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Codebase that accompanies the master's project Improving Onshore Windfarm Siting

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Improving Onshore Windfarm Siting

Improving Onshore Windfarm Siting is an industrial colloboration research that aims to locate windier sites for windfarm development Worldwide in a data-driven approach with the help of 'classical machine learning'. It was supported by Engineering Design Centre https://www-edc.eng.cam.ac.uk/ and Wind Pioneers http://www.wind-pioneers.com/.

Student Researcher: Yanhong Zhao (Cambridge University Engineering Part IIB Project) Supervisor: Dr. Ioannis Lestas, Dr Timoleon Kipouros Industrial Contact: Jerry Randall

Technical Abstract:

Final Report:

Award: CAPE (Centre for Advanced Photonics and Electronics) Acron IIB Acorn Award 2018 (https://twitter.com/CAPECambridge/status/995973467819462656)

Final Project Presentation:

All the codebase used in the project are here barring the original data which belongs to Wind Pioneers.

regression models that are used in this codebase

  • Linear regression
  • Bayesian linear regression
  • Polynomial regression
  • Ridge regression
  • Lasso regression
  • PCA regression
  • FA regression
  • Gaussian process regression
  • Support vector machine regression
  • Random forrest regression
  • Multi-layer perceptron regression

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Codebase that accompanies the master's project Improving Onshore Windfarm Siting

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