Department of Electrical Electronic and Computer Engineering, University of Catania, 95125 Catania, Italy.
Sensors (Basel). 2020 Oct 23;20(21):6028. doi: 10.3390/s20216028.
Maintenance is one of the most important aspects in industrial and production environments. Predictive maintenance is an approach that aims to schedule maintenance tasks based on historical data in order to avoid machine failures and reduce the costs due to unnecessary maintenance actions. Approaches for the implementation of a maintenance solution often differ depending on the kind of data to be analyzed and on the techniques and models adopted for the failure forecasts and for maintenance decision-making. Nowadays, Industry 4.0 introduces a flexible and adaptable manufacturing concept to satisfy a market requiring an increasing demand for customization. The adoption of vendor-specific solutions for predictive maintenance and the heterogeneity of technologies adopted in the brownfield for the condition monitoring of machinery reduce the flexibility and interoperability required by Industry 4.0. In this paper a novel approach for the definition of a generic and technology-independent model for predictive maintenance is presented. Such model leverages on the concept of the Reference Architecture Model for Industry (RAMI) 4.0 Asset Administration Shell, as a means to achieve interoperability between different devices and to implement generic functionalities for predictive maintenance.
维护是工业和生产环境中最重要的方面之一。预测性维护是一种旨在根据历史数据安排维护任务的方法,以避免机器故障并减少因不必要的维护操作而产生的成本。实施维护解决方案的方法通常因要分析的数据类型以及采用的技术和模型(用于故障预测和维护决策)而异。如今,工业 4.0 引入了灵活和适应性强的制造概念,以满足市场对定制化日益增长的需求。预测性维护采用特定于供应商的解决方案,以及机械状态监测中采用的棕色地带技术的异构性,降低了工业 4.0 所需的灵活性和互操作性。本文提出了一种用于定义预测性维护的通用和与技术无关的模型的新方法。该模型利用工业参考架构模型(RAMI)4.0 资产管理外壳的概念,作为在不同设备之间实现互操作性和实现预测性维护通用功能的手段。