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SPECTRAL CORRECTIONS FOR PV PERFORMANCE MODELLING Fotis Mavromatakis – T.E.I. of Crete Frank Vignola – University of Oregon 4th PV Performance Modelling and Monitoring Workshop – Cologne, Germany October 2015

24 mavromatakis vignola_spectral_corrections_for_pv_performance_modelling

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SPECTRAL CORRECTIONS FOR PV PERFORMANCE MODELLING

Fotis Mavromatakis – T.E.I. of Crete

Frank Vignola – University of Oregon

4th PV Performance Modelling and Monitoring Workshop – Cologne, Germany

October 2015

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INTRODUCTION

• Overview

• Spectral responsivity of PV modules

• Changing spectral distribution over the day

• Effects of spectral changes on module performance

• DNI

• DfHI

• GHI

• Utility of understanding the influence of changing spectral irradiance

• Next steps

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OVERVIEW

• Energy of the photon (wavelength) affects the performance of solar cells

• Modeling and testing efforts by King et. al. in the late 1990’s showed that PV module performance is dependent upon • Incident irradiance

• Module Temperature

• Angle of Incidence

• Air Mass Effect/Spectral Correction

• This presentation is on the effects of the systematic changes in the spectral distribution over the day and the affect on module performance estimates.

• Goal is to better understand and refine PV module performance estimates

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SPECTRAL RESPONSIVITY

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GHI SPECTRAL DISTRIBUTION

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SPECTRAL EFFECTS UPON ISC

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CALCULATING AVERAGE PV MODULE RESPONSE

The average PV module response is =

𝑃𝑉𝐷𝑁𝐼 = 𝑃𝑉(λ) × 𝐷𝑁𝐼(λ)λ=280λ=4000

𝐷𝑁𝐼(λ)λ=280λ=4000

Where PV(λ) = module’s spectral response and

DNI(λ) is the spectral radiation

Note this can be DNI, DfHI, or GHI

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CHANGE IN AVERAGE CLEAR SKY DNI RESPONSE

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NORMALIZED TO 45

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EXAMPLE OF A PHOTODIODE’S DNI RESPONSE USING MEASURE DNI SPECTRAL DATA

Five months of measured DNI spectral

data from Payerne, Switzerland under

all weather conditions

Results from a previous study

The photodiode spectral response is

similar to a mono-crystalline spectral

response

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CHANGE IN AVERAGE CLEAR SKY DfHI RESPONSE

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CHANGE IN AVERAGE CLEAR SKY GHI RESPONSE

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SPECTRAL DEPENDENCE OF THE “AIR MASS” EFFECT

• The “Air Mass” effect is caused by the changing spectral distribution of the incident solar radiation

• The different DNI and DfHI spectral compositions lead to different air mass effects

• Each solar cell technology reacts differently to the changing spectral distributions in the incident solar radiation

• The largest effects are in the early morning and late afternoons when the sunlight traverses the largest air masses

• Changes in atmospheric conditions can affect the magnitude of the air mass effect

• With SZA less than 45, the solar technologies examined have similar DNI air mass effects

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VALUE OF USING THE SPECTRAL MODEL TO DETERMINE THE

AIR MASS EFFECT

• Using spectral models and data on the PV module spectral response enables an estimate of the modules change in responsivity over the day

• This methodology enables estimates of PV module performance in location (sites) with different atmospheric compositions

• Performance of different solar cell technologies can be compared at a given site by just changing the module’s spectral responsivity in the modeling process

• Improved estimates of PV module performance can be obtained if the atmospheric conditions at a site can be specified

• The effect of various atmospheric conditions on the performance of PV modules can be studied

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FUTURE EFFORTS

• Determine the air mass effect for DfHI and GHI components under all weather conditions

• Evaluate the variability of the spectral model performance estimates

• Integrate spectral model in with other PV model components