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Automatic modeling and fault diagnosis of car production lines based on first-principle qualitative mechanics and semantic web technology

机译:基于第一原理定性力学和语义网络技术的汽车生产线自动建模与故障诊断

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Fault diagnosis is critical for intelligent manufacturing by monitoring the status of a production line and preventing financial loss. Model-based fault diagnosis has the advantage of being able to explain the cause and propagation of faults over model-free diagnosis, but would need knowledge about the configuration model and context-specific information of the production line. Ontology modelling can provide context-specific information on top of a configuration model to benefit fault diagnosis. Typically ontologies are manually constructed and then used by a reasoner based on a set of predefined rules. From the perspective of fault diagnosis, this approach works as an expert system where both the ontology models and predefined rules are specific to a given system. Once the system has changed which happens from time to time as repairs and updates in a production line, or in the case of a different system, the ontology models and predefined rules would need to be manually modified or reconstructed. Here a model-based method is proposed to automate generation of configuration models with context-specific information using semantic web technology when a production line is healthy, and to use the generated configuration model and information for diagnosis when the production line has a fault. The method does not rely on predefined rules and reasoners, but rather uses dynamics models that are based on first-principle qualitative mechanics. It uses numerical optimization to minimize the discrepancy between sensor data from the production line and from simulation running the dynamics model to achieve automatic configuration modelling and fault diagnosis. With three use cases commonly found for a production line, i.e. automatic sensor placement modeling or misplacement diagnosis, motor fault diagnosis with single sensor modality, and motor fault diagnosis with sensory substitution, the feasibility of the proposed method is demonstrated. The method's faster computational speed and comparable accuracy to a quantitative model-based approach suggests it may complement and accelerate the latter with early-stage selection of candidate models for both modelling and fault diagnosis.
机译:故障诊断通过监控生产线的状态并防止财务损失来对智能制造至关重要。基于模型的故障诊断具有能够解释无模型诊断的故障的原因和传播的优点,但需要了解关于配置模型和生产线的上下文专用信息的知识。本体建模可以提供关于配置模型的顶部的上下文专用信息,以效益故障诊断。通常,手动构建本体,然后通过基于一组预定义规则来使用推理器使用。从故障诊断的角度来看,这种方法作为一个专家系统,在那里本体模型和预定义规则都是特定于给定系统的。一旦系统发生了更改,它就会在生产线中的维修和更新时发生,或者在不同的系统的情况下,需要手动修改或重建本体模型和预定义规则。这里提出了一种基于模型的方法,以便在生产线健康时使用语义Web技术自动化具有上下文信息的配置模型的生成,并且当生产线具有故障时,使用生成的配置模型和诊断信息进行诊断。该方法不依赖于预定义的规则和推理,而是使用基于第一原理定性力学的动态模型。它使用数字优化来最小化来自生产线的传感器数据之间的差异,以及运行动力学模型的仿真,实现自动配置建模和故障诊断。有三种用例常用的生产线,即自动传感器放置建模或错位诊断,电机故障诊断用单个传感器模式,以及电机故障诊断与感官替代,所提出的方法的可行性。该方法的计算速度更快,可比的基于模型的方法的准确性表明它可以补充和加速后期选择候选模型的早期选择,用于建模和故障诊断。

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