智能传感农业液压系统参数识别与故障预测方法研究

Q4 Engineering Measurement Sensors Pub Date : 2025-04-01 Epub Date: 2025-01-25 DOI:10.1016/j.measen.2025.101813
Wenbo Liu, Jiaheng Zheng, Guangdong Shi, Qingshu Yuan, Yongping Lu
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引用次数: 0

摘要

本研究旨在探索深度学习技术,特别是优化长短期记忆网络(LSTM)在智能传感农业液压系统故障诊断和参数识别中的应用。首先,对液压系统进行建模,辨识模型中的关键参数和状态变量;接下来,引入LSTM网络,通过其独特的内部结构对模型进行优化。LSTM可以有效地捕获时间序列数据中的长期依赖关系,使其成为处理涉及动态行为的液压系统的理想选择。为了评估模型的性能,收集了2000个数据点并进行了预处理,其中1897个数据点用于实验。在此基础上,对模型在不同工况下的性能进行了测试。研究结果表明,优化后的LSTM模型在参数识别和故障诊断方面表现良好,特别是在标准工况下,相对错误率仅为1.5%。考虑不同工况和故障模式,该模型在液压系统故障诊断中具有较好的鲁棒性和实用性,特别是泄漏故障诊断准确率达90%以上,且在各种工况下均保持稳定。本研究为深度学习技术在液压系统故障诊断中的应用提供了有力支持,为未来模型的性能优化和应用拓展提供了有价值的见解。
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Research on parameter identification and fault prediction method of hydraulic system in intelligent sensing agriculture
This study aims to explore the application of deep learning techniques, particularly optimized long short-term memory networks (LSTM), in the diagnosis of hydraulic system faults and parameter recognition in intelligent sensing agriculture. Firstly, the hydraulic system was modeled and the key parameters and state variables in the model were identified. Next, the LSTM network is introduced to optimize the model through its unique internal structure. LSTM can effectively capture long-term dependencies in time series data, making it an ideal choice for handling hydraulic systems involving dynamic behavior. To evaluate the performance of the model, 2000 data points were collected and preprocessed, of which 1897 data points were used for experiments. Based on these data, model performance was tested under different operating conditions. The research results show that the optimized LSTM model performs well in parameter recognition and fault diagnosis, especially under standard operating conditions, with a relative error rate of only 1.5 %. Considering different operating conditions and fault modes, the proposed model demonstrates good robustness and practicality in hydraulic system fault diagnosis, especially with an accuracy of over 90 % in leakage fault diagnosis, and remains stable under various operating conditions. This study provides strong support for the application of deep learning technology in hydraulic system fault diagnosis, and valuable insights for the performance optimization and application expansion of future models.
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来源期刊
Measurement Sensors
Measurement Sensors Engineering-Industrial and Manufacturing Engineering
CiteScore
3.10
自引率
0.00%
发文量
184
审稿时长
56 days
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