Parametric Design of Elevator Car Wall Based on GA-SVM Method

Yuxin Zheng, Runfeng Zhang, Xiaohan Yuan
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Abstract

The elevator car wall parameters are the pivot of parameters during the elevator design. To meet the individualized requirements of elevator design, and reduce the labor cost during design, the parametric design of elevator car wall model has important research significance in the design of elevator car. In this paper, genetic algorithm is utilized to optimize the internal parameters of the support vector machine method in order to establish the elevator car wall parameter prediction model based on GA-SVM. Based on the actual design data of Shanghai General Elevator Company over the years, 100 sets of data were simulated and predicted. The experimental results indicate that the average absolute percentage error of GA-SVM method is only 0.92%, and the relative error is 2.62%. The prediction accuracy is much better than BP neural network method. Most importantly, the GA-SVM method can effectively reduce the traditional labor cost of the elevator car design. Therefore, it is of great significance to the simulation design and manufacturing of the elevator car prototype.
基于GA-SVM方法的电梯轿厢壁参数化设计
电梯轿厢壁参数是电梯设计中的关键参数。为了满足电梯设计的个性化要求,降低设计过程中的人工成本,电梯轿厢壁模型参数化设计在电梯轿厢设计中具有重要的研究意义。本文利用遗传算法对支持向量机方法的内部参数进行优化,建立基于GA-SVM的电梯轿厢壁参数预测模型。根据上海通用电梯公司多年来的实际设计数据,对100组数据进行了仿真预测。实验结果表明,GA-SVM方法的平均绝对百分比误差仅为0.92%,相对误差为2.62%。预测精度明显优于BP神经网络方法。最重要的是,GA-SVM方法可以有效降低传统电梯轿厢设计的人工成本。因此,对电梯轿厢原型机的仿真设计与制造具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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