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dc.contributor.authorDing, Yu
dc.date.accessioned2025-05-12T09:31:54Z
dc.date.available2025-05-12T09:31:54Z
dc.date.issued2019
dc.identifierONIX_20250512_9780429956515_7
dc.identifier.urihttps://library.oapen.org/handle/20.500.12657/101466
dc.description.abstractData Science for Wind Energy provides an in-depth discussion on how data science methods can improve decision making for wind energy applications, near-ground wind field analysis and forecast, turbine power curve fitting and performance analysis, turbine reliability assessment, and maintenance optimization for wind turbines and wind farms. A broad set of data science methods covered, including time series models, spatio-temporal analysis, kernel regression, decision trees, kNN, splines, Bayesian inference, and importance sampling. More importantly, the data science methods are described in the context of wind energy applications, with specific wind energy examples and case studies. Please also visit the author’s book site at https://aml.engr.tamu.edu/book-dswe. Features Provides an integral treatment of data science methods and wind energy applications Includes specific demonstration of particular data science methods and their use in the context of addressing wind energy needs Presents real data, case studies and computer codes from wind energy research and industrial practice Covers material based on the author's ten plus years of academic research and insights
dc.languageEnglish
dc.subject.classificationthema EDItEUR::U Computing and Information Technology::UN Databases::UNF Data mining
dc.subject.classificationthema EDItEUR::T Technology, Engineering, Agriculture, Industrial processes::TH Energy technology and engineering::THV Alternative and renewable energy sources and technology
dc.subject.classificationthema EDItEUR::U Computing and Information Technology::UY Computer science::UYQ Artificial intelligence
dc.subject.classificationthema EDItEUR::P Mathematics and Science::PB Mathematics::PBT Probability and statistics
dc.subject.otherBayesian Additive Regression Trees
dc.subject.otherSVM Model
dc.subject.otherPower Curve Model
dc.subject.otherWind Speed
dc.subject.otherGEV Distribution
dc.subject.otherPACF Plot
dc.subject.otherWind Turbine
dc.subject.otherBinning Method
dc.subject.otherLocal Wind Field
dc.subject.otherARMA Model
dc.subject.otherWind Field Analysis
dc.subject.otherAhead Forecast
dc.subject.otherWind Speed Forecast
dc.subject.otherPower Curve
dc.subject.otherWind Farm
dc.subject.otherData Science Methods
dc.subject.otherTest Turbine
dc.subject.otherImportance Sampling Density
dc.subject.otherBe
dc.subject.otherGMRF Model
dc.subject.otherComputer Simulators
dc.subject.otherCMC
dc.subject.otherPower Coefficient
dc.subject.otherImportance Sampling Method
dc.subject.otherPosterior Predictive Distribution
dc.titleData Science for Wind Energy
dc.typebook
oapen.identifier.doi10.1201/9780429490972
oapen.relation.isPublishedBy7b3c7b10-5b1e-40b3-860e-c6dd5197f0bb
oapen.relation.isFundedBye9f4faa3-9aac-40dd-b63b-aec2d8ab48ad
oapen.relation.isbn9780429956515
oapen.relation.isbn9781138590526
oapen.relation.isbn9780429956492
oapen.relation.isbn9780429956508
oapen.relation.isbn9780367729097
oapen.relation.isbn9780429490972
oapen.imprintChapman and Hall/CRC
oapen.pages424
oapen.grant.number[...]
oapen.identifier.ocn1103917723
peerreview.anonymitySingle-anonymised
peerreview.idbc80075c-96cc-4740-a9f3-a234bc2598f1
peerreview.open.reviewNo
peerreview.publish.responsibilityPublisher
peerreview.review.stagePre-publication
peerreview.review.typeProposal
peerreview.reviewer.typeInternal editor
peerreview.reviewer.typeExternal peer reviewer
peerreview.titleProposal review
oapen.review.commentsTaylor & Francis open access titles are reviewed as a minimum at proposal stage by at least two external peer reviewers and an internal editor (additional reviews may be sought and additional content reviewed as required).


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