Abstract
We present a novel approach for modeling the loss factors of photovoltaic power generation systems (PV systems). This method is a white-box machine learning model built on convex optimization that is fast, interpretable, and auditable. It takes as an input the measured daily energy produced by the system, over a multi-year period, and returns a multiplicative decomposition model of the daily energy signal and full attribution of the total energy loss to each feature. The methods section of this paper has two major components: (1) the description of the signal decomposition (SD) model, expressed in the SD framework, and (2) the attribution of total energy losses via Shapley values. We validate the method on synthetic and open-source data sets and compare to similar methods from the literature.
Original language | American English |
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Number of pages | 8 |
DOIs | |
State | Published - 2024 |
Event | PVSC - Seattle, WA Duration: 9 Jun 2024 → 14 Jun 2024 |
Conference
Conference | PVSC |
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City | Seattle, WA |
Period | 9/06/24 → 14/06/24 |
NREL Publication Number
- NREL/CP-5K00-90766
Keywords
- artificial intelligence
- convex optimization
- degradation
- interpretable models
- machine learning
- PV systems
- Shapley values
- soiling