Research on image classification method of strip steel surface defects based on improved Bat algorithm optimized BP neural network

Author:

Yue Xiaofeng1,Ma Guoyuan1,Liu Fuqiuxuan1,Gao Xueliang1

Affiliation:

1. Mechanical and Electrical Engineering, Changchun University of Technology, Jilin Province, China

Abstract

Due to the complexity and variety of textures on Strip steel, it is very difficult to detect defects on rigid surfaces. This paper proposes a metal surface defect classification method based on an improved bat algorithm to optimize BP neural network. First, this paper uses the Local Binary Pattern(LBP) algorithm to extract features from six types of defect images including inclusion, patches, crazing, pitted, rolled-in, and scratches, and build a feature sample library with the extracted feature values. Then, the WG-BA-BP network is used to classify the defect images with different characteristics. The weighted experience factor added by the network can control the flight speed of the bat according to the number of iterations and the change of the fitness function. And the gamma distribution is added in the process of calculating loudness, which enhances the local searchability. The BP network optimized by this method has higher accuracy. Finally, to verify the effectiveness of the method, this article introduces the five evaluation indicators of accuracy, precision, sensitivity, specificity, and F1 value under the multi-class model. To prove that this algorithm is more feasible and effective compared with other swarm intelligence algorithms. The best prediction performance of WG-BA-BP is 0.010905, and the accuracy rate can reach 0.9737.

Publisher

IOS Press

Subject

Artificial Intelligence,General Engineering,Statistics and Probability

Reference25 articles.

1. Soni A.K. and Rao B.P. , Lock-in Amplifier Based Eddy Current Instrument for Detection of Sub-surface Defect in Stainless Steel Plates[J], Sensing and Imaging 19(1) (2018).

2. Automatic Defect Detection on Hot-Rolled Flat Steel Products[J];Ghorai;IEEE Transactions on Instrumentation & Measurement,2013

3. Mathematics; Investigators at Northeastern University Discuss Findings in Mathematics (Feature Fusion-based Preprocessing for Steel Plate Surface Defect Recognition)[J], Journal of Mathematics, 2020.

4. Zhenkang X. , Jiangwei R. , Youfeng Z. and Xiying Z. , Nugget Formation and Characterization of Effect of Cover Plate on the Formation of Solidification Defects in Resistance Spot Welding of Dissimilar Al6016/HC420LA Steel[J], Advanced Engineering Materials 22(3) (2020).

5. Farid N. , Mahmoud N. and Nagib N. , Comparative study of a standard optical steel plate surface using ellipsometry and speckle interferometry[J], Journal of Optics 47(3) (2018).

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