首页> 外文期刊>Metrology and Measurement Systems: Metrologia i Systemy Pomiarowe >A MONTE CARLO-BASED METHOD FOR ASSESSING THE MEASUREMENT UNCERTAINTY IN THE TRAINING AND USE OF ARTIFICIAL NEURAL NETWORKS
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A MONTE CARLO-BASED METHOD FOR ASSESSING THE MEASUREMENT UNCERTAINTY IN THE TRAINING AND USE OF ARTIFICIAL NEURAL NETWORKS

机译:基于蒙特卡洛方法的人工神经网络训练和使用中的测量不确定度评估

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摘要

When an artificial neural network is used to determine the value of a physical quantity its result is usually presented without an uncertainty. This is due to the difficulty in determining the uncertainties related to the neural model. However, the result of a measurement can be considered valid only with its respective measurement uncertainty. Therefore, this article proposes a method of obtaining reliable results by measuring systems that use artificial neural networks. For this, it considers the Monte Carlo Method (MCM) for propagation of uncertainty distributions during the training and use of the artificial neural networks. (C) 2016 Polish Academy of Sciences. All rights reserved
机译:当使用人工神经网络确定物理量的值时,通常不会不确定地显示其结果。这是由于难以确定与神经模型有关的不确定性。然而,测量结果仅在其各自的测量不确定性时才被认为是有效的。因此,本文提出了一种通过测量使用人工神经网络的系统来获得可靠结果的方法。为此,它考虑了在训练和使用人工神经网络期间传播不确定性分布的蒙特卡洛方法(MCM)。 (C)2016波兰科学院。版权所有

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