基于自适应变异粒子群算法的船舶结构优化方法

Ship structural optimization method based on daptive mutation particle swarm algorithm

  • 摘要:
      目的  由于船体结构的复杂性,传统优化方法容易出现陷入局部最优、求解速度偏慢的问题。
      方法  基于自适应变异粒子群算法(AMPSO)、BP神经网络、遗传算法(GA),结合Isight/Nastran设计的正交试验方法,提出AMPSO-BP-GA结构优化方法,然后分别以十杆桁架和跳板结构的优化作为算例,验证所提优化算法的准确性和可行性。
      结果  计算结果表明:在相同的约束条件下,经AMPSO-BP-GA方法优化后,十杆桁架结构重量为2 272.1 kg,比其他方法优化后的结构重量更轻;跳板重量减少了33.3%,对比GA-BP-GA方法和PSO-BP-GA方法分别减少25.4%和17.9%,显示AMPSO-BP-GA方法的优化效果更佳。
      结论  AMPSO-BP-GA方法针对结构轻量化的优化效果更佳,可为船舶结构优化设计提供参考。

     

    Abstract:
      Objectives  Due to the complexity of hull structures, traditional optimization methods are prone to fall into the local optimum and have slow solution speeds.
      Methods  For this reason, based on an adaptive mutation particle swarm optimization (AMPSO) algorithm, BP neural network and genetic algorithm (GA), combined with orthogonal experiments designed by Isight/Nastran, an AMPSO-BP-GA structural optimization method is proposed. Subsequently, the optimizations of cross-bar truss and gangboard structures are used as examples to verify the accuracy and feasibility of the algorithm.
      Results  The calculation results show that under the same constraints, the weight of a cross-bar truss structure optimized by the AMPSO-BP-GA method is 2 272.1 kg, which is lighter than structures optimized by other methods; and using the AMPSO-BP-GA method, the weight of a gangboard is reduced by 33.3% compared with the 25.4% weight reduction of the GA-BP-GA method and 17.9% weight reduction of the PSO-BP-GA method, demonstrating that the AMPSO-BP-GA method has superior optimization results.
      Conclusions  Compared with the three methods of BP-GA, PSO-BP-GA and GA-BP-GA, the AMPSO-BP-GA method has a better effect in the optimization of lightweight structure, and can provide references for the optimization design of hull structures.

     

/

返回文章
返回