期刊文献+

The optimum design of the pressure control spring of the relief valve based on neural networks 被引量:1

The optimum design of the pressure control spring of the relief valve based on neural networks
下载PDF
导出
摘要 Based on the traditional optimization methods about the pressure control spring of the relief valve and combined with the advantages of neural network, this paper put forward the optimization method with many parameters and a lot of constraints based on neural network. The object function of optimization is transformed into the energy function of the neural network and the mathematical model of neural network optimization about the pressure control spring of the relief valve is set up in this method which also puts for ward its own algorithm. An example of application shows that network convergence gets stable state of minimization object function E, and object function converges to the utmost minimum point with steady function, then best solution is gained, which makes the design plan better. The algorithm of solution for the problem is effective about the optimum design of the pressure control spring and improves the performance target. Based on the traditional optimization methods about the pressure control spring of the relief valve and combined with the advantages of neural network, this paper put forward the optimization method with many parameters and a lot of constraints based on neural network. The object function of optimization is transformed into the energy function of the neural network and the mathematical model of neural network optimization about the pressure control spring of the relief valve is set up in this method which also puts forward its own algorithm. An example of application shows that network convergence gets stable state of minimization object function E, and object function converges to the utmost minimum point with steady function, then best solution is gained, which makes the design plan better. The algorithm of solution for the problem is effective about the optimum design of the pressure control spring and improves the performance target.
作者 傅晓锦
出处 《Journal of Coal Science & Engineering(China)》 2006年第1期119-123,共5页 煤炭学报(英文版)
关键词 神经网络 优化设计 安全阀 弹簧 压力控制 spring, neural networks, optimal design, relief valve
  • 相关文献

参考文献5

二级参考文献1

  • 1刘杨松 李文方.机械设计的模糊学方法[M].机械工业出版社,1996..

共引文献12

同被引文献14

  • 1A. Gnanavelu,N. Kapur,A. Neville,J.F. Flores,N. Ghorbani.A numerical investigation of a geometry independent integrated method to predict erosion rates in slurry erosion[J]. Wear . 2011 (5)
  • 2Gadhikar A A,Sharma A,Goel D B,et al.Fabrication and testing of slurry pot erosion tester. Transactions of the Indian Institute of Metals . 2011
  • 3Tabakoff.W,Wakeman.T.Measured particle rebound characteristics useful for erosion prediction. American Society of Mechanical Engineers(Paper)82-GT-170 . 1982
  • 4Mazumder, Quamrul H.,Shirazi, Siamack A.,McLaury, Brenton.Experimental investigation of the location of maximum erosive wear damage in elbows. Journal of Pressure Vessel Technology, Transactions of the ASME . 2008
  • 5Finnie I,Stevick G R,Ridgely J R.The influence of impingement angle on the erosion of ductile metals by angular abrasive particles. Wear . 1992
  • 6A.J. Burnett,S.R. De Silva,A.R. Reed.??Comparisons between “sand blast” and “centripetal effect accelerator” type erosion testers(J)Wear . 1995
  • 7Subhash N. Shah,Samyak Jain.??Coiled tubing erosion during hydraulic fracturing slurry flow(J)Wear . 2007 (3)
  • 8Girish R. Desale,Bhupendra K. Gandhi,S.C. Jain.??Slurry erosion of ductile materials under normal impact condition(J)Wear . 2007 (3)
  • 9Girish R. Desale,C.P. Paul,B.K. Gandhi,S.C. Jain.??Erosion wear behavior of laser clad surfaces of low carbon austenitic steel(J)Wear . 2009 (9)
  • 10Girish R. Desale,Bhupendra K. Gandhi,S.C. Jain.??Particle size effects on the slurry erosion of aluminium alloy (AA 6063)(J)Wear . 2009 (11)

引证文献1

二级引证文献4

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部