
Forecast uncertainty‐based performance degradation diagnosis of solar PV systems
Author(s) -
Lee HyunYong,
Ko SeokKap,
Lee ByungTak
Publication year - 2020
Publication title -
iet renewable power generation
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.005
H-Index - 76
ISSN - 1752-1424
DOI - 10.1049/iet-rpg.2019.1121
Subject(s) - metric (unit) , degradation (telecommunications) , computer science , performance metric , estimation , uncertainty analysis , measurement uncertainty , table (database) , statistics , econometrics , data mining , mathematics , simulation , engineering , telecommunications , operations management , management , systems engineering , economics
In this study, the authors are interested in estimating how much a PV system underperforms than expected by exploiting forecast uncertainty. For this, they first study a forecast accuracy‐related forecast uncertainty metric using the ensemble method based on the dropout technique, which is widely used in deep learning forecasting models. Given the forecast accuracy‐related uncertainty metric, the rationale of the authors' approach is that forecast accuracy is likely to decrease compared to the normal case of similar uncertainty metric values if any performance degradation happens. It is because similar uncertainty metric values are likely to show similar forecast accuracy. Therefore, they generate a standard table by simulating possible performance degradation cases and conduct the performance degradation diagnosis by looking up the standard table based on the uncertainty metric. From the experiments, in the case of persistent degradation, they show that their approach estimates the performance degradation with the estimation error of around 1% while an uncertainty‐unaware approach shows the estimation error of up to 5%. In the case of temporal degradation, their approach shows the estimation error of around 3%, while the uncertainty‐unaware approach does not show meaningful result.