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基于改进SPSO-BP神经网络的温度传感器湿度补偿
引用本文:行鸿彦,郭敏,张兰.基于改进SPSO-BP神经网络的温度传感器湿度补偿[J].传感技术学报,2018,31(3):380-385.
作者姓名:行鸿彦  郭敏  张兰
作者单位:南京信息工程大学气象灾害预报预警与评估协同创新中心,南京210044;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,南京210044
基金项目:国家自然科学基金,江苏省高校自然科学研究重大项目,江苏省"六大人才高峰"计划和江苏省"信息与通信工程"优势学科项目,江苏省"信息与通信工程"优势学科计划项目
摘    要:针对在实际使用中湿度影响温度传感器准确性的问题,通过对基本粒子群算法的分析,得出不受速度向量影响的简化粒子群算法,同时采用线性递减惯性权重,提出了一种改进SPSO-BP神经网络温度传感器的湿度补偿方法.通过改进的简化粒子群算法的不断迭代,优化BP神经网络的权阈值,直到得到最优权阈值,并赋给BP神经网络.根据湿度影响实验中测得的数据,运用此方法建立湿度补偿模型,与BP神经网络方法对比分析.结果表明,改进SPSO-BP神经网络的模型结构简单、补偿精度高,收敛速度快,有效地对温度传感器进行了湿度补偿.

关 键 词:湿度补偿  BP神经网络  简化粒子群算法  温度传感器  humidity  compensation  BP  neural  network  Simplified  Particle  Swarm  Optimization  Algorithm(SPSO)  temperature  sensor

The humidity compensation for temperature sensor based on improved SPSO-BP neural network
XING Hongyan,GUO Min,ZHANG Lan,ZHANG Yibo.The humidity compensation for temperature sensor based on improved SPSO-BP neural network[J].Journal of Transduction Technology,2018,31(3):380-385.
Authors:XING Hongyan  GUO Min  ZHANG Lan  ZHANG Yibo
Abstract:In order to solve the problem that the humidity affects temperature sensor accuracy,this paper derives the simplified particle swarm algorithm by analyzing the basic particle swarm algorithm.The simplified particle swarm al-gorithmis not affected by the velocity vectorand the linear decreasing inertia weight is adopted.The humidity com-pensation method which using improved simplified particle swarm optimization algorithm(SPSO)of BP neural net-work is proposed.The weight threshold of the BP neural network is optimized by the continuous iteration of the im-proved simplified particle swarm optimization algorithm,until the optimal threshold is obtained and assigned to the BP neural network.According to the data measured in the experiment of humidity influence,the humidity compensa-tion model is established by this method and compared with the BP neural network. The results show that the im-proved SPSO-BP neural network model has simple structure,high compensation precision and fast convergence speed,and effectively compensates the humidity of the temperature sensor.
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