Using Feature Extraction to Perform Equipment Health Monitoring on Ship-Radiated Noise

Acoustics Pub Date : 2023-12-18 DOI:10.3390/acoustics5040067
Nicholas Marasco, H. Elghamrawy, Donald McGaughey
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Abstract

The current state of the art in hydroacoustics research employs a variety of feature extraction techniques with the goal of accurately classifying a ship based on its radiated noise. These techniques are capable of accuracy in excess of 95%. A question arises as to whether similar techniques could be applied to a known vessel to identify and monitor individual systems from the ship’s noise. In this paper, the fast orthogonal search algorithm is used as a basis for a feature extraction and classification algorithm. This algorithm is applied to real recordings of ship-radiated noise and is shown to be capable of identifying the running status of a subset of the ship’s systems, providing a proof of concept for the detection and monitoring of a ship’s systems based solely on the ships hydroacoustic noise.
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利用特征提取对船舶辐射噪声进行设备健康监测
目前的水声研究采用了多种特征提取技术,目的是根据辐射噪声对船舶进行准确分类。这些技术的准确率超过 95%。由此产生的一个问题是,能否将类似的技术应用于已知的船只,以便从船只的噪声中识别和监测各个系统。本文采用快速正交搜索算法作为特征提取和分类算法的基础。该算法应用于船舶辐射噪声的真实记录,并证明能够识别船舶系统子集的运行状态,为仅基于船舶水声噪声检测和监测船舶系统提供了概念验证。
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