提高了基于神经网络的松弛计多参数复杂控制的信息准确性

G. Ovseenko, R. Kashaev, O. Kozelkov, T. Filimonova, T. S. Evdokimova, Aliya M. Mardanova
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引用次数: 0

摘要

本文用准确度控制和操作控制的方法研究了质子磁共振弛豫仪测量物理化学特性的方法。对神经网络结构的选择进行了论证,并根据自旋-自旋松弛时间、质子占比和自旋回波信号幅度等参数,描述了Statistica 10数学包中训练神经网络的算法,实现了数字智能矿床流体特征的多参数分析。本文通过开发和应用基于人工神经网络技术的多参数控制复合体节点工作模式评估方法、算法和软件,解决了质子磁共振弛弛器多参数控制复合体作为设备软件包的一部分,提高其信息准确性的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving the information veracity of the complex of multiparametric control of the relaxometer based on a neural network
The article deals with studies of measurements of physico-chemical characteristics by a proton magnetic resonance relaxometer by methods of veracity control and operation control. The choice of the neural network structure is justified, the algorithm of training the neural network in the Statistica 10 mathematical package is described according to the following parameters: spin-spin relaxation times, proton population and amplitude of spin-echo signals, which carry out a multiparametric analysis of fluid characteristics in digital intelligent deposits. This article solves the problem of increasing the information veracity of the complex of multiparametric control of the proton magnetic resonance relaxometer as part of the device-software package by developing and applying methods, algorithms and software based on them to evaluate the operating modes of the nodes of the complex of multiparametric control based on the use of artificial neural network technology.
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