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Machine-Learning-Based Modelling of Electric Powertrain Noise Control Treatments Hexagon

SAE Technical Papers (1906-current) Available online

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Format:
Book
Conference/Event
Author/Creator:
Kocsis, Attila, author.
Contributor:
Jacqmot, Jonathan
Conference Name:
Noise and Vibration Conference & Exhibition (2023-05-15 : Grand Rapids, Michigan, United States)
Language:
English
Physical Description:
1 online resource cm
Place of Publication:
Warrendale, PA SAE International 2023
Summary:
Encapsulation of electric powertrains is a booming topic with the electrification of vehicles. It is an efficient way of reducing noise radiated by the machines even in later stages of the design and without altering the electromagnetic performance. However, it is still difficult to define the best possible treatment. The locations, thicknesses and material compositions need to be optimized within given constraints to reach maximum noise reduction while keeping added mass and cost at minimum. In this paper, a methodology to design the encapsulation based on numerical vibro-acoustic simulations is presented. In a first step, the covered areas are identified through post-processing of a finite element acoustic radiation model of the bare powertrain. In a second step, a design of experiment is performed to assess the influence of various cover parameters on the acoustic radiation results. This second step can be hugely computationally expensive as the number of required virtual experiments increases exponentially with the number of treated regions and parameters for each treated region. In this chapter, we present a physics-based reduced-order model to overcome this difficulty and do design of experiments in a much more affordable manner. It is then enriched with machine learning to provide finer tuning of the treatment definition. This would allow the final designer to iterate between treatment strategy in the matter of seconds, paving the road for an advanced optimization algorithm. The accuracy of the presented models is detailed
Notes:
Vendor supplied data
Publisher Number:
2023-01-1132
Access Restriction:
Restricted for use by site license

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