Interpretable Machine Learning—Tools to Interpret the Predictions of a Machine Learning Model Predicting the Electrical Energy Consumption of an Electric Arc Furnace
暂无分享,去创建一个
[1] Markus Haider,et al. Electric Arc Furnace Off‐Gas Heat Recovery and Experience with a Testing Plant , 2014 .
[2] Suzana de Siqueira Santos,et al. A comparative study of statistical methods used to identify dependencies between gene expression signals , 2014, Briefings Bioinform..
[3] Marcus Kirschen,et al. Influence of direct reduced iron on the energy balance of the electric arc furnace in steel industry , 2011 .
[4] Kenneth Carling,et al. Resistant outlier rules and the non-Gaussian case , 1998 .
[5] P. Jönsson,et al. Using Statistical Modeling to Predict the Electrical Energy Consumption of an Electric Arc Furnace Producing Stainless Steel , 2019, Metals.
[6] Maria L. Rizzo,et al. Brownian distance covariance , 2009, 1010.0297.
[7] Markus Haider,et al. Modeling, Simulation, and Validation with Measurements of a Heat Recovery Hot Gas Cooling Line for Electric Arc Furnaces , 2018 .
[8] P. Jönsson,et al. Predicting the Electrical Energy Consumption of Electric Arc Furnaces Using Statistical Modeling , 2019, Metals.