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Design of Neural Network Gain Scheduling Flight Control Law Using a Modified PSO Algorithm Based on Immune Clone Principle

机译:基于免疫克隆原理的改进PSO算法的神经网络增益调度飞行控制律设计

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Response to the question that the traditional gain scheduling which is one-parameter adjusting is complex and difficult to find suitable adjusting rule and so the flying qualities in full flight envelope curve specially for those flight conditions between the operating points can't be guaranteed for a modern fly-by-wire flight control system,a design method of three-layer BP network gaining-scheduling for multi-parameters in full flight envelope curve is proposed. Through a comprehensive analysis of PSO algorithm, immunity clone algorithm was introduced to the PSO algorithm based on traditional velocity-displacement operator. A modified global PSO algorithm based on immune clone principle (ICMPSO) is also developed to optimize network weights to improve approximation for nonlinear functions to overcome disadvantages that BP neural network easily involves in a slow convergence and local extremum using gradient descent method to train network weights. The outputs are optimal feedback gains in operating points with ICMPSO method based on FCS optimizing strategy of reference model. Double-parameters gain-scheduling mechanism according to Mach number and dynamical pressure is effectively realized with proposed method.The results show that the advanced algorithm can greatly improve training speed and precision of BP neural network.It not only guarantees good system response at the designed flight conditions but gives more finely carve up result of control parameters between operating points with the neural network gain-scheduling controller.Meanwhile,it also gets a good control effect for the system with about 20% modeling error. The method is of some enlightening and referenced value to engineering application.
机译:针对传统的单参数调整增益安排复杂且难以找到合适的调整规则的问题,因此对于一个工作点之间的飞行条件,不能完全保证全包络曲线的飞行质量,尤其是对于那些工作点之间的飞行条件而言。提出了一种现代电传飞行控制系统,提出了一种三层BP网络全程包络线多参数增益调度的设计方法。通过对PSO算法的综合分析,将免疫克隆算法引入到基于传统速度位移算子的PSO算法中。还开发了一种基于免疫克隆原理(ICMPSO)的改进的全局PSO算法,以优化网络权重,以改善非线性函数的近似性,从而克服了使用梯度下降法训练网络权重的BP神经网络容易涉及缓慢收敛和局部极值的缺点。根据参考模型的FCS优化策略,使用ICMPSO方法输出的结果是工作点的最佳反馈增益。该方法有效地实现了根据马赫数和动压力的双参数增益调度机制。结果表明,该改进算法可以大大提高BP神经网络的训练速度和精度,不仅保证了设计时的良好系统响应。使用神经网络增益调度控制器,可以更好地提高工作点之间的控制参数结果。同时,对于具有约20%建模误差的系统,它也具有良好的控制效果。该方法对工程应用具有一定的启发和参考价值。

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