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Predicting power plant emissions using public data and machine learning

  2023

Gu, J., Sward, J. A., and Zhang, K. M. Predicting power plant emissions using public data and machine learning, Environmental Science: Advances, 2023, 2, 1697-1707

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    The report was several years in the making, starting with some projects done by Cornell students in 2011 through 2013. In 2014, an official steering committee was appointed, led by Cornell professor Max Zhang and including local government and economic leaders, energy and sustainability experts and engineers.

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