2017
DOI: 10.2495/air170131
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Visibility Estimates From Atmospheric and Radiometric Variables Using Artificial Neural Networks

Abstract: Visibility is traditionally needed for air quality monitoring or air traffic control, and has become a key input to determine the transmission losses of solar radiation propagating between heliostats and the receiver of solar tower power (STP) plants. Recent studies suggest that haze can reduce visibility and increase these losses up to 25% compared to clear conditions. Monitoring visibility would thus be needed for proper design and operation of STPs, but this is usually not done at all potential sites. Here,… Show more

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Cited by 3 publications
(1 citation statement)
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“…As early as the 1990s, a simple feed-forward neural network [4] was proposed to improve short-range visibility forecasts. A similar study was also conducted to map the nonlinear relation between visibility and multiple metrological features [18]. However, these studies only use metrological data because extensive image datasets for visibility estimation were unavailable at that time.…”
Section: Data-driven Methodsmentioning
confidence: 99%
“…As early as the 1990s, a simple feed-forward neural network [4] was proposed to improve short-range visibility forecasts. A similar study was also conducted to map the nonlinear relation between visibility and multiple metrological features [18]. However, these studies only use metrological data because extensive image datasets for visibility estimation were unavailable at that time.…”
Section: Data-driven Methodsmentioning
confidence: 99%