For Mineral Engineers | Statistical Methods

Low-precision measurements (e.g., a problematic conveyor scale) get adjusted more than high-precision measurements (e.g., a calibrated lab balance). The output is a single, coherent set of production data. Part 6: Regression Analysis for Recovery Optimization Linear regression is the workhorse, but mineral processes are rarely linear. Logistic Regression Recovery is a proportion between 0 and 1. Linear regression can predict values outside this range ($>100%$). Logistic regression models the log-odds of recovery:

Where $\gamma(h)$ is the semivariance, $h$ is the lag distance, and $Z$ is the grade. Statistical Methods For Mineral Engineers

Where $p$ is the probability of recovery (the metal reporting to concentrate). Many flotation recovery curves follow a sigmoidal shape. The Hill equation (borrowed from biochemistry) models recovery as a function of residence time: Low-precision measurements (e