Title :
Flame Image-Based Burning State Recognition for Sintering Process of Rotary Kiln Using Heterogeneous Features and Fuzzy Integral
Author :
Li, Weitao ; Wang, Dianhui ; Chai, Tianyou
Author_Institution :
State Key Lab. of Synthetical Autom. for Process Ind., Northeastern Univ., Shenyang, China
Abstract :
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.
Keywords :
aluminium industry; combustion; control engineering computing; control system synthesis; feature extraction; flames; fuzzy set theory; image classification; image colour analysis; image fusion; integral equations; intelligent control; kilns; learning (artificial intelligence); mathematical operators; sintering; Chinese Shanxi Aluminum Corporation; base classifiers; color features; ensemble learner models; flame image-based burning state recognition accuracy; fusion operators; fuzzy integral; global configuration features; heterogeneous feature extraction; image collection; image labelling; image-based intelligent control system design; local configuration features; neural networks; normal-burning state images; over-burning state images; pixel values; rotary kiln; sintering process; under-burning state images; Feature extraction; Fuzzy systems; Image color analysis; Image recognition; Image segmentation; Neural networks; Visualization; Burning state recognition; ensemble models; fuzzy integral; heterogeneous features; neural networks (NNs) classifiers;
Journal_Title :
Industrial Informatics, IEEE Transactions on
DOI :
10.1109/TII.2012.2189224