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Calculation for Primary Combustion Characteristics of Boron-based Fuel-rich Propellant based on PSO-BP Neural Network
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The Second Artillery Engineering College

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    Abstract:

    A PSO-BP neural network simulation model was established with particle swarm optimization (PSO) optimizing biases and weights of back-propagation (BP) neural network. By using the PSO-BP neural network,low-pressure burning rate was simulated and calculated. When the important factor changes in a range,for instance HTPB(hydroxyl terminated polybutadiene,28%-32%),AP(ammonium perchlorate,30%-35%,weight-mean diameter 0.06-0.140 mm),GFP(catocene,0%-5%),the burning rate and pressure index of corresponding formulas were calculated and compared to corresponding experimental results. The results show that the calculation errors of the PSO-BP method are less than ±7%.

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吴婉娥,朱左明,帅领.基于粒子群神经网络的含硼富燃料推进剂一次燃烧性能计算[J].含能材料,2011,19(5):548-552.
WU Wan-e, ZHU Zuo-ming, SHUAI Ling. Calculation for Primary Combustion Characteristics of Boron-based Fuel-rich Propellant based on PSO-BP Neural Network[J]. Chinese Journal of Energetic Materials,2011,19(5):548-552.

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History
  • Received:November 23,2010
  • Revised:June 03,2011
  • Adopted:March 16,2011
  • Online: February 22,2012
  • Published: