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一种湿度传感器温度补偿的融合算法
引用本文:行鸿彦,彭基伟,吕文华,徐伟,武向娟.一种湿度传感器温度补偿的融合算法[J].传感技术学报,2012,25(12):1711-1716.
作者姓名:行鸿彦  彭基伟  吕文华  徐伟  武向娟
作者单位:南京信息工程大学江苏省气象探测与信息处理重点实验室;南京信息工程大学电子与信息工程学院;中国气象局气象探测中心;宁夏大气探测技术保障中心
基金项目:国家自然科学基金项目(61072133);江苏省产学研联合创新资金计划项目(SBY201120033);江苏省高校科研成果产业化推进项目(JHB2011-15);江苏省“六大人才高峰”项目;江苏高校优势学科建设工程项目
摘    要:针对自动气象站上湿度传感器在实际应用过程中易受温度影响的问题,提出采用RBF神经网络与最小二乘相结合的融合算法实现湿度传感器的温度补偿。该方法将湿度传感器在温度影响下的特性曲线分为两个非线性段和一个线性段,并且自适应的确定线性段和非线性段,在线性段利用最小二乘方法拟合出直线方程,在非线性段利用RBF神经网络补偿温度产生的影响。仿真结果表明,这种方法简单易行,与一般的BP神经网络和最小二乘多项式方法相比,具有拟合训练速度快,补偿精度高的特点,可以有效用于湿度传感器的温度补偿,提高传感器的测量精度和可靠性。

关 键 词:湿度传感器  融合算法  RBF神经网络  最小二乘  温度补偿

A fusion algorithm for humidity sensor temperature compensation
XING Hongyan,PENG Jiwei,Lü Wenhua,XU Wei,WU Xiangjuan.A fusion algorithm for humidity sensor temperature compensation[J].Journal of Transduction Technology,2012,25(12):1711-1716.
Authors:XING Hongyan  PENG Jiwei  Lü Wenhua  XU Wei  WU Xiangjuan
Affiliation:1.Jiangsu Key Laboratory of Meteorological Observation and Information Processing, Nanjing University of Information Science and Technology,Nanjing 210044,China; 2.School of electronic and information engineering,Nanjing University of Information Science and Technology,Nanjing 210044,China; 3.Atmospheric Observation Technology Center,China Meteorological Administration,Beijing 100081,China; 4.Ningxia Meteorological Observation Technology Support Center,Yingchuan 750002,China)
Abstract:According to the humidity sensors on the automatic weather station are influenced easily by temperature in the actual application, RBF neural network and least squares combining fusion algorithm is proposed to realize compensation of t-he humidity sensor. The characteristic curve that the humidity sensor is under the influence of the temperature is divided int-o two non-linear part and a linear part, and adaptive determination of the linear segments and non-linear segments, the least s-quares method is used to fitting a straight line equation in linear segments, then RBF neural network is used to compensate t-he impact of temperature in non-linear segments. Simulation results show that the method is easily implement, compared w-ith BP neural network and least squares poly, the speed of fitting training is faster, and compensation for high accuracy, tempe-rature compensation of the humidity sensor can be effectively used to improve sensor measurement accuracy and reliability.
Keywords:humidity sensor  fusion algorithm  RBF neural network  least squares  temperature compensation
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