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A Self-Organizing Fuzzy Logic Classifier for Benchmarking Robot-Aided Blasting of Ship Hulls

机译:一种自组织模糊逻辑分类器用于对船体机器人辅助爆破进行对标

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摘要

Regular dry dock maintenance work on ship hulls is essential for maintaining the efficiency and sustainability of the shipping industry. Hydro blasting is one of the major processes of dry dock maintenance work, where human labor is extensively used. The conventional methods of maintenance work suffer from many shortcomings, and hence robotized solutions have been developed. This paper proposes a novel robotic system that can synthesize a benchmarking map for a previously blasted ship hull. A Self-Organizing Fuzzy logic (SOF) classifier has been developed to benchmark the blasting quality of a ship hull similar to blasting quality categorization done by human experts. Hornbill, a multipurpose inspection and maintenance robot intended for hydro blasting, benchmarking, and painting, has been developed by integrating the proposed SOF classifier. Moreover, an integrated system solution has been developed to improve dry dock maintenance of ship hulls. The proposed SOF classifier can achieve a mean accuracy of 0.9942 with an execution time of 8.42 µs. Realtime experimenting with the proposed robotic system has been conducted on a ship hull. This experiment confirms the ability of the proposed robotic system in synthesizing a benchmarking map that reveals the benchmarking quality of different areas of a previously blasted ship hull. This sort of a benchmarking map would be useful for ensuring the blasting quality as well as performing efficient spot wise reblasting before the painting. Therefore, the proposed robotic system could be utilized for improving the efficiency and quality of hydro blasting work on the ship hull maintenance industry.
机译:定期对船体进行干船坞维护工作对于维护航运业的效率和可持续性至关重要。水力喷射是干船坞维护工作的主要过程之一,在该过程中,人工劳动被广泛使用。常规的维护工作方法存在许多缺点,因此已经开发了机器人解决方案。本文提出了一种新颖的机器人系统,该系统可以为先前爆破的船体合成基准图。已经开发了一种自组织模糊逻辑(SOF)分类器,用于对船体的爆破质量进行基准测试,类似于人类专家进行的爆破质量分类。通过集成拟议的SOF分类器,开发了旨在用于喷水,对标和喷漆的多功能检查和维护机器人Hornbill。此外,已经开发了集成系统解决方案来改善船体的干船坞维护。提出的SOF分类器可以实现平均平均精度为0.9942,执行时间为8.42 µs。已在船体上对提出的机器人系统进行了实时实验。该实验证实了所提出的机器人系统综合基准图的能力,该基准图揭示了先前爆破的船体不同区域的基准质量。这种基准测试图对于确保喷砂质量以及在喷漆之前进行有效的逐点喷砂非常有用。因此,所提出的机器人系统可以用于提高船体维修行业的水力喷射工作的效率和质量。

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