High-Level Feature Fusion Deep Learning Model for Fault Detection in Handling Equipment in Dry Bulk Ports

Author:

Tian Qi1ORCID,Wang Wenyuan1ORCID,Peng Yun1,Xu Xinglu1

Affiliation:

1. State Key Laboratory of Coastal and Offshore Engineering, Dalian University of Technology, Dalian 116024, China

Abstract

The flexibility of handling equipment in dry bulk ports is poor, and frequent equipment fault induced by the high-load and high-power working conditions greatly impacts the overall port handling operations, making accurate fault detection play an important role in improving the efficiency and stability of dry bulk port operations. However, as we know, most fault detection methods for port handling equipment depend heavily on monitoring sensor data, which is not applicable in the dry bulk port due to high configuration and maintenance cost, as well as the high false alarm rate of monitoring sensors caused by strong background noise. To solve the problem, this study proposes a High-Level Feature Fusion Deep Learning Model, which uses different deep learning sub-models to extract features of structured and unstructured data. It fuses the extracted feature vectors to achieve fault detection in the handling equipment, establishing the mapping relationship between the fault (e.g., waiting for the pre-loading process, equipment fault, and others) and multi-source heterogeneous operation and maintenance data for the handling equipment, including reclaimers, belt conveyors, dumpers, and ship loaders. To verify the effectiveness of the proposed method, the actual data of a coal port in Northern China is employed as an example. The results show the deep learning model can achieve high prediction accuracy (over 86%) with high efficiency (0.5 s for each sample), which provides decision support for the fault detection in dry bulk port handling equipment.

Funder

National Key R&D Program of China

Natural Science Foundation of Liaoning Province

Fund of National Engineering Research Center for Water Transport Safety

Publisher

MDPI AG

Reference28 articles.

1. (2021, May 10). Knowledge Sourcing Intelligence, Global Dry Bulk Shipping Market Size, Share, Opportunities, COVID-19 Impact, and Trends by Commodity Type (Iron Ore, Coal, Grain, Bauxite, Others), by Vessel Type (Capesize, Handysize, Panamax, Handymax) and by Geography—Forecasts from 2019 to 2024. Available online: https://www.knowledge-sourcing.com/report/global-dry-bulk-shipping-market.

2. Recent advances in the application of deep learning for fault diagnosis of rotating machinery using vibration signals;Tama;Artif. Intell. Rev.,2023

3. A novel deep autoencoder and hyperparametric adaptive learning for imbalance intelligent fault diagnosis of rotating machinery;Li;Eng. Appl. Artif. Intell.,2021

4. Fault diagnosis based on deep learning for current-carrying ring of catenary system in sustainable railway transportation;Chen;Appl. Soft Comput.,2021

5. RADIS: A real-time anomaly detection intelligent system for fault diagnosis of marine machinery;Lazakis;Expert Syst. Appl.,2022

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