Acoustic Performance of Exhaust Muffler Based Genetic Algorithms and Artificial Neural Network
Abstract
The noise level was one of the important indicators as a measure of the quality and performance of the diesel engine.Exhaust noise in diesel engines machine accounted for an important proportion of installed performance exhaust muffler and it was an effective way to control exhaust noise. This article using orthogonal test program for the muffler structure parameters as input to the sound pressure level and diesel fuel each output artificial neural network (BP network) learning sample. Matlab artificial neural network toolbox to complete the training of the network, and better noise performance and fuel consumption rate performance muffler internal structure parameters combination was obtained through genetic algorithm gifted collaborative validation of artificial neural networks and genetic algorithms to optimize application exhaust muffler design is entirely feasible.
Full Text:
PDFReferences
Sullivan JW, Crocker MJ. Analysis of concentric tube resonators having unpartitioned cavities. Acoust Soc. 1978; 64: 207–222.
Sullivan JW. A method of modeling perforated tube muffler components I: theory. Acoust Soc. 1979; 66: 772–780.
Jayaraman K, Yam K. Decoupling approach to modeling perforated tube muffler component. Acoust Soc. 1981; 69(2): 390–396.
Thawani PT, Jayaraman K. Modeling and applications of straight-through resonators. Acoust Soc. 1983; 73(4): 1387– 9.
Munjal ML, Rao KN, Sahasrabudhe AD. Aeroacoustic analysis of perforated muffler components. J Sound Vib. 1987; 114(2): 173–190.
Bai shuzhan, Li guoxiang, Wang haoguo. Based on neural network and the optimization design method of exhaust muffler. Journal of agricultural machinery. 2005; 36(12): 153-155.
Cheng feng. Diseal exhaust design based artificial neural network. Thesis. Fuzhou: Fujian Agriculture University; 2002.
Zhang guosheng. Research and software development of optima design of automobile exhaust muffler based on genetic algorithm. Thesis. Chongqing: Chongqing University; 2005.
Lai Xinsheng. Combination of GA and BP Networks for Optimization. Journal of Guizhou University (Natural Science). 2004; 21(2): 179-184.
Tao yuehua, Xia youming. Optimization Research of BP Neural Network and Genetic Algorithm Based on Numerical Calculation Method. Thesis. Kunming: Yunnan Normal University; 2006.
Weng honglin. Test research and theory compute of diseal. Thesis. Fuzhou: Fujian Agriculture University; 1996.
Han li, Zhang zhen-yu. The application of immune genetic algorithm in main steam temperature of PID control of BP network. Physics Procedia. 2012; 24: 80-86.
Zhengjun Liu, Aixia LIU, Changyao Wang, Zheng Niu. Evolving neural network using real coded genetic algorithm (GA) for multispectral image classification. Future Generation Computer System. 2004; 20: 1119-1129.
LI Hui, HU Cai-xia, Li ying. Application of the purification of materials Based on GA-BP. Energy Procedia. 2012; 17: 762-769.
Jafar Mohammed. A study on the suitability of genetic algorithm for adaptive channel equalization. International journal of electrical and computer engineering. 2012; 2(3): 285-292.
Xuesong Yan, Qinghua Wu, Can Zhang. An improved genetic algorithm and its application. TELKOMNIKA. 2012; 10(5): 1081-1086.
DOI: http://doi.org/10.12928/telkomnika.v11i2.931
Refbacks
- There are currently no refbacks.
This work is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License.
TELKOMNIKA Telecommunication, Computing, Electronics and Control
ISSN: 1693-6930, e-ISSN: 2302-9293
Universitas Ahmad Dahlan, 4th Campus
Jl. Ringroad Selatan, Kragilan, Tamanan, Banguntapan, Bantul, Yogyakarta, Indonesia 55191
Phone: +62 (274) 563515, 511830, 379418, 371120
Fax: +62 274 564604