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Ascent phase trajectory optimization for vehicle with multi-combined cycle engine based on improved particle swarm optimization

机译:基于改进粒子群算法的多组合循环发动机车辆上升阶段轨迹优化

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摘要

An improved particle swarm optimization (IPSO) algorithm is proposed to optimize the ascent phase trajectory for vehicle with multi-combined cycle engine. Aerodynamic and thrust models are formulated in couple with flying states and environment. Conventional PSO has advantages in solving complicated optimization problems but has troubles in constraints handling and premature convergence preventing. To handle constraints, a modification in the fitness function of infeasible particles is executed based on the constraints violation and a comparation is executed to choose the better particle according to the fitness. To prevent premature, a diminishing number of particles are chosen to be mutated on the velocity by random times and directions. The ascent trajectory is divided into sub-phases according to engine modes. Different constraints, control parameters and engine models are considered in each sub-phase. Though the proposed algorithm is straightforward in comprehension and implementation, the numerical examples demonstrate that the algorithm has better performance than other PSO variants. In comparation with the commercial software GPOPS, the performance index of IPSO is almost the same as GPOPS but the results are less oscillating and dependent on initial values.
机译:提出了一种改进的粒子群算法(IPSO),以优化多组合循环发动机车辆的上升阶段轨迹。结合飞行状态和环境来制定空气动力学和推力模型。常规的PSO在解决复杂的优化问题上具有优势,但是在约束处理和防止过早收敛方面存在麻烦。为了处理约束,基于约束违反对不可行粒子的适应度函数进行修改,并且进行比较以根据适应度选择更好的粒子。为了防止过早发生,选择数量减少的粒子以随机速度和方向在速度上进行突变。根据发动机模式,上升轨迹分为多个子阶段。每个子阶段均考虑不同的约束条件,控制参数和发动机模型。尽管所提出的算法在理解和实现方面很简单,但是数值示例表明,该算法比其他PSO变体具有更好的性能。与商业软件GPOPS相比,IPSO的性能指标与GPOPS几乎相同,但结果波动较小,并且取决于初始值。

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