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  1. National Taiwan Ocean University Research Hub
  2. 海運暨管理學院
  3. 航運管理學系
請用此 Handle URI 來引用此文件: http://scholars.ntou.edu.tw/handle/123456789/25398
標題: Exploring factors influencing aviation MRO services with blockchain technology in Taiwan
作者: Lin, Yenhsu
Chiu, Rong-Her 
關鍵字: Blockchain;MRO;AHP;Expert knowledge
公開日期: 2024
出版社: EMERALD GROUP PUBLISHING LTD
來源出版物: AIRCRAFT ENGINEERING AND AEROSPACE TECHNOLOGY
摘要: 
Global warming has enduring consequences in the ocean, leading to increased sea surface temperatures (SSTs) and subsequent environmental impacts, including coral bleaching and intensified tropical storms. It is imperative to monitor these trends to enable informed decision-making and adaptation. In this study, we comprehensively examine the methods for extracting long-term temperature trends, including STL, seasonal-trend decomposition procedure based on LOESS (locally estimated scatterplot smoothing), and the linear regression family, which comprises the ordinary least-squares regression (OLSR), orthogonal regression (OR), and geometric-mean regression (GMR). The applicability and limitations of these methods are assessed based on experimental and simulated data. STL may stand out as the most accurate method for extracting long-term trends. However, it is associated with notably sizable computational time. In contrast, linear regression methods are far more efficient. Among these methods, GMR is not suitable due to its inherent assumption of a random temporal component. OLSR and OR are preferable for general tasks but require correction to accurately account for seasonal signal-induced bias resulting from the phase-distance imbalance. We observe that this bias can be effectively addressed by trimming the SST data to ensure that the time series becomes an even function before applying linear regression, which is named evenization". We compare our methods with two commonly used methods in the climate community. Our proposed method is unbiased and better than the conventional SST anomaly method. While our method may have a larger degree of uncertainty than combined linear and sinusoidal fitting this uncertainty remains within an acceptable range. Furthermore linear and sinusoidal fitting can be unstable when applied to natural data containing significant noise.
URI: http://scholars.ntou.edu.tw/handle/123456789/25398
ISSN: 1748-8842
DOI: 10.1108/AEAT-09-2023-0248
顯示於:航運管理學系

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