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Flame Image-Based Burning State Recognition for Sintering Process of Rotary Kiln Using Heterogeneous Features and Fuzzy Integral

机译:基于火焰图像的异质特征和模糊积分的回转窑烧结过程燃烧状态识别

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摘要

Accurate and robust recognition of burning state for sintering process of rotary kiln plays an important role in the design of image-based intelligent control systems. Existing approaches such as consensus-based methods, temperature-based methods and image segmentation-based methods could not achieve satisfactory performance. This paper presents a flame image-based burning state recognition system using a set of heterogeneous features and fusion techniques. These features, i.e., the color feature, the global and local configuration features, are able to characterize different aspects of flame images, and they can be extracted from pixel values directly without segmentation efforts. In this study, ensemble learner models with four types of base classifiers and five fusion operators are examined with comprehensive comparisons. A total of 482 typical flame images, including 86 over-burning state images, 193 under-burning state images, and 203 normal-burning state images, were used in our experiments. These images were collected from the No. 3 rotary kiln at the Shanxi Aluminum Corporation in China, and labeled by the rotary kiln operational experts. Results demonstrate that our proposed image-based burning state recognition systems outperform other methods in terms of both recognition accuracy and robustness against the disturbance from smoke and dust inside the kiln.
机译:在基于图像的智能控制系统的设计中,准确可靠地识别回转窑烧结过程中的燃烧状态起着重要作用。现有方法(例如基于共识的方法,基于温度的方法和基于图像分割的方法)无法获得令人满意的性能。本文提出了一套基于火焰图像的燃烧状态识别系统,该系统使用了一组异构特征和融合技术。这些特征,即颜色特征,全局和局部配置特征,能够表征火焰图像的不同方面,并且它们可以直接从像素值中提取而无需分割工作。在这项研究中,对具有四种基本分类器和五个融合算子的整体学习器模型进行了综合比较。在我们的实验中,总共使用了482个典型火焰图像,包括86个过度燃烧状态图像,193个欠燃烧状态图像和203个正常燃烧状态图像。这些图像是从中国山西铝业公司的3号回转窑收集的,并由回转窑运营专家进行了标记。结果表明,我们提出的基于图像的燃烧状态识别系统在识别精度和抵抗窑内烟尘干扰的鲁棒性方面均优于其他方法。

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