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Life Prediction for Silicon Pressure Sensor Based on SVR

机译:基于SVR的硅压力传感器寿命预测

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摘要

In order to improve the reliability of silicon pressure sensor, life prediction for silicon pressure sensor should be performed. Life prediction for silicon pressure sensor based on support vector regression is proposed in the paper. Grid method is used to determine the parameters of support vector regression in the process of training support vector regression model. Life for silicon pressure sensor under the conditions of different pressures is given in the experimental analysis. The comparison of the errors and mean errors between support vector regression and BP neural network indicates that life prediction accuracy of support vector regression for silicon pressure sensor is higher than that of BP neural network.
机译:为了提高硅压力传感器的可靠性,应执行硅压力传感器的寿命预测。提出了基于支持向量回归的硅压力传感器的寿命预测。网格方法用于确定培训支持向量回归模型过程中支持向量回归的参数。实验分析中给出了在不同压力条件下的硅压力传感器的寿命。支持向量回归和BP神经网络之间的误差和均值的比较表明硅压力传感器的支持向量回归的生命预测精度高于BP神经网络的寿命预测精度。

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