Print Email Facebook Twitter Automatically and real-time identifying malfunctioning pv systems using massive on-line PV yield data Title Automatically and real-time identifying malfunctioning pv systems using massive on-line PV yield data Author Nijman, Roeland (TU Delft Electrical Engineering, Mathematics and Computer Science) Contributor Smets, A.H.M. (mentor) Degree granting institution Delft University of Technology Programme Electrical Engineering | Sustainable Energy Technology Project Photovoltaics Date 2018-01-26 Abstract Due to the transition in the energy market from fossil fuel to renewable energy sources it is expected that the total installed amount of photovoltaic (PV) energy will continue to increase. To make sure that all these PV systems work optimally it is essential to have a good way of monitoring these devices. In this project an open generic model that can detect and identify malfunctions of PV systems based on yield data was developed. The model detects malfunctioning systems by comparing the yield ratio of a specific system with the yield ratio of similar neighboring systems. To determine the similarity of these neighboring systems properties such as their orientations were identified. The azimuth of the PV systems could be identified with an accuracy of 8 cardinal points, the standard error for the azimuth approximation was 2%. Finally the model identifies the system malfunction using several different algorithms.The static error that can be detected by the model is inverter clipping or a limiting inverter. Furthermore the model can identify the following dynamic (system) errors:· Broken string malfunctions (in module string and/or cell string).· Data connection malfunctions.· Data incomplete malfunctions.· Less than diffuse yield malfunctions.The significance of the model is that more than 22% of all systems that were analyzed had a limited inverter. Of the 1300 systems that were analyzed during July and August 2017 11% were identified to be malfunctioning with an average of 13.6% below the mean performance that is to be expected based on the performance of similar neighboring systems. Subject MonitoringData analysisReal timePV systemsOnline To reference this document use: http://resolver.tudelft.nl/uuid:61cdcc31-4ce1-4e07-89e6-e45207447fe1 Part of collection Student theses Document type master thesis Rights © 2018 Roeland Nijman Files PDF Automatically_and_real_ti ... d_data.pdf 7.21 MB Close viewer /islandora/object/uuid:61cdcc31-4ce1-4e07-89e6-e45207447fe1/datastream/OBJ/view