ntc热敏电阻校准特性的神经网络逼近方法和模型

S. Fedin, I. Zubretska
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引用次数: 0

摘要

验证了利用rbf网络构建ntc热敏电阻在工作温度范围内的校准特性而无需划分子范围的方便性假设。基于rbf网络的ntc -热敏电阻标定特性的神经网络近似误差至少小于三阶多项式模型近似允许误差的1.5倍,该模型用于现代系统软件的测量信息采集和处理。提出了一种利用自适应rbf网络处理测量信息的技术,以自动构建ntc热敏电阻的单独校准特征和周期性校准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Methods and models of neural networks for approximation of calibration characteristics of NTC-thermistors
The hypothesis about the expediency of using RBF-networks to improve the accuracy of constructing the calibration characteristics of NTC-thermistors in the operating temperature range without dividing it into subranges is confirmed. It has been established that the error of the neural network approximation of the calibration characteristics of NTC-thermistors based on RBF-networks is at least one and a half times less than the permissible error of approximation of the third-order polynomial model, which is used in the software of modern systems for collecting and processing measurement information. A technique has been developed for processing measurement information using adaptive RBF-networks to automate constructing individual calibration characteristics and periodic calibration of NTC-thermistors.
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