Argo data anomaly detection algorithm based on selective ensemble of fuzzy clustering

Author:

Zhu Wanlu,Jiang Yongguo,Zhang Meng

Abstract

Abstract Argo profiling float data is a crucial data source for fundamental research and predictive forecasting operations in oceanography and environmental science. However, compiling and organizing such datasets demands considerable time and human resources. Therefore, the quest for effective methods of detecting anomalies in Argo data is of paramount importance. In this regard, we propose three improvement strategies within the stacking ensemble framework: preserving the original training set, weighting base model outputs, and combining the two former methods. The aim is to explore implicit relationships within the data, enhance model prediction diversity, and improve Accuracy. Additionally, in the selection of base models, to address the challenge of conventional clustering-based ensemble algorithms in achieving high levels of both diversity and accuracy among base learners, we introduce a selective ensemble method based on C-means clustering. This method selects base learners for the ensemble based on weighted scores derived from membership and performance evaluation metrics. Both of these enhancement approaches demonstrate effective application and improved detection performance when applied to Argo data.

Publisher

IOP Publishing

Reference16 articles.

1. Unsupervised anomaly detection and localization with one model for all categories;Tan;Knowledge-Based Systems,2024

2. Anomaly detection using hybrid neuro genetic model;Pokuri;Journal of Interconnection Networks,2022

3. Research on motor rotation anomaly detection based on improved VMD algorithm;Chen;Railway Sciences,2024

4. Anomaly detection of retention loss in fixed partial dentures using resonance frequency analysis and machine learning: An in vitro study;Sammour;Journal of Prosthodontic Research,2024

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