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- 01H3M3VNKH6KZ6Q6RG7XFAHGMP classification P1.
- 01H3M3VNKH6KZ6Q6RG7XFAHGMP date "2023".
- 01H3M3VNKH6KZ6Q6RG7XFAHGMP language "eng".
- 01H3M3VNKH6KZ6Q6RG7XFAHGMP type conference.
- 01H3M3VNKH6KZ6Q6RG7XFAHGMP hasPart 01H3M49VD72D2PEPTR908JJ58R.pdf.
- 01H3M3VNKH6KZ6Q6RG7XFAHGMP subject "Technology and Engineering".
- 01H3M3VNKH6KZ6Q6RG7XFAHGMP doi "10.1145/3575813.3595200".
- 01H3M3VNKH6KZ6Q6RG7XFAHGMP isbn "9798400700323".
- 01H3M3VNKH6KZ6Q6RG7XFAHGMP presentedAt urn:uuid:d871524b-3506-48a5-a7b5-eec3117c9d8d.
- 01H3M3VNKH6KZ6Q6RG7XFAHGMP abstract "Faults in photovoltaic (PV) systems significantly reduce their efficiency and can pose safety risks. Nevertheless, most residential PV systems are not actively monitored, because existing methods often require expensive sensors, which are only cost-effective for large PV systems. Therefore, we propose a graph neural network (GNN) to monitor a group of nearby PV systems without relying on dedicated sensors. Instead, the GNN compares 24 h of current and voltage measurements obtained from the inverters. Four GNN variants are experimentally compared using simulated data of six different PV systems in Colorado. Results show that all GNN variants outperform a state-of-the-art PV fault diagnosis method based on gradient boosted trees. Moreover, some GNN variants can even generalize to PV systems which were not in the training data, enabling monitoring of new PV systems without retraining.".
- 01H3M3VNKH6KZ6Q6RG7XFAHGMP author 26B96CA0-F0EE-11E1-A9DE-61C894A0A6B4.
- 01H3M3VNKH6KZ6Q6RG7XFAHGMP author A5CCD2A6-5807-11E5-80C5-1AF7B4D1D7B1.
- 01H3M3VNKH6KZ6Q6RG7XFAHGMP author F5DC76B8-F0ED-11E1-A9DE-61C894A0A6B4.
- 01H3M3VNKH6KZ6Q6RG7XFAHGMP dateCreated "2023-06-23T12:32:26Z".
- 01H3M3VNKH6KZ6Q6RG7XFAHGMP dateModified "2024-10-29T17:39:40Z".
- 01H3M3VNKH6KZ6Q6RG7XFAHGMP name "Graph neural networks for fault diagnosis of geographically nearby photovoltaic systems".
- 01H3M3VNKH6KZ6Q6RG7XFAHGMP pagination urn:uuid:06c19444-f465-4790-bef9-1d23ea6c6ea5.
- 01H3M3VNKH6KZ6Q6RG7XFAHGMP publisher urn:uuid:057e4cce-e845-4a61-9e93-61c7caee0531.
- 01H3M3VNKH6KZ6Q6RG7XFAHGMP sameAs LU-01H3M3VNKH6KZ6Q6RG7XFAHGMP.
- 01H3M3VNKH6KZ6Q6RG7XFAHGMP sourceOrganization urn:uuid:ac1b4737-4734-4235-8b62-f014190a2e5b.
- 01H3M3VNKH6KZ6Q6RG7XFAHGMP sourceOrganization urn:uuid:b07f55e5-5f2e-4541-a897-6df9f82d2a5d.
- 01H3M3VNKH6KZ6Q6RG7XFAHGMP type P1.