Signal separation and continuous missing value imputation of strain gauge in the icebreaker sensor system

IF 4.3 2区 工程技术 Q1 ENGINEERING, OCEAN Applied Ocean Research Pub Date : 2024-11-06 DOI:10.1016/j.apor.2024.104290
Hyo Beom Heo , Eun-Jin Oh , Seung Hwan Park
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Abstract

Korea's first icebreaking research vessel, ARAON, has been conducting icebreaking performance tests in polar waters since 2010. These tests collect data to calculate design factors for the structural safety and load optimization of icebreakers. However, due to ARAON's operation in extreme environments, missing values frequently occur in the collected data, leading to unreliable results. This study focuses on imputing missing values from the three-axis strain gauges among various sensors attached to ARAON. Strain gauges, located on the hull plate where collisions with ice occur for local ice load estimation, experience a high frequency of missing values. Imputing missing values from strain gauges presents two major challenges. The first challenge is handling the composite signal. Strain data is a mixture of response signals caused by various external factors, such as hull-ice collisions and engine noise, making it difficult to impute missing values using raw data alone. The second challenge is with continuous missing data. There are still limitations to imputing continuous missing data, which is commonly encountered in real-world scenarios. To address these challenges, locally weighted scatterplot smoothing (LOWESS) regression and Tukey's fences method are used to separate the strain data according to strain components. Subsequently, the within and inter-sensor relationship-based linear regression (WIRLI) is proposed to have good imputation performance even for continuous missing data. The results demonstrate that the WIRLI performs robust imputation even when the missing rate changes. Hence, this model can be applied to impute the missing values in icebreaking performance tests where various missing scenarios occur.
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破冰船传感器系统中应变仪的信号分离和连续缺失值估算
韩国首艘破冰研究船 ARAON 号自 2010 年以来一直在极地水域进行破冰性能测试。这些测试收集的数据用于计算破冰船结构安全和载荷优化的设计系数。然而,由于 ARAON 在极端环境中运行,收集的数据中经常出现缺失值,导致结果不可靠。本研究的重点是对 ARAON 上各种传感器中的三轴应变片的缺失值进行归类。应变片位于船壳板上,在此发生与冰的碰撞以估算局部冰载荷,其缺失值出现的频率很高。对应变片的缺失值进行推算面临两大挑战。第一个挑战是处理复合信号。应变数据是由各种外部因素(如冰船碰撞和发动机噪音)引起的响应信号的混合物,因此很难单独使用原始数据来估算缺失值。第二个挑战是连续缺失数据。归因连续缺失数据仍然存在局限性,而这在现实世界中是经常遇到的。为了应对这些挑战,我们采用了局部加权散点图平滑(LOWESS)回归和 Tukey 栅栏法,根据应变成分分离应变数据。随后,提出了基于传感器内和传感器间关系的线性回归(WIRLI),即使对于连续缺失数据也具有良好的估算性能。结果表明,即使缺失率发生变化,WIRLI 也能进行稳健的估算。因此,该模型可用于发生各种缺失情况的破冰性能测试中的缺失值估算。
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来源期刊
Applied Ocean Research
Applied Ocean Research 地学-工程:大洋
CiteScore
8.70
自引率
7.00%
发文量
316
审稿时长
59 days
期刊介绍: The aim of Applied Ocean Research is to encourage the submission of papers that advance the state of knowledge in a range of topics relevant to ocean engineering.
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