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基于改进YOLOv8算法的输送带偏差检测研究

Study of conveyor belt deviation detection based on improved YOLOv8 algorithm.

作者信息

Ni Yunfeng, Cheng Haixin, Hou Ying, Guo Ping

机构信息

Affiliation College of Xi'an University of Science and Technology, Xian, China.

出版信息

Sci Rep. 2024 Nov 6;14(1):26876. doi: 10.1038/s41598-024-75542-7.

Abstract

Conveyor belt deviation is a commmon and severe type of fault in belt conveyor systems, often resulting in significant economic losses and potential environment pollution. Traditional detection methods have obvious limitations in fault localization precision and analysis accuracy, unable to meet the demands of efficient and real-time fault detection in complex industrial scenarios. To address these issues, this paper proposes an improved detection algorithm based on YOLOv8, aiming to achieve efficient and accurate detection during the operation of the belt. Firstly, an Enhanced Squeeze-and-Excitation (ESE) module is incorporated into C2f to boost feature extraction for rollers and belts. Secondly, the construction of the BiFPN_DoubleAttention module in the neck network enhances bidirectional feature fusion and attention mechanism, thereby improving multi-scale object localization accuracy under complex environments. Then, a Multi-Head Self-Attention (MHSA) mechanism is introduced in the head network, better capturing positional features of small roller targets and belt areas in various environments, thus enhancing detection performance. Finally, extensive experiments are conducted on a self-built dataset, achieving an accuracy of 98.1%, mAP0.5 of 99.0%, and a detection speed of 46 frames per second (FPS). This method effectively handles variations and disturbances in the conveyor belt transportation environment, meeting real-time diagnostic needs for belt misalignment in the industry.

摘要

输送带跑偏是带式输送系统中常见且严重的故障类型,常导致重大经济损失和潜在环境污染。传统检测方法在故障定位精度和分析准确性方面存在明显局限性,无法满足复杂工业场景下高效实时故障检测的需求。为解决这些问题,本文提出一种基于YOLOv8的改进检测算法,旨在实现输送带运行过程中的高效准确检测。首先,将增强型挤压激励(ESE)模块融入C2f中,以提升对滚筒和输送带的特征提取能力。其次,在颈部网络构建BiFPN_DoubleAttention模块,增强双向特征融合和注意力机制,从而提高复杂环境下多尺度目标定位精度。然后,在头部网络引入多头自注意力(MHSA)机制,更好地捕捉各种环境下小滚筒目标和输送带区域的位置特征,进而提升检测性能。最后,在自建数据集上进行大量实验,准确率达到98.1%,mAP0.5为99.0%,检测速度为每秒46帧(FPS)。该方法有效应对了输送带运输环境中的变化和干扰,满足了工业中输送带跑偏实时诊断需求。

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