Department of Civil Engineering, Zhejiang University, 866 Yuhangtang Road, Hangzhou 310058, China.
NetEase Yidun AI Lab, Hangzhou 310051, China.
Sensors (Basel). 2023 Apr 7;23(8):3797. doi: 10.3390/s23083797.
Accurate and quantitative identification of unbalanced force during operation is of utmost importance to reduce the impact of unbalanced force on a hypergravity centrifuge, guarantee the safe operation of a unit, and improve the accuracy of a hypergravity model test. Therefore, this paper proposes a deep learning-based unbalanced force identification model, then establishes a feature fusion framework incorporating the Residual Network (ResNet) with meaningful handcrafted features in this model, followed by loss function optimization for the imbalanced dataset. Finally, after an artificially added, unbalanced mass was used to build a shaft oscillation dataset based on the ZJU-400 hypergravity centrifuge, we used this dataset to train the unbalanced force identification model. The analysis showed that the proposed identification model performed considerably better than other benchmark models based on accuracy and stability, reducing the mean absolute error (MAE) by 15% to 51% and the root mean square error (RMSE) by 22% to 55% in the test dataset. Simultaneously, the proposed method showed high accuracy and strong stability in continuous identification during the speed-up process, surpassing the current traditional method by 75% in the MAE and by 85% in the median error, which provided guidance for counterweight and guaranteed the unit's stability.
准确、定量地识别运行过程中的不平衡力对于减小不平衡力对超重力离心机的影响、保证单元的安全运行以及提高超重力模型试验的准确性至关重要。因此,本文提出了一种基于深度学习的不平衡力识别模型,然后在该模型中建立了一个特征融合框架,将残差网络(ResNet)与有意义的手工制作特征结合起来,接着对不平衡数据集进行损失函数优化。最后,在基于 ZJU-400 超重力离心机人为添加不平衡质量构建了一个轴摆动数据集后,我们使用该数据集来训练不平衡力识别模型。分析表明,所提出的识别模型在准确性和稳定性方面明显优于其他基准模型,在测试数据集上,平均绝对误差(MAE)降低了 15%至 51%,均方根误差(RMSE)降低了 22%至 55%。同时,所提出的方法在加速过程中的连续识别中表现出了很高的准确性和很强的稳定性,在 MAE 上比当前的传统方法高出 75%,在中位数误差上高出 85%,为配重提供了指导,保证了单元的稳定性。