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基于改进YOLOv11算法的煤泥水浓度实时检测

王传真 朱睿 蒋凤成 徐康 张松山 谢保冈 郑璇 许浩然 张文勋

矿产保护与利用2026,Vol.46Issue(2):82-93,12.
矿产保护与利用2026,Vol.46Issue(2):82-93,12.DOI:10.13779/j.cnki.issn1001-0076.2026.02.005

基于改进YOLOv11算法的煤泥水浓度实时检测

Real-time Detection of Coal Slurry Concentration Based on an Improved YOLOv11 Algorithm

王传真 1朱睿 2蒋凤成 2徐康 3张松山 3谢保冈 3郑璇 2许浩然 2张文勋2

作者信息

  • 1. 安徽理工大学 材料科学与工程学院,安徽 淮南 232001||安徽省煤炭清洁加工与碳减排工程研究中心,安徽 淮南 232001
  • 2. 安徽理工大学 材料科学与工程学院,安徽 淮南 232001
  • 3. 淮北矿业股份有限公司涡北选煤厂,安徽 亳州 233600
  • 折叠

摘要

Abstract

The concentration of coal slurry in the clarification layer of thickeners is an important parameter for evaluating sedimentation and guiding reagent dosing in coal preparation plants.Traditional methods have relied on manual observation or instruments such as turbidity meters and interface meters,which often suffer from poor stability,limited real-time performance,and susceptibility to environmental disturbances.To overcome these limitations,this study took coal slurry from the Guobei Coal Preparation Plant as the research object and proposed a lightweight visual recognition method based on light transmission characteristics.Considering the low contrast and strong noise interference in coal slurry images,a dedicated preprocessing method was established.Comparative experiment results identified"bilateral filtering+CLAHE"as the optimal enhancement scheme,increasing root mean square contrast by 30.4%and image entropy by 12.8%.Grayscale processing further reduced data volume by 23%while retaining key luminance information.Subsequently,a YOLOv11-based concentration recognition model was developed,introducing C3K2 modules into the Backbone and Neck and integrating a C2PSA attention mechanism to enhance feature extraction,while maintaining a lightweight model structure.Training stabilized after approximately 150 epochs;at 200 epochs,the bounding box,classification,and distribution losses converged to 0.10,0.53,and 0.77,respectively.Test results showed a recognition accuracy of 95.8%,an average detection speed of about 30 FPS,and Precision,Recall,and mAP95 of 92.5%,93.2%,and 95.2%.Compared with conventional methods,the proposed approach enables continuous,stable,and real-time concentration recognition,providing a reliable technical solution for online intelligent monitoring of coal slurry clarification layer in thickeners for coal preparation plants.

关键词

机器视觉/目标检测/图像处理/YOLOv11/煤泥水浓度

Key words

machine vision/object detection/image processing/YOLOv11/coal slurry detection

分类

矿业与冶金

引用本文复制引用

王传真,朱睿,蒋凤成,徐康,张松山,谢保冈,郑璇,许浩然,张文勋..基于改进YOLOv11算法的煤泥水浓度实时检测[J].矿产保护与利用,2026,46(2):82-93,12.

基金项目

国家自然科学基金面上基金项目(52574308) (52574308)

安徽高校自然科学研究项目(2024AH050339) (2024AH050339)

安徽省自然科学基金项目(2508085ME133) (2508085ME133)

矿产保护与利用

1001-0076

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