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Analyses of the most influential factors for vibration monitoring of planetary power transmissions in pellet mills by adaptive neuro-fuzzy technique

机译:自适应神经模糊技术分析制粒机行星动力传动振动的最主要影响因素

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Vibration-based structural health monitoring is widely recognized as an attractive strategy for early damage detection in civil structures. Vibration monitoring and prediction is important for any system since it can save many unpredictable behaviors of the system. If the vibration monitoring is properly managed, that can ensure economic and safe operations. Potentials for further improvement of vibration monitoring lie in the improvement of current control strategies. One of the options is the introduction of model predictive control. Multistep ahead predictive models of vibration are a starting point for creating a successful model predictive strategy. For the purpose of this article, predictive models of are created for vibration monitoring of planetary power transmissions in pellet mills. The models were developed using the novel method based on ANFIS (adaptive neuro fuzzy inference system). The aim of this study is to investigate the potential of ANFIS for selecting the most relevant variables for predictive models of vibration monitoring of pellet mills power transmission. The vibration data are collected by PIC (Programmable Interface Controller) microcontrollers. The goal of the predictive vibration monitoring of planetary power transmissions in pellet mills is to indicate deterioration in the vibration of the power transmissions before the actual failure occurs. The ANFIS process for variable selection was implemented in order to detect the predominant variables affecting the prediction of vibration monitoring. It was also used to select the minimal input subset of variables from the initial set of input variables - current and lagged variables (up to 11 steps) of vibration. The obtained results could be used for simplification of predictive methods so as to avoid multiple input variables. It was preferable to used models with less inputs because of overfitting between training and testing data. While the obtained results are promising, further work is required in order to get results that could be directly applied in practice.
机译:基于振动的结构健康监测已被广泛认为是早期检测民用建筑损伤的一种有吸引力的策略。振动监测和预测对于任何系统都很重要,因为它可以节省系统的许多不可预测的行为。如果对振动监测进行了适当的管理,则可以确保经济和安全的运行。进一步改进振动监测的潜力在于改进当前的控制策略。选项之一是引入模型预测控制。振动的多步超前预测模型是创建成功的模型预测策略的起点。出于本文的目的,创建了的预测模型,用于制丸机中行星动力传动装置的振动监测。使用基于ANFIS(自适应神经模糊推理系统)的新方法开发了模型。这项研究的目的是研究ANFIS在选择最相关的变量以用于制粒机动力传输振动监测的预测模型中的潜力。振动数据由PIC(可编程接口控制器)微控制器收集。对制粒机中的行星动力传动装置进行预测振动监测的目的是在实际故障发生之前指示动力传动装置的振动恶化。为了检测影响振动监测预测的主要变量,实施了ANFIS变量选择过程。它也用于从初始输入变量集中选择变量的最小输入子集-振动的当前变量和滞后变量(最多11步)。获得的结果可用于简化预测方法,从而避免多个输入变量。最好使用输入较少的模型,因为训练和测试数据之间的过拟合。尽管获得的结果很有希望,但需要做进一步的工作才能获得可以直接在实践中应用的结果。

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