2023
DOI: 10.1109/tste.2022.3204453
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Accounting for Environmental Conditions in Data-Driven Wind Turbine Power Models

Abstract: Continuous assessment of wind turbine performance is a key to maximising power generation at a very low cost. A wind turbine power curve is a non-linear function between power output and wind speed and is widely used to approach numerous problems linked to turbine operation. According to the current IEC standard, power curves are determined by a data reduction method, called binning, where hub height, wind speed and air density are considered as appropriate input parameters. However, as turbine rotors have gro… Show more

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Cited by 20 publications
(17 citation statements)
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References 38 publications
(51 reference statements)
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“…The methodology proposed by Gao et al, can be applied to quantify the cost of variability of wind power and address the intermittency for different geographical regions worldwide [51]. Systematic technological developments further improve the efficiency of the wind power plants [52][53][54]. Utilizing a combination of artificial intelligence and metaheuristic algorithms results in higher performance compared to using only classic methods.…”
Section: Wind Energymentioning
confidence: 99%
“…The methodology proposed by Gao et al, can be applied to quantify the cost of variability of wind power and address the intermittency for different geographical regions worldwide [51]. Systematic technological developments further improve the efficiency of the wind power plants [52][53][54]. Utilizing a combination of artificial intelligence and metaheuristic algorithms results in higher performance compared to using only classic methods.…”
Section: Wind Energymentioning
confidence: 99%
“…AMK became the foundation enabling the Kernel PLUS comparison in Lee et al (2015b). Various more machine learning methods were attempted to build the power curve using a turbine's operational data, including trees (Barber and Nordborg, 2020;Lee et al, 2015a, CART or BART), support vector machine Astolfi et al, 2021, SVM), knearest neighborhood (Yesilbudak et al, 2013, kNN), gradient boost (Barber et al, 2022b), smoothing spline (Ding, 2019, SSANOVA), deep neural network (Karami et al, 2021, DNN), Gaussian process Pandit et al, 2022;Prakash et al, 2022b) and ensembles of multivariate polynomial regressions (Cascianelli et al, 2021). Chapter 5 of Ding (2019) provides an in-depth discussion of research challenges and data science solution techniques in modeling wind turbine power curves and Barber et al (2022b) provides a comparison among four machine learning methods (kNN, random forest, gradient boost, and ANN).…”
Section: The Need For Better Power Curvesmentioning
confidence: 99%
“…A common practice is the assumption of a normal distribution for the uncertainty. However, Gonzalez et al (2019) have shown that model errors are heteroskedastic and concluded that probabilistic models, such as Gaussian processes (Prakash et al, 2022a;Pandit et al, 2022) and AMK (Lee et al, 2015a), are more suitable in identifying the Ding (2019); the results of tempGP and SVM are obtained using the DSWE R package (Kumar et al, 2020); and DNN is obtained using the DSWE Python package (Kumar et al, 2022). normal bounds of turbine performance, allowing for uncertainty quantification for power curve comparisons.…”
Section: The Need For Better Power Curvesmentioning
confidence: 99%
“…However, most of these turbines are located in remote mountainous areas or offshore, which poses significant challenges in transporting and hoisting the large components. The traditional method of waiting for system failure before replacing failed parts results in long downtime and puts enormous pressure on maintenance staff and standby parts inventory, increasing operating costs and ultimately affecting the Levelized Cost of Energy (LCoE) 2 . The cost of operation and maintenance (O&M) is a significant portion of the total annual wind turbine cost, with O&M accounting for 20%–25% of the LCoE 3,4 .…”
Section: Introductionmentioning
confidence: 99%