首页|基于GAN-GRU的电梯制动力矩预测方法

基于GAN-GRU的电梯制动力矩预测方法

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电梯制动器的制动力矩是影响电梯运行安全的关键参数,利用深度学习算法对其进行预测,能为电梯的安全使用和后期维保提供重要参考.基于门控神经网络(GRU)预测模型,结合生成对抗网络(GAN)的基本思想,以1D-CNN作为鉴别器,提高电梯制动力矩预测模型的泛化能力.利用实验数据进行训练,获得的预测结果方均根误差为1.024 4,并与常用的时间序列分析模型如GRU、LSTM等进行对比,结果表明:所提出的方法在电梯的制动力矩预测精度上具有明显的优势.
Prediction Method of Elevator Braking Torque Based on GAN-GRU
The braking torque of elevator brake is a key parameter affecting the safety of elevator operation.Deep learning algorithm is used to predict it,which can provide an important reference for the safe use and subsequent maintenance of the elevator.Based on the Gated Neural Network(GRU)prediction model,this paper combines it with the basic idea of Generative Adversarial Network(GAN),and uses 1D-CNN as the discriminator to enhance the generalization ability of the elevator braking torque prediction model.The experiment data is applied for training to abtain the prediction result with the root mean square error indicating as 1.024 4.Comparison is conducted with commonly used time series analysis models such as GRU and LSTM,and the results show that the proposed method has obvious advantages in the prediction accuracy of elevator braking torque.

elevatorbraking torquetime series analysisgenerate adversarial networkgated recurrent neural networks

苏万斌、江叶峰、易灿灿、徐彪

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嘉兴市特种设备检验检测院,浙江嘉兴 314050

武汉科技大学,湖北武汉 430081

电梯 制动力矩 时间序列分析 生成对抗网络 门控循环神经网络

国家自然科学基金项目国家自然科学基金项目2019年浙江省省级市场监管科研计划项目2020年浙江省市场监管局质量技术基础建设项目

U1709210518053822019033920200126

2024

机械制造与自动化
南京机械工程学会 南京机电产业(集团)有限公司

机械制造与自动化

CSTPCD
影响因子:0.29
ISSN:1671-5276
年,卷(期):2024.53(2)
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