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在微型涡轮机中使用振动幅度优化算法的非线性回归模型。

Non-Linear Regression Models with Vibration Amplitude Optimization Algorithms in a Microturbine.

机构信息

Industrial Technologies Division, Universidad Politécnica de Querétaro, El Marques 76240, Mexico.

Red de Investigación OAC Optimización, Automatización y Control, El Marques 76240, Mexico.

出版信息

Sensors (Basel). 2021 Dec 25;22(1):130. doi: 10.3390/s22010130.

Abstract

Machinery condition monitoring and failure analysis is an engineering problem to pay attention to among all those being studied. Excessive vibration in a rotating system can damage the system and cannot be ignored. One option to prevent vibrations in a system is through preparation for them with a model. The accuracy of the model depends mainly on the type of model and the fitting that is attained. The non-linear model parameters can be complex to fit. Therefore, artificial intelligence is an option for performing this tuning. Within evolutionary computation, there are many optimization and tuning algorithms, the best known being genetic algorithms, but they contain many specific parameters. That is why algorithms such as the gray wolf optimizer (GWO) are alternatives for this tuning. There is a small number of mechanical applications in which the GWO algorithm has been implemented. Therefore, the GWO algorithm was used to fit non-linear regression models for vibration amplitude measurements in the radial direction in relation to the rotational frequency in a gas microturbine without considering temperature effects. RMSE and R2 were used as evaluation criteria. The results showed good agreement concerning the statistical analysis. The 2nd and 4th-order models, and the Gaussian and sinusoidal models, improved the fit. All models evaluated predicted the data with a high coefficient of determination (85-93%); the RMSE was between 0.19 and 0.22 for the worst proposed model. The proposed methodology can be used to optimize the estimated models with statistical tools.

摘要

机械状态监测与故障分析是所有研究中需要关注的工程问题。旋转系统中的过度振动会损坏系统,不容忽视。防止系统振动的一种选择是通过模型进行准备。模型的准确性主要取决于模型的类型和拟合程度。非线性模型参数的拟合可能很复杂。因此,人工智能是进行这种调整的一种选择。在进化计算中,有许多优化和调整算法,其中最著名的是遗传算法,但它们包含许多特定参数。这就是为什么像灰狼优化器(GWO)这样的算法是这种调整的替代方案。在机械应用中,GWO 算法的应用数量较少。因此,GWO 算法被用于拟合非线性回归模型,以测量气体微涡轮机中与旋转频率有关的径向振动幅度,而不考虑温度效应。RMSE 和 R2 被用作评估标准。统计分析结果表明,这些模型具有很好的一致性。二阶和四阶模型以及高斯和正弦模型提高了拟合度。所有评估的模型都以高决定系数(85-93%)预测了数据;对于最差的拟议模型,RMSE 在 0.19 到 0.22 之间。所提出的方法可以使用统计工具来优化估计模型。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d477/8747398/a7b24beafee9/sensors-22-00130-g001.jpg

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