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Real-time predictive maintenance for wind turbines using Big Data frameworks

机译:使用大数据框架的风力涡轮机的实时预测性维护

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This work presents the evolution of a solution for predictive maintenance to a Big Data environment. The proposed adaptation aims for predicting failures on wind turbines using a data-driven solution deployed in the cloud and which is composed by three main modules. (i) A predictive model generator which generates predictive models for each monitored wind turbine by means of Random Forest algorithm. (ii) A monitoring agent that makes predictions every 10 minutes about failures in wind turbines during the next hour. Finally, (iii) a dashboard where given predictions can be visualized. To implement the solution Apache Spark, Apache Kafka, Apache Mesos and HDFS have been used. Therefore, we have improved the previous work in terms of data process speed, scalability and automation. In addition, we have provided fault-tolerant functionality with a centralized access point from where the status of all the wind turbines of a company localized all over the world can be monitored, reducing O&M costs.
机译:这项工作介绍了对大数据环境的预测维护解决方案的演变。所提出的适配旨在使用部署在云中的数据驱动的解决方案来预测风力涡轮机上的故障,并且由三个主模块组成。 (i)通过随机森林算法,对每个被监控的风力涡轮机产生预测模型的预测模型发生器。 (ii)一个监测代理,在下个小时内每10分钟预测一次预测。最后,(iii)可以可视化给定预测的仪表板。要实现解决方案Apache Spark,已使用Apache Kafka,Apache Mesos和HDFS。因此,我们在数据流程速度,可扩展性和自动化方面改进了以前的工作。此外,我们提供了容错功能,具有集中式接入点,可以监控所有在世界各地的公司的所有风力涡轮机的状态,降低O&M成本。

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