论文标题
将基于VGGNET的振动数据的深度学习模型用于重力加速设备的预测模型
Apply VGGNet-based deep learning model of vibration data for prediction model of gravity acceleration equipment
论文作者
论文摘要
超级加速器是一种用于重力训练或医学研究的大型机械。在安全或成本方面,如此大的设备失败可能是一个严重的问题。本文提出了一个预测模型,该模型可以主动防止超级加速器中可能发生的故障。本文提出的方法是将振动信号转换为镜头,并使用深度学习模型进行分类训练。进行了一个实验,以评估本文提出的方法的性能。将4通道加速度计连接到轴承外壳上,即转子,并通过采样从测量值获得时间增强数据。将数据转换为二维光谱图,并使用深度学习模型为设备的四个条件进行分类训练:不平衡,未对准,轴摩擦和正常。实验结果表明,该提出的方法的F1得分为99.5%,比现有基于特征的学习模型的76.25%高达23%。
Hypergravity accelerators are a type of large machinery used for gravity training or medical research. A failure of such large equipment can be a serious problem in terms of safety or costs. This paper proposes a prediction model that can proactively prevent failures that may occur in a hypergravity accelerator. The method proposed in this paper was to convert vibration signals to spectograms and perform classification training using a deep learning model. An experiment was conducted to evaluate the performance of the method proposed in this paper. A 4-channel accelerometer was attached to the bearing housing, which is a rotor, and time-amplitude data were obtained from the measured values by sampling. The data were converted to a two-dimensional spectrogram, and classification training was performed using a deep learning model for four conditions of the equipment: Unbalance, Misalignment, Shaft Rubbing, and Normal. The experimental results showed that the proposed method had a 99.5% F1-Score, which was up to 23% higher than the 76.25% for existing feature-based learning models.