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Novel tire inflating system using extreme learning machine algorithm for efficient tire identification

机译:使用极限学习机算法的新型轮胎充气系统,可有效识别轮胎

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Tire inflators are widely used all around the word and the efficient and accurate operation is essential. The main difficulty in improving the inflation cycle of a tire inflator is the identification of the tire connected for inflation. A robust single hidden layer feed forward neural network (SLFN) is, thus, used in this study to model and predict the correct tire size. The tire size is directly related to the tire inflation cycle. Once the tire size is identified, the inflation process can be optimized to improve performance, speed and accuracy of the inflation system. Properly inflated tire and tire condition is critical to vehicle safety, stability and controllability. The training times of traditional back propagation algorithms, mostly used to model such tire identification processes, are far slower than desired for implementation of an on-line control system. Use of slow gradient based learning methods and iterative tuning of all network parameters during the learning process are the two major causes for such slower learning speed. An extreme learning machine (ELM) algorithm, which randomly selects the input weights and biases and analytically determines the output weights, is used in this work to train the SLFNs. It is found that networks trained with ELM have relatively good generalization performance, much shorter training times and stable performance with regard to the changes in number of hidden layer neurons. The result represents robustness of the trained networks and enhance reliability of the mode. Together with short training time, the algorithm has valuable application in tire identification process.
机译:轮胎充气机在世界各地被广泛使用,有效而准确的操作至关重要。改善轮胎充气机的充气周期的主要困难是识别用于充气的轮胎。因此,在本研究中,使用了强大的单隐藏层前馈神经网络(SLFN)来建模和预测正确的轮胎尺寸。轮胎尺寸与轮胎充气周期直接相关。一旦确定了轮胎尺寸,就可以优化充气过程,以提高充气系统的性能,速度和准确性。正确充气的轮胎和轮胎状况对于车辆安全性,稳定性和可控制性至关重要。传统的反向传播算法的训练时间(通常用于对此类轮胎识别过程进行建模)比实施在线控制系统所需的速度要慢得多。基于慢梯度的学习方法的使用以及在学习过程中对所有网络参数的迭代调整是导致学习速度降低的两个主要原因。在这项工作中,使用了一种极端学习机(ELM)算法,该算法随机选择输入权重和偏差,并通过分析确定输出权重,以训练SLFN。已经发现,用ELM训练的网络在隐藏层神经元数量的变化方面具有相对较好的泛化性能,训练时间短得多,并且性能稳定。结果表示训练网络的鲁棒性并增强了模式的可靠性。该算法训练时间短,在轮胎识别过程中具有重要的应用价值。

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