2017
DOI: 10.1016/j.egypro.2017.08.084
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Harnessing wind and wave resources for a Hybrid Renewable Energy System in remote islands: a combined stochastic and deterministic approach

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Cited by 25 publications
(14 citation statements)
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“…Therefore, based on the scientific boost, the climacogram (and not the other two metrics) was found to be adequate for the identification and model building of a stochastic process. Since then, interest in the scale domain and the climacogram estimator has increased, and the climacogram has been implemented in education material [49], and has been used to identify the LTP behaviour in various scientific studies, such as 2D precipitation fields [50], multidimensional spatiotemporal domain [51], paleoclimatic temperature [52] and precipitation [53,54], Bayesian statistical models of rainfall and temperature [55], higher-order moments of skewness and kurtosis vs. scale in grid turbulence [26], annual precipitation [56], water demand [57], daily river flows [58], precipitation and temperature for a bivariate drought analysis [59], wind and solar energy [60], water-energy nexus [61], solar radiation [62], wave height and period [63], daily streamflow [64], and monthly temperature and precipitation ( [65,66]), annual streamflow ( [30,66]), ecosystem variability [67], 2D rock formations [68], urban streamflows [69], global temperature and wind of resolution spanning 10 orders of magnitude from ms to several decades [70], disaggregation schemes from daily to hourly rainfall and runoff [71], hourly wind and daily precipitation [26], fine scale precipitation [3,22,[72][73][74][75][76][77][78], fine scale wind …”
Section: Dependence Structure Metricsmentioning
confidence: 99%
“…Therefore, based on the scientific boost, the climacogram (and not the other two metrics) was found to be adequate for the identification and model building of a stochastic process. Since then, interest in the scale domain and the climacogram estimator has increased, and the climacogram has been implemented in education material [49], and has been used to identify the LTP behaviour in various scientific studies, such as 2D precipitation fields [50], multidimensional spatiotemporal domain [51], paleoclimatic temperature [52] and precipitation [53,54], Bayesian statistical models of rainfall and temperature [55], higher-order moments of skewness and kurtosis vs. scale in grid turbulence [26], annual precipitation [56], water demand [57], daily river flows [58], precipitation and temperature for a bivariate drought analysis [59], wind and solar energy [60], water-energy nexus [61], solar radiation [62], wave height and period [63], daily streamflow [64], and monthly temperature and precipitation ( [65,66]), annual streamflow ( [30,66]), ecosystem variability [67], 2D rock formations [68], urban streamflows [69], global temperature and wind of resolution spanning 10 orders of magnitude from ms to several decades [70], disaggregation schemes from daily to hourly rainfall and runoff [71], hourly wind and daily precipitation [26], fine scale precipitation [3,22,[72][73][74][75][76][77][78], fine scale wind …”
Section: Dependence Structure Metricsmentioning
confidence: 99%
“…It is noted that a more robust approach to reduce the 12 × 24 set of parameters would be to employ an analytical expression for the double solar periodicity (as done for the wind process in Deligiannis et al, 2016). This homogenization scheme has been applied to several processes such as wind (Deligiannis et al, 2016), solar radiation (Koudouris et al, 2017), wave height, wave period and wind for renewable energy production (Moschos et al, 2017), river discharge (Pizarro et al, 2018) and precipitation . However, it is noted that this scheme assumes stationary in the dependence structure rather cyclostationary (for such analyses see Koutsoyiannis et al, 2008, and references therein).…”
Section: Methodology and Application Of The Modelmentioning
confidence: 99%
“…Denizlerde rüzgâr enerjisiyle birlikte, rüzgârların etkisi ile oluşan dalgalar da yüksek bir enerji potansiyeline sahiptir [5]. Rüzgâr ve dalga arasındaki sinerjiden faydalanmak üzere iki ayrı sistemin birleştirilmesi ile yenilenebilir enerji potansiyelinin büyük bir kısmını oluşturan rüzgâr ve dalga enerjisinden daha iyi yararlanma fikri son yıllarda önem kazanmış ve bu konuda önemli adımlar atılmaya başlanmıştır [7,8]. Entegre rüzgâr ve dalga enerji sistemleri, deniz üstü rüzgâr türbinleri ve dalga enerjisi dönüştürücüleri arasındaki birleştirilme durumuna göre; ortak alana yerleştirilmiş sistemler, hibrit sistemler ve ada sistemleri olmak üzere üç sınıfta incelenebilmektedir [9].…”
Section: Introductionunclassified