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Investigation of blade flexibility effects on the loads and wake of a 15 MW wind turbine using a flexible actuator line method. <i>Wind Energy Science 9(8)</i>: 1765-1789. <a href=\"https://dx.doi.org/10.5194/wes-9-1765-2024\" target=\"_blank\">https://dx.doi.org/10.5194/wes-9-1765-2024</a>","StandardTitle":"Investigation of blade flexibility effects on the loads and wake of a 15 MW wind turbine using a flexible actuator line method","AuthorsString":"Trigaux, F.; Chatelain, P.; Winckelmans, G.","BibLvlCode":"AS"},{"BRefID":417974,"RR":"<b>Borgers, R.; Dirksen, M.; Wijnant, I.L.; Stepek, A.; Stoffelen, A.; Akhtar, N.; Neirynck, J.; van de Walle, J.; Meyers, J.; van Lipzig, N.P.M.</b> (2024). 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Wind farm flow control: prospects and challenges. <i>Wind Energy Science 7(6)</i>: 2271-2306. <a href=\"https://dx.doi.org/10.5194/wes-7-2271-2022\" target=\"_blank\">https://dx.doi.org/10.5194/wes-7-2271-2022</a>","StandardTitle":"Wind farm flow control: prospects and challenges","AuthorsString":"Meyers, J. <i>et al.</i>","BibLvlCode":"AS"},{"BRefID":352737,"RR":"<b>Nejad, A.R.; Keller, J.; Guo, Y.; Sheng, S.; Polinder, H.; Watson, S.; Dong, J.; Qin, Z.; Ebrahimi, A.; Schelenz, R.; Gutiérrez Guzmán, F.; Cornel, D.; Golafshan, R.; Jacobs, G.; Blockmans, B.; Carroll, J.; Koukoura, S.; Hart, E.; McDonald, A.; Natarajan, A.; Torsvik, J.; Moghadam, F.K.; Daems, P.-J.; Verstraeten, T.; Peeters, C.; Helsen, J.</b> (2022). Wind turbine drivetrains: state-of-the-art technologies and future development trends. <i>Wind Energy Science 7(1)</i>: 387-411. <a href=\"https://dx.doi.org/10.5194/wes-7-387-2022\" target=\"_blank\">https://dx.doi.org/10.5194/wes-7-387-2022</a>","StandardTitle":"Wind turbine drivetrains: state-of-the-art technologies and future development trends","AuthorsString":"Nejad, A.R. <i>et al.</i>","BibLvlCode":"AS"}],"BEntOpen":null,"BEntPrivate":null,"availability":null,"litstyles":null,"thespers":null,"arch2discl":null,"SERpubls":null,"MONpubls":null,"pictures":[],"thestermsPath":null,"thestermsASFA":null,"taxtermsASFA":null,"geotermsASFA":null,"collections":null,"conf":null,"proj":null,"Physdatasets":null,"spcols":null,"doi":null,"publs":[{"PublID":3823,"PublName":"Copernicus Publications","InsID":null,"PersID":null,"INBOID":null,"OrderNr":1}],"serparttypes":["A"],"monauthors":null,"MParts":null,"SParts":null,"hLibs":null,"langs":[{"BEntID":304335,"AbstractFlag":0,"LangID":15,"LangCode":"en","Lang":"English","DutchTerm":"Engels","LangCodeExtended":"eng"}],"urls":[{"URL":"http://www.wind-energy-science.net","externalID":null,"URLTypeCode":null,"URLID":124929,"URLTypID":22,"URLType":"Journal home page","URLPrefix":null},{"URL":"https://doaj.org/toc/79d740cc4c3245a08695682ee15a420b","externalID":null,"URLTypeCode":"DOAJ","URLID":127665,"URLTypID":48,"URLType":"DOAJ","URLPrefix":"https://doaj.org/"}],"thesterms":null,"taxterms":null,"geoterms":null,"othterms":null,"asfacodes":null,"asfa2codes":null,"thestermsFRIS":null,"taxtermsFRIS":null,"geotermsFRIS":null,"othtermsFRIS":null,"resmessage":"","complete":1,"sessions":{"newSesName":"Bouchti, Zohra, Z.","newSesDate":{"date":"2019-06-07 08:31:20.260000","timezone_type":3,"timezone":"Europe/Brussels"},"updSesName":"Bouchti, Zohra, Z.","updSesDate":{"date":"2019-06-07 08:31:20.260000","timezone_type":3,"timezone":"Europe/Brussels"}}}
