涂料工业 ›› 2026, Vol. 56 ›› Issue (6): 52-57. doi: 10.12020/j.issn.0253-4312.2025-245

• 标准及检测 • 上一篇    下一篇

东海海上风电基础及支撑结构涂层勘验评估研究

许 楠1,江学志*2,曾登峰2,王 博3,华 薇1,陈翔峰2,江水旺2   

  1. 1. 中国三峡新能源(集团)股份有限公司,北京101199;

    2. 中国船舶集团有限公司第七二五研究所 海洋腐蚀与防护全国重点实验室,福建厦门361100;

    3. 三峡新能源海上风电运维江苏有限公司,江苏盐城224000
  • 出版日期:2026-06-01 发布日期:2026-06-10
  • 基金资助:
    中国长江三峡集团公司科研项目“海上风电基础及支撑结构防护涂层体系环境适应性研究(NBWL202400005)”(合同
    编号:三峡能源合字[2024]266号)

Investigation and Evaluation of Coatings on Foundation and Support Structure of an Offshore Wind Farms in the East China Sea

XU Nan1,JIANG Xuezhi2,ZENG Dengfeng2,WANG Bo3,HUA Wei1,CHEN Xiangfeng2,JIANG Shuiwang2   

  1. 1. China Three Gorges Renewables(Group) Co., Ltd., Beijing 101199,China;

    2. State Key Laboratory for Marine Corrosion and Protection,Luoyang Ship Material Research Institute(LSMRI),Xiamen,Fujian 361100,China;

    3. Three Gorges New Energy Offshore Wind Power Operation and Maintenance Jiangsu Co., Ltd., Yancheng,Jiangsu 224000,China

  • Online:2026-06-01 Published:2026-06-10

摘要: 【目的】为解决传统生物污损评价难以量化、效率低、主观性强等问题,提出基于图像识别的自动化定量评价方案。【方法】在舟山六横岛海域开展 7个月实海浸泡实验,完整记录了六横岛海域 3类样板的污损情况,覆盖了污损生物生长淡季到旺季。采用百分格度板法、标注掩码法和图像识别法对比分析污损图像,并建立改进的污损值评价模型。【结果】 U-Net模型对污损图像的识别精度较高,识别速度较人工方法提升 2个数量级,仅为 71. 6 ms/张。通过引入物种权重系数提出污损值评价模型, 6—9月期间空白板污损程度从 15. 5上升到 157. 4。水解型涂层 A较自抛光型涂层 B具有更低的污损值和更好的防污性能,表明不同实海条件下的涂层防污性能有差异。【结论】图像识别技术为海洋生物污损定量评价和防污涂层性能检测提供了高效可靠的技术手段,显著提升了污损评价的准确性与合理性。

关键词: 生物污损, 图像识别, 量化评价, 涂层, 防污性能

Abstract: [Objective] To address the issues of traditional biofouling evaluation,such as difficulty in quantification,low efficiency,and strong subjectivity,an automated quantitative evaluation scheme based on image recognition technology was proposed.[Methods] A seven-month marine immersion test was conducted in the waters of Liuheng Island,Zhoushan. We fully documented the biofouling progression on three types of test panels,covering the period from the off-season to the peak season of fouling organism growth. The biofouling images were analyzed and compared using the quadrat method,the annotation masking method and the image recognition method,and an enhanced fouling rating evaluation model was established.[Results]The U-Net model achieved high recognition accuracy for biofouling images,and its recognition speed was two orders of magnitude faster than manual methods,requiring only 71. 6 ms per image. By introducing species-specific weighting coefficients,a fouling rating evaluation model was proposed. From June to September,the fouling ratingof blank panel increased from 15. 5 to 157. 4. Hydrolytic coating A exhibited a lower fouling rating and superior anti-fouling performance than self-polishing coating B,indicating that the anti-foulingefficacy of coatings differed under different actual marine conditions.[Conclusion]Image recognitiontechnology provided an efficient and reliable technical means for the quantitative assessment of marinebiofouling and the evaluation of anti-fouling coating performance,and significantly improved the accuracy and rationality of fouling evaluation.

Key words: biofouling, image recognition, quantitative evaluation, coating, anti-fouling performance

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