Efficient Gear Shift and Power Split Strategy for Parallel HEVs Based on Heuristic Dynamic Programming and Neural Networks. IEEE Transactions on Vehicular Technology. (2019) 68(10):9519-9528. https://doi.org/10.1109/TVT.2019.2927751

[4] Jaime G, Anibal P, Samuel L, et al. Glomerulus Classification and Detection Based on Convolutional Neural Networks. Journal of Imaging. (2018) 4(1):20-20. https://doi.org/10.3390/jimaging4010020

[5] He C H, Tian D, Moatimid G M, et al. Hybrid Rayleigh–Van Der Pol–Duffing Oscillator: Stability Analysis and Controller. Journal of Low Frequency Noise, Vibration and Active Control. (2021) 41(1):244-268. https://doi.org/10.1177/14613484211026407

[6] Park C, Park H, Lee J, et al. Photovoltaic Field-Effect Transistors Using a MoS2and Organic Rubrene van der Waals Hybrid. ACS Applied Materials & Interfaces. (2018) 10(35):29848-29856. https://doi.org/10.1021/acsami.8b11559

[7] Tros F. Vernieuwing en hybridisering van medezeggenschap in bedrijven. Tijdschrift voor Arbeidsvraagstukken. (2020) 36(3):327-343. https://doi.org/10.5117/2020.036.003.009

[8] Dinther D V, Sharif B, S.J.A.M. van den Eijnden, et al. Overcoming Performance Limitations of Linear Control with Hybrid Integrator-Gain Systems - ScienceDirect. IFAC-PapersOnLine. (2021) 54(5):289-294. https://doi.org/10.1016/j.ifacol.2021.08.513

[9] Yilmaz D, Woodward W, Duin A V. Machine Learning-Assisted Hybrid ReaxFF Simulations. Journal of Chemical Theory and Computation. (2021) 17(11):6705-6712. https://doi.org/10.1021/acs.jctc.1c00523

[10] Nguyen Q, Rousset E, Nguyen V, et al. Covalent Grafting of Ruthenium Complexes on Iron Oxide Nanoparticles: Hybrid Materials for Photocatalytic Water Oxidation. ACS applied materials & interfaces. (2021) 13(45):53829-53840. https://doi.org/10.1021/acsami.1c15051

[11] Pas E, Paula E M, Sultana H, et al. Effects of Seeding Rate and Hybrid Relative Maturity on Yield, Nutrient Composition, Ruminal in Vitro Neutral Detergent Fiber Digestibility, and Predicted Milk Yield of Dairy Cows in Whole-Plant Corn Forage in Subtropical Conditions - ScienceDirect. Applied Animal Science. (2021) 37(2):106-114. https://doi.org/10.15232/aas.2020-02082

[12] Trinh P V, Anh N N, Cham N T, et al. Enhanced Power Conversion Efficiency of An N-Si/PEDOT: PSS Hybrid Solar Cell Using Nanostructured Silicon and Gold Nanoparticles. RSC Adv. (2021) 12(17):10514-10521. https://doi.org/10.1039/D2RA01246D

[13] Ning K, Bronkhorst E, Bremers A, et al. Wear Behavior of a Microhybrid Composite Vs. A Nanocomposite in the Treatment of Severe Tooth Wear Patients: A 5-Year Clinical Study. Dental Materials: Official Publication of the Academy of Dental Materials. (2021) 37(12):1819-1827. https://doi.org/10.1016/j.dental.2021.09.011

[14] Trang N V, Thuy P T, Thanh D, et al. Benzofuran-Stilbene Hybrid Compounds: An Antioxidant Assessment -a DFT study. RSC Advances. (2021) 11(21):12971-12980. https://doi.org/10.1039/D1RA01076J

[15] Marcano D, Moussawi M A, Anyushin A V, et al. Versatile Post-Functionalisation Strategy for the Formation of Modular Organic–Inorganic Polyoxometalate Hybrids. Chem. Sci. (2021) 13(10):2891-2899. https://doi.org/10.1039/D1SC06326J

[16] Liu W, Kaczmarek A M, Rijckaert H, et al. Chemical Sensors Based on A Eu( Iii )-Centered Periodic Mesoporous Organosilica Hybrid Material Using Picolinic Acid As An Efficient Secondary Ligand. Dalton Transactions. (2021) 50(32):11061-11070. https://doi.org/10.1039/D1DT01767E

[17] Willems P, Fels U, An S, et al. Use of Hybrid Data-Dependent and -Independent Acquisition Spectral Libraries Empowers Dual-Proteome Profiling. Journal of Proteome Research. (2021) 20(2):1165-1177. https://doi.org/10.1021/acs.jproteome.0c00350

[18] Cmelova P, Vargova D, Sebesta R. Hybrid Peptide–Thiourea Catalyst for Asymmetric Michael Additions of Aldehydes to Heterocyclic Nitroalkenes. The Journal of Organic Chemistry. (2021) 86(1):581-592. https://doi.org/10.1021/acs.joc.0c02251

[19] Dahooie J H, Meidute-Kavaliauskiene I, Vanaki A S, et al. Development of a Firm Export Performance Measurement Model Using a Hybrid Multi-Attribute Decision-Making Method. Management Decision. (2020) 58(11):2349-2385. https://doi.org/10.1108/MD-09-2019-1156