2015
DOI: 10.1016/j.solener.2015.02.032
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Stochastic generation of synthetic minutely irradiance time series derived from mean hourly weather observation data

Abstract: Synthetic minutely irradiance time series are utilised in non-spatial solar energy system research simulations. It is necessary that they accurately capture irradiance fluctuations and variability inherent in the solar resource. This article describes a methodology to generate a synthetic minutely irradiance time series from widely available hourly weather observation data. The weather observation data are used to produce a set of Markov chains taking into account seasonal, diurnal, and pressure influences on … Show more

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Cited by 107 publications
(37 citation statements)
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References 34 publications
(38 reference statements)
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“…cloudiness, sea level pressure, wind speed recorded at 10 m elevation, and cloud base height [188]. This Markov model variant has high accuracy with determination coefficient (R 2 ) of 0.9715 as validated using United Kingdom case studies.…”
Section: Meteorological Data Forecastmentioning
confidence: 94%
“…cloudiness, sea level pressure, wind speed recorded at 10 m elevation, and cloud base height [188]. This Markov model variant has high accuracy with determination coefficient (R 2 ) of 0.9715 as validated using United Kingdom case studies.…”
Section: Meteorological Data Forecastmentioning
confidence: 94%
“…Similarly to the demand arXiv:1808.00615v2 [stat.AP] 18 Dec 2018 model, a transition matrix is constructed from prior historical data for the clearness index, which is a measure of the extent to which incident irradiance is blocked from reaching a PV module by cloud cover. In a method similar to that used by Hofmann et al [12] and Bright et al [13], initial states are chosen at random, and the clearness index profile is sampled at each timestep through a repeated application of a state transition probability matrix [11]. This is then used to generate stochastic PV generation profiles [11].…”
Section: A Related Work On Synthetic Demand and Generation Profilesmentioning
confidence: 99%
“…This clearness index is a random variable encapsulating the effect of atmospheric variations. The authors in [13] obtained the distributions for k c for a range of oktas as described in Table 1. They use the data provided by the UK Met Office Integrated Archive System (MIDAS) for hourly values of I, and the corresponding cloud okta for the year 2012.…”
Section: Solar Energy Harvestingmentioning
confidence: 99%