Li Ji, Hu Guoqing, Zhou Yonghong, Zou Chong, Peng Wei, Alam Sm Jahangir
Department of Mechanical and Electrical Engineering, School of Aerospace Engineering, Xiamen University, Xiamen 361005, China.
Department of Mechatronics Engineering, School of Mechanical & Automotive Engineering, South China University of Technology, Guangzhou 510640, China.
Sensors (Basel). 2017 Apr 19;17(4):894. doi: 10.3390/s17040894.
As a high performance-cost ratio solution for differential pressure measurement, piezo-resistive differential pressure sensors are widely used in engineering processes. However, their performance is severely affected by the environmental temperature and the static pressure applied to them. In order to modify the non-linear measuring characteristics of the piezo-resistive differential pressure sensor, compensation actions should synthetically consider these two aspects. Advantages such as nonlinear approximation capability, highly desirable generalization ability and computational efficiency make the kernel extreme learning machine (KELM) a practical approach for this critical task. Since the KELM model is intrinsically sensitive to the regularization parameter and the kernel parameter, a searching scheme combining the coupled simulated annealing (CSA) algorithm and the Nelder-Mead simplex algorithm is adopted to find an optimal KLEM parameter set. A calibration experiment at different working pressure levels was conducted within the temperature range to assess the proposed method. In comparison with other compensation models such as the back-propagation neural network (BP), radius basis neural network (RBF), particle swarm optimization optimized support vector machine (PSO-SVM), particle swarm optimization optimized least squares support vector machine (PSO-LSSVM) and extreme learning machine (ELM), the compensation results show that the presented compensation algorithm exhibits a more satisfactory performance with respect to temperature compensation and synthetic compensation problems.
作为一种性价比高的差压测量解决方案,压阻式差压传感器在工程过程中得到了广泛应用。然而,其性能会受到环境温度和施加于其上的静压的严重影响。为了修正压阻式差压传感器的非线性测量特性,补偿措施应综合考虑这两个方面。核极限学习机(KELM)具有非线性逼近能力、良好的泛化能力和计算效率等优点,是解决这一关键任务的实用方法。由于KELM模型对正则化参数和核参数具有内在敏感性,因此采用一种结合耦合模拟退火(CSA)算法和Nelder-Mead单纯形算法的搜索方案来寻找最优的KELM参数集。在温度范围内进行了不同工作压力水平下的校准实验,以评估所提出的方法。与其他补偿模型如反向传播神经网络(BP)、径向基神经网络(RBF)、粒子群优化优化支持向量机(PSO-SVM)、粒子群优化优化最小二乘支持向量机(PSO-LSSVM)和极限学习机(ELM)相比,补偿结果表明,所提出的补偿算法在温度补偿和综合补偿问题上表现出更令人满意的性能。