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Predictive Maintenance for Pump Systems and Thermal Power Plants: State-of-the-Art Review Trends and Challenges

机译:泵系统和火力发电厂的预测性维护:最新审查趋势和挑战

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摘要

Thermal power plants are an important asset in the current energy infrastructure, delivering ancillary services, power, and heat to their respective consumers. Faults on critical components, such as large pumping systems, can lead to material damage and opportunity losses. Pumps plays an essential role in various industries and as such clever maintenance can ensure cost reductions and high availability. Prognostics and Health Management, PHM, is the study utilizing data to estimate the current and future conditions of a system. Within the field of PHM, Predictive Maintenance, PdM, has been gaining increased attention. Data-driven models can be built to estimate the remaining-useful-lifetime of complex systems that would be difficult to identify by man. With the increased attention that the Predictive Maintenance field is receiving, review papers become increasingly important to understand what research has been conducted and what challenges need to be addressed. This paper does so by initially conceptualising the PdM field. A structured overview of literature in regard to application within PdM is presented, before delving into the domain of thermal power plants and pump systems. Finally, related challenges and trends will be outlined. This paper finds that a large number of experimental data-driven models have been successfully deployed, but the PdM field would benefit from more industrial case studies. Furthermore, investigations into the scale-ability of models would benefit industries that are looking into large-scale implementations. Here, examining a method for automatic maintenance of the developed model will be of interest. This paper can be used to understand the PdM field as a broad concept but does also provide a niche understanding of the domain in focus.
机译:火力发电厂是当前能源基础设施中的重要资产,可为其各自的用户提供辅助服务,电力和热量。关键组件(例如大型泵系统)的故障可能会导致财产损失和机会损失。泵在各个行业中都扮演着至关重要的角色,因此,如此巧妙的维护可以确保降低成本和提高可用性。预测和健康管理(PHM)是一项利用数据来估计系统当前和将来状况的研究。在PHM领域中,预测性维护(PdM)已引起越来越多的关注。可以构建数据驱动的模型来估算复杂的系统的剩余使用寿命,而这些使用寿命很难被人识别。随着“预测性维护”领域的关注度越来越高,对于了解进行了哪些研究以及需要应对哪些挑战而言,审阅论文变得越来越重要。本文通过初步概念化PdM领域来实现。在深入研究火力发电厂和泵系统之前,先介绍了有关PdM中应用的文献的结构化概述。最后,将概述相关的挑战和趋势。本文发现,已经成功部署了大量实验数据驱动的模型,但是PdM领域将从更多的工业案例研究中受益。此外,对模型的可伸缩性的研究将使正在寻求大规模实施的行业受益。在这里,研究一种自动维护开发模型的方法将很有意义。本文可用于将PdM领域理解为一个广义的概念,但也可以对重点领域提供适当的了解。

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