Feng Yang, Liu Wenbo, Yu Haoda, Hu Keyong, Sun Shuifa, Wang Ben
School of Information Science and Technology, Hangzhou Normal University, Hangzhou 311121, China.
School of Engineering, Hangzhou Normal University, Hangzhou 311121, China.
Micromachines (Basel). 2023 Nov 12;14(11):2093. doi: 10.3390/mi14112093.
In this paper, a SAW winding tension sensor is designed and data fusion technology is used to improve its measurement accuracy. To design a high-measurement precision SAW winding tension sensor, the unbalanced split-electrode interdigital transducers (IDTs) were used to design the input IDTs and output IDTs, and the electrode-overlap envelope was adopted to design the input IDT. To improve the measurement accuracy of the sensor, the particle swarm optimization-least squares support vector machine (PSO-LSSVM) algorithm was used to compensate for the temperature error. After temperature compensation, the sensitivity temperature coefficient α of the SAW winding tension sensor was decreased by an order of magnitude, thus significantly improving its measurement accuracy. Finally, the error with actually applied tension was calculated, the same in the LSSVM and PSO-LSSVM. By multiple comparisons of the same sample data set overall, as well as the local accuracy of the forecasted results, which is 5.95%, it is easy to confirm that the output error predicted by the PSO-LSSVM model is 0.50%, much smaller relative to the LSSVM's 1.42%. As a result, a new way for performing data analysis of the SAW winding tension sensor is provided.
本文设计了一种声表面波绕组张力传感器,并采用数据融合技术提高其测量精度。为设计一种高测量精度的声表面波绕组张力传感器,采用不平衡分裂电极叉指换能器(IDT)设计输入IDT和输出IDT,并采用电极重叠包络设计输入IDT。为提高传感器的测量精度,采用粒子群优化-最小二乘支持向量机(PSO-LSSVM)算法补偿温度误差。温度补偿后,声表面波绕组张力传感器的灵敏度温度系数α降低了一个数量级,从而显著提高了其测量精度。最后,计算了实际施加张力时的误差,LSSVM和PSO-LSSVM中的误差相同。通过对同一样本数据集整体以及预测结果的局部精度进行多次比较,其局部精度为5.95%,很容易确认PSO-LSSVM模型预测的输出误差为0.50%,相对于LSSVM的1.42%要小得多。结果,为声表面波绕组张力传感器的数据分析提供了一种新方法。