基于神经网络和跟踪信号的非线性时间序列预测方法

Q3 Engineering Production Pub Date : 2022-01-01 DOI:10.1590/0103-6513.20220064
Natália Maria Puggina Bianchesi, C. E. Matta, Simone Carneiro Streitenberger, Estevão Luiz Romão, P. Balestrassi, Antônio Fernando Branco Costa
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引用次数: 0

摘要

本文提出了一种非线性时间序列预测方法,利用神经网络和跟踪信号方法来检测偏差及其对时间序列中非随机变化的响应。独创性:本研究为非线性时间序列预测方法提供了一种创新方法。此外,实验设计应用于模拟数据集和分析平均运行长度的结果,确定在哪些条件下该方法是有效的。研究方法:通过改变非线性时间序列的误差,生成数据集模拟不同的非线性时间序列。将该方法应用于数据集,并实施实验设计来评估结果。最后,以总油和总脂为例进行了研究。结果表明,由于误差的均值和标准差对平均运行长度有显著影响,所提出的预测方法是在非线性时间序列中引入误差的过程中检测偏差的有效方法。
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A nonlinear time-series prediction methodology based on neural networks and tracking signals
Paper aims: This paper presents a nonlinear time series prediction methodology using Neural Networks and Tracking Signals method to detect bias and their responsiveness to non-random changes in the time series. Originality: This study contributes with an innovative approach of nonlinear time series prediction methodology. Furthermore, the Design of Experiments was applied to simulate datasets and to analyze the results of Average Run Length, identifying in which conditions the methodology is efficient. Research method: Datasets were generated to simulate different nonlinear time series by changing the error of the series. The methodology was applied to the datasets and the Design of Experiments was implemented to evaluate the results. Lastly, a case study based on total oil and grease was performed. Main findings: The results showed that the proposed prediction methodology is an effective way to detect bias in the process when an error is introduced in the nonlinear time series because the mean and the standard deviation of the error have a significant impact on the Average Run Length.
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来源期刊
Production
Production Engineering-Industrial and Manufacturing Engineering
CiteScore
3.00
自引率
0.00%
发文量
26
审稿时长
40 weeks
期刊介绍: The Produção Journal (Production Journal), ISSN 0103-6513, is a Brazilian Association of Production Engineering (ABEPRO) publication. It was created in 1990 in order to provide a communication medium for academic articles in the Production Engineering field. Since 2002, the Production Engineering Department of Polytechnic School of the University of São Paulo (PRO/EPUSP) is responsible for the editorial process of Produção Journal, sponsored by Carlos Alberto Vanzolini Foundation (FCAV). Revista Produção has the tradition of eighteen published volumes and Qualis "B2" evaluation by CAPES in the Engineering III area. For Brazilian academic community it is a top journal in Production Engineering field.
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