JOURNAL ARTICLE

Simulation-based multi-objective muffler optimization using efficient global optimization

Jobin PuthuparampilPierre E. Sullivan

Year: 2020 Journal:   Noise Control Engineering Journal Vol: 68 (6)Pages: 441-458   Publisher: Institute of Noise Control Engineering of the USA

Abstract

Noise control of large diesel and natural gas generators is achieved through industrial mufflers. Design of such mufflers relies heavily on general guidelines. However, these guidelines are not suitable for complex mufflers; instead, computer-based optimization provides an effective means of design. Optimization of a plug flow muffler is conducted in this work with a multi-objective (transmission loss and pressure drop) finite element simulation-based optimization using the efficient global optimization (EGO) algorithm. The EGO algorithm is shown to be well suited for computationally expensive muffler optimization, performing vastly better than genetic algorithms, such as the commonly used NSGA-II algorithm.

Keywords:
Muffler Pressure drop Genetic algorithm Multidisciplinary design optimization Computer science Finite element method Transmission loss Topology optimization Engineering Mathematical optimization Mechanical engineering Mathematics Structural engineering

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Topics

Acoustic Wave Phenomena Research
Physical Sciences →  Engineering →  Biomedical Engineering
Vehicle Noise and Vibration Control
Physical Sciences →  Engineering →  Automotive Engineering
Engineering Applied Research
Physical Sciences →  Engineering →  Civil and Structural Engineering
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