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Wondering what to blame? Turn PV performance assessments into maintenance action items through the deployment of learning algorithms embedded in a Raspberry Pi device

机译:想知道该怪什么?通过部署Raspberry Pi设备中嵌入的学习算法,将PV性能评估转变为维护行动项目

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Monitoring of photovoltaic (PV) systems can maintain efficient operations. However, extensive monitoring of large quantities of data can be a cumbersome process. The present work introduces a simple, inexpensive, yet effective data monitoring strategy for detecting faults and determining lost revenues automatically. This was achieved through the deployment of Raspberry Pi (RPI) device at a PV system's combiner box. The RPI was programmed to collect PV data through Modbus communications, and store the data locally in a MySQL database. Then, using a Gaussian Process Regression algorithm the RPI device was able to accurately estimate string level current, voltage, and power values. The device could also detect system faults using a Support Vector Novelty Detection algorithm. Finally, the RPI was programmed to output the potential lost revenue caused by the abnormal condition. The system analytics information was then displayed on a user interface. The interface could be accessed by operations personal to direct maintenance activity so that critical issues can be solved quickly.
机译:监控光伏(PV)系统可以维持有效的运营。但是,对大量数据进行大量监视可能是一个繁琐的过程。本工作介绍了一种简单,廉价但有效的数据监视策略,用于检测故障并自动确定收入损失。这是通过在光伏系统的汇流箱中部署Raspberry Pi(RPI)设备来实现的。 RPI被编程为通过Modbus通信收集PV数据,并将数据本地存储在MySQL数据库中。然后,使用高斯过程回归算法,RPI设备能够准确地估计串级电流,电压和功率值。该设备还可以使用支持向量新奇检测算法检测系统故障。最后,对RPI进行编程以输出由异常情况引起的潜在收入损失。然后,系统分析信息显示在用户界面上。操作人员可以访问该界面以指导维护活动,以便可以快速解决关键问题。

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