让人工智能适应预测性维护

Adapting Artificial Intelligence to Predictive Maintenance

CEA-Leti Original
摘要
法国CEA-Leti实验室团队结合人工智能推进预测性维护研究,其博士生Guillaume Prevost凭借“知识引导符号回归发现新特征用于滚动轴承退化分析”论文在2025年国际PHM会议上获最佳论文奖。团队成员Leila Merzak与Célestin Ott等正开发基于数字孪生和物理信息AI的损伤预测方案,如应用于膝关节假体,该技术可提升故障检测可靠性并精准预测设备退化,从而延长机器寿命、优化关键行业维护。

在 CEA-Leti 实验室中,精密敏感的系统支撑着关键研发,这使得持续的预测性维护至关重要——它可延长设备寿命、避免非计划停机并优化维护策略。该机构系统部门的研究人员正将人工智能技术与既有实践深度融合,相关工具已在多个工业领域获得认可。

在 2025 年西雅图国际预测与健康管理大会上,信号处理与 AI 方向的博士生 Guillaume Prevost 凭借论文“Knowledge-Informed Symbolic Regression for New Features Discovery for Degradation Analysis of Rolling Bearings”获最佳论文奖。其研究凸显了跨学科协作:团队成员 Youssof 提供物理建模专长,Prevost 则专注信号与数据处理。另一位博士生 Leila Merzak 透露,团队当前用例之一是为机械结构开发损伤预测与健康状态评估的数字孪生——例如在其博士课题中针对膝关节假体的研究。多物理场建模研究工程师 Célestin Ott 指出,数字孪生与物理信息人工智能的融合可提升故障检测与退化预测的可靠性,从而实现更精准的预测性维护。

团队在严谨工作之余亦有轻松时刻:Prevost 曾为实验室订购一台铣床,用于通过超声传感监测旋转机械中刀具的健康状态,以实验手段支撑预测性维护研究。这一系列工作表明,知识驱动的 AI 正成为预测性维护向更精确、更智能演进的加速器。

Summary
CEA-Leti researchers won a Best Paper Award at the 2025 Prognostics and Health Management conference for AI-driven degradation analysis of rolling bearings. The multidisciplinary team, including PhD students Guillaume Prevost and Leila Merzak and engineer Célestin Ott, integrates digital twins and physics-informed AI to enhance predictive maintenance accuracy for industrial machinery and medical devices like knee prostheses. This approach improves fault detection and lifespan optimization in critical systems.

Predictive maintenance is crucial in CEA-Leti’s labs, where sensitive systems underpin research engineering, and extending equipment lifespan, avoiding downtime, and streamlining maintenance are top priorities. The institute’s Systems Department is integrating AI into these established workflows, a approach gaining traction across multiple industrial sectors. At the 2025 International Conference on Prognostics and Health Management in Seattle, PhD student Guillaume Prevost earned a Best Paper Award for “Knowledge-Informed Symbolic Regression for New Features Discovery for Degradation Analysis of Rolling Bearings.” Prevost’s work blends signal processing and AI with physical modeling from colleague Youssof, reflecting the multidisciplinary ethos of CEA-Leti projects. Fellow PhD student Leila Merzak noted the team is developing digital twins for damage prediction and state-of-health estimation on mechanical structures, including her research on knee prostheses. Research engineer Célestin Ott explained that coupling digital twins with physics-informed AI sharpens predictive maintenance by boosting fault detection and degradation forecasting reliability. In a lighter vein, Prevost recently ordered a milling machine to carry out experimental ultrasonic sensing studies on tool condition monitoring in rotating machinery, underscoring the lab’s hands-on drive to anticipate wear.

Résumé
Le CEA-Leti intègre l'intelligence artificielle à la maintenance prédictive, avec Guillaume Prevost, doctorant, récompensé par un Best Paper Award pour ses travaux sur la dégradation des roulements. L'équipe, comprenant Leila Merzak et Célestin Ott, développe des jumeaux numériques et une IA informée par la physique pour améliorer la détection de défauts et la prédiction de l'état de santé, avec des applications dans les prothèses de genou et la surveillance de machines tournantes.

​​​​​​Ongoing predictive maintenance is critical in CEA-Leti labs, whose sophisticated and sensitive systems support the vital work of research engineers. Effective maintenance extends the lifespan of machines, prevents unplanned downtime, and optimizes mainten​​ance in key sectors. In CEA-Leti's Systems Department, researchers are incorporating artificial intelligence with established practices.​

It is no surprise that these enhanced tools are being incorporated in multiple industrial sectors and are receiving recognition.

At the 2025 International Conference on Prognostics and Health Management in Seattle,Guillaume Prevost, a PhD student in signal processing and AI,presented a papertitled, “Knowledge-Informed Symbolic Regression for New Features Discovery for Degradation Analysis of Rolling Bearings." It won a Best Paper Award.​

Like most CEA-Leti projects, predictive maintenance involves multidisciplinary teams, for example expertise in physical modeling, which Youssof brings, and Guillaume's signal-and-data processing.

Team member Leila Merzak, a PhD student in modeling and signal processing, said one of the team's current use cases is focused on developing digital twins for damage prediction and state of health estimation on mechanical structures. For example, in the framework of her PhD research, on knee prostheses.

Célestin Ott, a research engineer-multiphysics modeling at CEA-Leti, explained that integrating digital twins with physics-informed artificial intelligence enables more accurate and targeted predictive maintenance by improving the reliability of fault detection and degradation forecasting.

Like all well-matched research teams, the members recognize an opportunity to share a humorous moment along with their “very constructive and engaging exchanges", as Célestin describes them.

As when Guillaume ordered a milling machine for the lab to conduct experimental studies on tools' state-of-health (SoH) monitoring in rotating machinery, using ultrasonic sensing to anticipate degradation for predictive-maintenance purposes.

AI Insight
核心要点

法国CEA-Leti实验室因其“知识引导的符号回归”轴承退化预测方法获国际会议最佳论文奖,该成果将物理模型与AI深度融合,显著提升了工业预测性维护的准确性和可解释性。

关键角色
  • CEA-Leti:法国格勒诺布尔的微电子与信息技术研究机构,专注将信号处理、物理建模与AI结合用于复杂系统的预测性维护。
行业影响
  • 计算/AI:高——知识引导的符号回归与物理启发型AI技术直接提升了故障预测算法的可靠性。
  • 汽车:中——轴承退化分析可应用于旋转机械,汽车动力总成与底盘系统直接受益。
  • ICT:中——数字孪生与超声传感等数据处理技术为工业物联网基础设施提供核心方案。
跟踪建议

重点跟踪——CEA-Leti此次获奖成果代表了物理知识驱动AI在预测性维护中的前沿突破,可能引领法国及欧洲工业AI标准,并在膝关节假体等高端装备健康管理领域产生溢出效应。

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人工智能 软件 科研
AI Processing
2026-05-05 13:36
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