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Original Articles

Numerical Modeling of Churning Power Loss of Gear System Based on Moving Particle Method

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Pages 182-193 | Received 13 Jul 2019, Accepted 15 Oct 2019, Published online: 19 Nov 2019
 

Abstract

Churning power losses are an important portion of transmission load-independent power losses, especially in high-speed condition and dip-lubricated gearboxes with high immersion depth. Generally, it is difficult to calculate the churning power losses due to the parameters of stirring oil and many other operating conditions. In this article, a method is proposed to determine the factors that influence churning power losses in gearboxes. Firstly, based on the moving particle semi-implicit (MPS) method, a numerical model of single-stage gears stirring oil is established. Then the accuracy of the established model is validated experimentally. Finally, the orthogonal simulation analysis is carried out to analyze the influence of gear rotation speed, tooth width, helix angle, immersion depth, and oil temperature on the churning power losses.

Acknowledgement

Thanks to shonCloud Technology (Hangzhou, China) and shonDynamics GmbH (Karlsruhe, Germany) for providing the code shonDy and the simulation technical support.

Additional information

Funding

This project was supported by National Natural Science Foundation of China (Grant No. 51975080) and the Science and Technology Research Program of Chongqing Municipal Education Commission (Grant No. KJQN201901121).

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