More than 81%of the annual capacity of utility-scale photovoltaic(PV)power plants in the U.S.use single-axis trackers(SATs)due to SATs delivering 4%in capacity factor on average over fixed-array systems.However,SATs a...More than 81%of the annual capacity of utility-scale photovoltaic(PV)power plants in the U.S.use single-axis trackers(SATs)due to SATs delivering 4%in capacity factor on average over fixed-array systems.However,SATs are subject to faults,such as software misconfigurations and mechanical failures,resulting in suboptimal tracking.If left undetected,the overall power yield of the PV power plant is reduced significantly.Minimizing downtime and ensuring efficient operation of SATs requires robust detection and diagnosis mechanisms for SAT faults.We present a machine learning framework for implementing real-time SAT fault detection and classification.Our implementation of the proposed framework reliably identifies measurements taken from a test PV system undergoing emulated SAT faults relative to state-of-the-art algorithms and produces nearly zero false positives on our testing days.Code and data are available at https://pvpmc.sandia.gov/tools.展开更多
文摘More than 81%of the annual capacity of utility-scale photovoltaic(PV)power plants in the U.S.use single-axis trackers(SATs)due to SATs delivering 4%in capacity factor on average over fixed-array systems.However,SATs are subject to faults,such as software misconfigurations and mechanical failures,resulting in suboptimal tracking.If left undetected,the overall power yield of the PV power plant is reduced significantly.Minimizing downtime and ensuring efficient operation of SATs requires robust detection and diagnosis mechanisms for SAT faults.We present a machine learning framework for implementing real-time SAT fault detection and classification.Our implementation of the proposed framework reliably identifies measurements taken from a test PV system undergoing emulated SAT faults relative to state-of-the-art algorithms and produces nearly zero false positives on our testing days.Code and data are available at https://pvpmc.sandia.gov/tools.