METHOD FOR GENERATING A DATA SET FOR TRAINING A NEURAL NETWORK IN A TRANSPORT CONVEYOR MODEL

O. Pihnastyi, G. Kozhevnikov, Anna Burduk
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Abstract

The object of research is a stochastic input flow of material coming in the input of a conveyor-type transport system. Subject of research is the development of a method for generating values of the stochastic input material flow of transport conveyor to form a training data set for neural network models of the transport conveyor. The goal of the research is to develop a method for generating random values to construct implementations of the input material flow of a transport conveyor that have specified statistical characteristics calculated based on the results of previously performed experimental measurements. The article proposes a method for generating a data set for training a neural network for a model of a branched, extended transport conveyor. A method has been developed for constructing implementations of the stochastic input flow of material of a transport conveyor. Dimensionless parameters are introduced to determine similarity criteria for input material flows. The stochastic input material flow is presented as a series expansion in coordinate functions. To form statistical characteristics, a material flow implementation based on the results of experimental measurements is used. As a zero approximation for expansion coefficients, that are random variables, the normal distribution law of a random variable is used. Conclusion. It is shown that with an increase in the time interval for the implementation of the input material flow, the correlation function of the generated implementation steadily tends to the theoretically determined correlation function. The length of the time interval for the generated implementation of the input material flow was estimated.
生成用于训练运输输送机模型中神经网络的数据集的方法
研究对象是输送式运输系统输入端的随机输入物料流。研究课题是开发一种方法,用于生成运输输送机随机输入物料流的数值,以形成运输输送机神经网络模型的训练数据集。研究的目标是开发一种生成随机值的方法,以构建具有根据先前进行的实验测量结果计算出的特定统计特征的运输输送机输入物料流的实现。文章提出了一种生成用于训练神经网络的数据集的方法,该神经网络用于训练分支式扩展运输输送机的模型。文章开发了一种方法,用于构建运输输送机物料随机输入流的实施方案。引入了无量纲参数,以确定输入物料流的相似性标准。随机输入物料流以坐标函数的序列展开形式呈现。为了形成统计特征,使用了基于实验测量结果的物料流实施方法。作为随机变量的膨胀系数的零近似值,使用了随机变量的正态分布定律。结论结果表明,随着输入物料流实施时间间隔的增加,生成的实施方案的相关函数稳步趋向于理论确定的相关函数。估算了输入物料流生成实施时间间隔的长度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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