S-B-Iqbal / Predicting-Power-Output-of-a-combined-cycle-power-plant.Links
The objective of the Project is to predict ‘Full Load Electrical Power Output’ of a Base load operated combined cycle power plant using Polynomial Multiple Regression. Concepts : 1) Clustering, 2) Polynomial Regression, 3) LASSO, 4) Cross-Validation, 5) Bootstrapping
☆11Updated 6 years ago
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