摘要
针对测量仪器校准间隔的优化问题,分析了历史校准数据的特征,描述了校准数据动态发展的数学模型,提出一种灰色组合模型进行校准间隔的预测仿真。灰色组合模型的思想是:采用灰色GM(1,1)模型预测历史校准数据序列的趋势性成分,同时引入AR模型、BP人工神经网络模型和马尔可夫模型三者的组合模型预测随机性成分。仿真实验表明:灰色组合模型适应了校准数据小样本、非线性的特点,适合用于校准间隔的预测仿真。
For optimization of a measuring instrument's calibration interval, firstly, characters of historical calibration data were analyzed and the mathematic model of calibration data was described. Then a grey combined model was proposed to optimize calibration interval, Trend components of calibration data are predicted by GM (1, 1) model. Furthermore, random components are predicted by the combined model which is comprised by AR model, BP neural network model and Markov model. Experiments show the grey combined model adapts to small sample and non-linear characters of calibration data and it is fit for the orediction of calibration interval.
出处
《系统仿真学报》
EI
CAS
CSCD
北大核心
2008年第9期2296-2299,共4页
Journal of System Simulation
关键词
关校准间隔
仿真建模
灰色理论
组合模型
calibration interval
simulation and modeling
grey theory
combined model