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Machine learnt prediction method for rain erosion damage on wind turbine blades

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Machine learnt prediction method for rain erosion damage on wind turbine blades. / Castorrini, Alessio; Venturini, Paolo; Corsini, Alessandro et al.
In: Wind Energy, Vol. 24, No. 8, 31.08.2021, p. 917-934.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Castorrini, A, Venturini, P, Corsini, A & Rispoli, F 2021, 'Machine learnt prediction method for rain erosion damage on wind turbine blades', Wind Energy, vol. 24, no. 8, pp. 917-934. https://doi.org/10.1002/we.2609

APA

Castorrini, A., Venturini, P., Corsini, A., & Rispoli, F. (2021). Machine learnt prediction method for rain erosion damage on wind turbine blades. Wind Energy, 24(8), 917-934. https://doi.org/10.1002/we.2609

Vancouver

Castorrini A, Venturini P, Corsini A, Rispoli F. Machine learnt prediction method for rain erosion damage on wind turbine blades. Wind Energy. 2021 Aug 31;24(8):917-934. Epub 2021 Jan 5. doi: 10.1002/we.2609

Author

Castorrini, Alessio ; Venturini, Paolo ; Corsini, Alessandro et al. / Machine learnt prediction method for rain erosion damage on wind turbine blades. In: Wind Energy. 2021 ; Vol. 24, No. 8. pp. 917-934.

Bibtex

@article{a7a3825a26024ccba864c1622765fda5,
title = "Machine learnt prediction method for rain erosion damage on wind turbine blades",
abstract = "This paper proposes a paradigm shift in the numerical simulation approach to predict rain erosion damage on wind turbine blades, given the blade geometry, its coating material, and the atmospheric conditions (wind and rain) expected at the installation site. Contrary to what has been done so far, numerical simulations (flow field and particle tracking) are used not to study a specific (wind and rain) operating condition but to build a large database of possible operating conditions of the blade section. A machine learning algorithm, trained on this database, defines a prediction module that gives the feature of the impact pattern over the 2-D section, given the wind and rain flow. The advantage of this approach is that the prediction becomes much faster than using the standard simulations; thus, the study of a large set of variable operating conditions becomes possible. The module, coupled with an erosion model, is used to compute the erosion damage of the blade working on specific installation site. In this way, the variations of the flow conditions due to dynamic effects such as variable wind, wind turbulence, and turbine control can be also considered in the erosion computation. Here, we describe the method, the database creation, and the development of the prediction tool. Then, the method is applied to predict the erosion damage on a blade section of a reference wind turbine, after one year of operation in a rainy onshore site. Results are in good agreement with on field observations, showing the potential of the approach.",
keywords = "data-driven methods, machine learning, rain drop erosion, wind turbine blades",
author = "Alessio Castorrini and Paolo Venturini and Alessandro Corsini and Franco Rispoli",
year = "2021",
month = aug,
day = "31",
doi = "10.1002/we.2609",
language = "English",
volume = "24",
pages = "917--934",
journal = "Wind Energy",
issn = "1095-4244",
publisher = "John Wiley and Sons Ltd",
number = "8",

}

RIS

TY - JOUR

T1 - Machine learnt prediction method for rain erosion damage on wind turbine blades

AU - Castorrini, Alessio

AU - Venturini, Paolo

AU - Corsini, Alessandro

AU - Rispoli, Franco

PY - 2021/8/31

Y1 - 2021/8/31

N2 - This paper proposes a paradigm shift in the numerical simulation approach to predict rain erosion damage on wind turbine blades, given the blade geometry, its coating material, and the atmospheric conditions (wind and rain) expected at the installation site. Contrary to what has been done so far, numerical simulations (flow field and particle tracking) are used not to study a specific (wind and rain) operating condition but to build a large database of possible operating conditions of the blade section. A machine learning algorithm, trained on this database, defines a prediction module that gives the feature of the impact pattern over the 2-D section, given the wind and rain flow. The advantage of this approach is that the prediction becomes much faster than using the standard simulations; thus, the study of a large set of variable operating conditions becomes possible. The module, coupled with an erosion model, is used to compute the erosion damage of the blade working on specific installation site. In this way, the variations of the flow conditions due to dynamic effects such as variable wind, wind turbulence, and turbine control can be also considered in the erosion computation. Here, we describe the method, the database creation, and the development of the prediction tool. Then, the method is applied to predict the erosion damage on a blade section of a reference wind turbine, after one year of operation in a rainy onshore site. Results are in good agreement with on field observations, showing the potential of the approach.

AB - This paper proposes a paradigm shift in the numerical simulation approach to predict rain erosion damage on wind turbine blades, given the blade geometry, its coating material, and the atmospheric conditions (wind and rain) expected at the installation site. Contrary to what has been done so far, numerical simulations (flow field and particle tracking) are used not to study a specific (wind and rain) operating condition but to build a large database of possible operating conditions of the blade section. A machine learning algorithm, trained on this database, defines a prediction module that gives the feature of the impact pattern over the 2-D section, given the wind and rain flow. The advantage of this approach is that the prediction becomes much faster than using the standard simulations; thus, the study of a large set of variable operating conditions becomes possible. The module, coupled with an erosion model, is used to compute the erosion damage of the blade working on specific installation site. In this way, the variations of the flow conditions due to dynamic effects such as variable wind, wind turbulence, and turbine control can be also considered in the erosion computation. Here, we describe the method, the database creation, and the development of the prediction tool. Then, the method is applied to predict the erosion damage on a blade section of a reference wind turbine, after one year of operation in a rainy onshore site. Results are in good agreement with on field observations, showing the potential of the approach.

KW - data-driven methods

KW - machine learning

KW - rain drop erosion

KW - wind turbine blades

U2 - 10.1002/we.2609

DO - 10.1002/we.2609

M3 - Journal article

AN - SCOPUS:85099245679

VL - 24

SP - 917

EP - 934

JO - Wind Energy

JF - Wind Energy

SN - 1095-4244

IS - 8

ER -