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A ELEVATOR GROUP CONTROL METHOD BASED ON PARTICLE SWARM OPTIMIZATION AND NEURAL NETWORK

机译:基于粒子群优化和神经网络的电梯群控制方法

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In today's city life this elevator group control (EGC) problem is related to many factors, such as stochastic user equilibrium, the number of customers, running condition, is the difficulty of analysis, design and control.In order to improve the operation efficiency and service quality elevator, optimization control strategy, and the elevator was investigated. A new elevator group control method and system based on RBF algorithm is described.The RBF neural network is applied to control strategy in call distribution landing the elevator.Particle swarm optimization (PSO) neural controller-the method.Some links of the weighted parameters radial basis function neural network can be modified and optimization algorithms, and on the basis of the elevator group control performance effect can be obtained.The simulation results verify the contains the effectiveness of the method.The results prove that the method is effective.
机译:在当今的城市生活中,这种电梯群控(EGC)问题与许多因素有关,例如随机的用户均衡,客户数量,运行状况是分析,设计和控制的难点。对电梯的服务质量,优化控制策略以及电梯进行了研究。描述了一种基于RBF算法的新型电梯群控制方法和系统。将RBF神经网络应用于电梯呼梯分布的控制策略。粒子群优化(PSO)神经控制器-这种方法。可以对基函数神经网络进行修改和优化算法,并在电梯群控的基础上获得性能效果。仿真结果验证了该方法的有效性。结果证明了该方法的有效性。

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