停工期
断层(地质)
维护措施
方位(导航)
工程类
涡轮机
信号(编程语言)
可靠性工程
状态监测
状态维修
预测性维护
过程(计算)
水力机械
飞机维修
振动
维修工程
控制工程
计算机科学
专家系统
汽车工程
印章(徽章)
鉴定(生物学)
计划维护
人工神经网络
预防性维护
作者
Yongzhong Zeng,Haokun Wang,Guangsheng Ran,Zhilin Dong,Xueyi Li,Xiaobing Liu,Jiquan He
标识
DOI:10.1177/14759217261422123
摘要
When the operating conditions of a hydraulic turbine bearing are dynamically adjusted under varying loads, it often leads to aggravated shaft vibrations and seal failures, which can result in unplanned downtime and substantial economic losses. To address this issue, a fault diagnosis and maintenance system, named signal large language model (LLM), has been developed. In terms of enhancing diagnostic reliability, a dual-channel fusion strategy, integrating both long-term and short-term time windows, is employed to simultaneously capture global and instantaneous features, improving diagnostic accuracy by 5% compared to previous methods. To improve maintenance efficiency, this study proposes a trusted maintenance planning strategy that combines LLMs with neural network-based communication, creating a closed-loop process from diagnosis to maintenance execution. Comparative experiments confirm the system’s superior performance in terms of maintenance efficiency.
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