Application of adaptive models for the determination of the thermal behaviour of a photovoltaic panel
- Authors: lo brano, v; ciulla, g; beccali, m
- Publication year: 2013
- Type: Proceedings
- OA Link: http://hdl.handle.net/10447/76552
Abstract
The use of reliable forecasting models for the PV temperature is necessary for a more correct evaluation of energy and economic performances. Climatic conditions certainly have a remarkable influence on thermo-electric behaviour of the PV panel but the physical system is too complex for an analytical representation. A neural-network-based approach for solar panel temperature modelling is here presented. The models were trained using a set of data collected from a test facility. Simulation results of the trained neural networks are presented and compared with those obtained with an empirical correlation.