INTELLIGENT MONITORING OF A LARGE CATAMARAN FERRY

IF 0.7 4区 工程技术 Q4 ENGINEERING, MARINE International Journal of Maritime Engineering Pub Date : 2023-07-10 DOI:10.5750/ijme.v165ia1.791
B. Shabani
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引用次数: 0

Abstract

Wave load cycles, wet-deck slamming events, accelerations and motion comfort are important considerations for high-speed catamarans operating in moderate to large waves. Although developing a hull monitoring system according to classification guidelines for such vessels is broadly acceptable, the data processing requirements for outputs such as rainflow counting, filtering, probability distribution, fatigue damage estimation and warning due to slamming can be as sophisticated to implement as the system components themselves. Advanced analytics such as machine learning and deep learning data pipelines will also create more complexities for such systems, if included. This paper provides an overview of data analytics methods and cloud computing resources for remotely monitoring motions and structural responses of a 111 m high-speed catamaran. To satisfy the data processing requirements, MATLAB Reference Architectures on Amazon Web Services (AWS) were used. Such combination enabled fast parallel computing and advanced feature engineering in a time-efficient manner. A MATLAB Production Server on AWS has been set up for near real-time analytics and execution of functions developed according to the class guidelines. A case study using Long Short‑Term Memory (LSTM) networks for ship speed and Motion Sickness Incidence (MSI) is provided and discussed. Such data architecture provides a flexible and scalable solution, leading to deeper insights through big data processing and machine learning, which supports hull monitoring functions as a service.
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大型双体船渡船的智能监控
波浪载荷周期、湿甲板撞击事件、加速度和运动舒适性是高速双体船在中大浪中运行的重要考虑因素。尽管根据此类船舶的分类指南开发船体监测系统被广泛接受,但输出的数据处理要求,如雨流计数、过滤、概率分布、疲劳损伤估计和撞击警告,可能与系统组件本身一样复杂,难以实现。机器学习和深度学习数据管道等高级分析也将为此类系统带来更多复杂性。本文概述了用于远程监测111米高速双体船运动和结构响应的数据分析方法和云计算资源。为了满足数据处理需求,使用了Amazon Web Services (AWS)上的MATLAB参考体系结构。这样的组合使快速并行计算和先进的特征工程在时间效率的方式。在AWS上建立了MATLAB生产服务器,用于根据类指南开发的近实时分析和执行功能。提供并讨论了使用长短期记忆(LSTM)网络进行船舶速度和晕动病发生率(MSI)的案例研究。这种数据架构提供了一种灵活且可扩展的解决方案,通过大数据处理和机器学习提供更深入的见解,从而支持船体监测功能即服务。
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来源期刊
CiteScore
1.20
自引率
0.00%
发文量
18
审稿时长
>12 weeks
期刊介绍: The International Journal of Maritime Engineering (IJME) provides a forum for the reporting and discussion on technical and scientific issues associated with the design and construction of commercial marine vessels . Contributions in the form of papers and notes, together with discussion on published papers are welcomed.
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