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联合收割机的结构故障检测与诊断:综述

Structural Fault Detection and Diagnosis for Combine Harvesters: A Critical Review.

作者信息

Wang Haiyang, Lao Liyun, Zhang Honglei, Tang Zhong, Qian Pengfei, He Qi

机构信息

College of Agricultural Engineering, Jiangsu University, Zhenjiang 212013, China.

Faculty of Engineering and Applied Sciences, Cranfield University, Cranfield MK43 0AL, UK.

出版信息

Sensors (Basel). 2025 Jun 20;25(13):3851. doi: 10.3390/s25133851.

Abstract

Combine harvesters, as essential equipment in agricultural engineering, frequently experience structural faults due to their complex structure and harsh working conditions, which severely affect their reliability and operational efficiency, leading to significant downtime and reduced agricultural productivity during critical harvesting periods. Therefore, developing accurate and timely Fault Detection and Diagnosis (FDD) techniques is crucial for ensuring food security. This paper provides a systematic and critical review and analysis of the latest advancements in research on data-driven FDD methods for structural faults in combine harvesters. First, it outlines the typical structural sections of combine harvesters and their common structural fault types. Subsequently, it details the core steps of data-driven methods, including the acquisition of operational data from various sensors (e.g., vibration, acoustic, strain), signal preprocessing methods, signal processing and feature extraction techniques covering time-domain, frequency-domain, time-frequency domain combination, and modal analysis among others, and the use of machine learning and artificial intelligence models for fault pattern learning and diagnosis. Furthermore, it explores the required system and technical support for implementing such data-driven FDD methods, such as the applications of on-board diagnostic units, remote monitoring platforms, and simulation modeling. It provides an in-depth analysis of the key challenges currently encountered in this field, including difficulties in data acquisition, signal complexity, and insufficient model robustness, and consequently proposes future research directions, aiming to provide insights for the development of intelligent maintenance and efficient and reliable operation of combine harvesters and other complex agricultural machinery.

摘要

联合收割机作为农业工程中的关键设备,由于其结构复杂且工作条件恶劣,经常出现结构故障,这严重影响了它们的可靠性和作业效率,导致在关键收获期出现大量停机时间,并降低了农业生产率。因此,开发准确及时的故障检测与诊断(FDD)技术对于确保粮食安全至关重要。本文对联合收割机结构故障数据驱动FDD方法的最新研究进展进行了系统且批判性的综述与分析。首先,概述了联合收割机的典型结构部件及其常见结构故障类型。随后,详细介绍了数据驱动方法的核心步骤,包括从各种传感器(如振动、声学、应变)获取运行数据、信号预处理方法、涵盖时域、频域、时频域组合以及模态分析等的信号处理和特征提取技术,以及使用机器学习和人工智能模型进行故障模式学习与诊断。此外,探讨了实施此类数据驱动FDD方法所需的系统和技术支持,如车载诊断单元、远程监测平台和仿真建模的应用。深入分析了该领域目前面临的关键挑战,包括数据采集困难、信号复杂性以及模型鲁棒性不足等问题,并据此提出了未来的研究方向,旨在为联合收割机及其他复杂农业机械的智能维护以及高效可靠运行的发展提供见解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a001/12251867/ee36e36e2ada/sensors-25-03851-g001.jpg

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