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Thermal condition monitoring system using log-polar mapping, quaternion correlation and max-product fuzzy neural network classification

机译:使用对数极坐标映射,四元数相关性和最大乘积模糊神经网络分类的热状态监测系统

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摘要

Nowadays, most factories rely on machines to help boost up their production and process. Therefore, an effective machine condition monitoring system plays an important role in these factories to ensure that their production and process are running smoothly all the time. In this paper, a new and effective machine condition monitoring system using log-polar mapper, quaternion based thermal image correlator and max-product fuzzy neural network classifier is proposed. Two classification characteristics, namely peak to sidelobe ratio (PSR) and real to complex ratio of the discrete quaternion correlation output (p-value) are applied in this proposed machine condition monitoring system. Large PSR and p-value showed a good match among correlation of the input thermal image with a particular reference image, but reversely for small PSR and p-value match. In the simulation, log-polar mapping is found to have solved the rotation and scaling invariant problems in quaternion based thermal image correlation. Besides, log-polar mapping can possess two fold data compression capability. Log-polar mapping helps smoothen up the output correlation plane, hence making better measurement for PSR and p-values. The simulation results have also proven that the proposed system is an efficient machine condition monitoring system with an accuracy of more than 94%.
机译:如今,大多数工厂都依靠机器来帮助提高其生产和工艺。因此,有效的机器状态监控系统在这些工厂中起着重要作用,以确保其生产和过程始终保持平稳运行。本文提出了一种新的有效的机器状态监测系统,该系统使用对数极坐标映射器,基于四元数的热图像相关器和最大乘积模糊神经网络分类器。在该机器状态监测系统中,应用了两个分类特征,即峰对旁瓣之比(PSR)和离散四元数相关输出的实复比(p值)。较大的PSR和p值显示出输入热图像与特定参考图像之间的相关性很好,但对于较小的PSR和p值匹配则相反。在仿真中,发现对数极坐标映射解决了基于四元数的热图像关联中的旋转和缩放不变性问题。此外,对数极坐标映射可以具有两倍的数据压缩能力。对数极坐标映射有助于平滑输出相关平面,从而更好地测量PSR和p值。仿真结果还证明,该系统是一种高效的机器状态监测系统,其准确度超过94%。

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