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New optimization design method for a double secondary linear motor based on R-DNN modeling method and MCS optimization algorithm

机译:基于R-DNN建模方法和MCS优化算法的双二级线性电动机的新优化设计方法

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摘要

Traditional linear motor optimization methods typically use analytical models combined with intelligent optimization algorithms. However, this approach has disadvantages, e.g., the analytical model might not be accurate enough, and the intelligent optimization algorithm can easily fall into local optimization. A new linear motor optimization strategy combining an R-deep neural network (R-DNN) and modified cuckoo search (MCS) is proposed; additionally, the thrust lifting and thrust fluctuation reductions are regarded as optimization objectives. The R-DNN is a deep neural network modeling method using the rectified linear unit (RELU) activation function, and the MCS provides a faster convergence speed and stronger data search capability as compared with genetic algorithms, particle swarm optimization, and standard CS algorithms. Finally, the validity and accuracy of this work are proven based on prototype experiments.
机译:传统的线性电机优化方法通常使用与智能优化算法相结合的分析模型。然而,这种方法具有缺点,例如,分析模型可能不够准确,智能优化算法很容易进入局部优化。提出了一种新的线性电机优化策略,结合了R-Deep Neural网络(R-DNN)和改进的Cuckoo搜索(MCS);另外,推力提升和推力波动减少被认为是优化目标。 R-DNN是一种使用整流的线性单元(Relu)激活功能的深神经网络建模方法,与遗传算法,粒子群优化和标准CS算法相比,MCS提供更快的收敛速度和更强的数据搜索能力。最后,基于原型实验证明了这项工作的有效性和准确性。

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