在有效的维护计划中使用预测分析优化风力涡轮机叶片的生命周期成本

Amith Nag Nichenametla, Srikanth Nandipati, Abhay Laxmanrao Waghmare
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引用次数: 10

摘要

风力涡轮机叶片是一种重要的设备,由于其在故障/维修时对涡轮机的可用性有很大的影响,因此在使用寿命期间必须对其进行保护和维护,以确保固有的安全性和可靠性。与航空航天等成熟行业不同,该行业没有具体的维护计划指导方针,而且大多数维修本质上是被动的。这导致了非常高的维护成本,因为涡轮机的停机时间更长,需要制定有效的维护策略,要求以可靠性为中心的维护,同时通过使用可用的现场信息,在预测分析和可靠性模型的支持下,促进备件,服务和维护需求的业务决策,其总体目标是降低运营成本并获得更高的可靠性。本文试图利用风能领域广泛实践的预测分析技术来应对这些挑战,并在市场上保持竞争力。建立的模型能够从产品生命周期的不同阶段获取输入,提供关于故障和影响因素的数学关系,从而可以根据磨损率在任何给定时间点解决迫切需要检查和维护的叶片。这进一步成为维护计划的关键输入,从而降低运营成本,并实现高水平的可靠性。此外,所建立的模型还为叶片生命周期的不同阶段提供反馈,以设置所需的目标,以便在现场保持一定水平的可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizing life cycle cost of wind turbine blades using predictive analytics in effective maintenance planning
A wind turbine blade is capital equipment vital enough to be protected and maintained for inherent safety and reliability during lifetime due to its high impact on turbine availability in event of failure / repair. Unlike matured industries like aerospace, there are no specific guidelines for maintenance plans and mostly the repairs are reactive in nature. This leads to very high cost of maintenance owing to longer downtime of the turbine raising a need to derive an effective maintenance strategy demanding reliability centered maintenance, also facilitating business decisions on spares, service and maintenance requirements through use of available field information, supported by a predictive analytics and reliability models with an overall objective of reducing the operation cost and gaining higher levels of reliability. This paper is an attempt to make use of the widely practiced Predictive Analytics techniques in wind domain to address such challenges and remain competitive in the market. The model built was able to take inputs from different stages of the product life cycle providing a mathematical relationship with respect to failures and contributing factors, allowing addressing the blades that are in critical need of inspection and maintenance at any given point of time based on the rate of wear out. This further becomes a critical input for maintenance planning thereby reducing the operational cost and also attaining high levels of Reliability. Additionally, the model built also provides feedback to the different stages of blade life cycle in terms of setting targets that are required in order to maintain a certain level of Reliability in the field.
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