## ----include = FALSE---------------------------------------------------------- knitr::opts_chunk$set( collapse = TRUE, comment = "#>", fig.width = 7, fig.height = 4.2, dpi = 96 ) ## ----setup, message = FALSE--------------------------------------------------- library(shewhartr) library(ggplot2) library(dplyr) ## ----------------------------------------------------------------------------- fit_imr <- shewhart_i_mr(bottle_fill, value = ml, index = observation) fit_imr ## ----eval = FALSE------------------------------------------------------------- # autoplot(fit_imr) ## ----------------------------------------------------------------------------- fit_xbar <- shewhart_xbar_r(tablet_weight, value = weight, subgroup = subgroup) broom::glance(fit_xbar) ## ----------------------------------------------------------------------------- fit_c <- shewhart_c(pcb_solder, defects = defects, index = board) broom::tidy(fit_c) ## ----------------------------------------------------------------------------- fit_c_exact <- shewhart_c(pcb_solder, defects = defects, index = board, limits = "poisson") broom::tidy(fit_c_exact) ## ----------------------------------------------------------------------------- broom::tidy(fit_imr) # control-limit summary broom::glance(fit_imr) # one-row diagnostic head(broom::augment(fit_imr)) # per-observation results ## ----------------------------------------------------------------------------- # Suppose the first 60 bottles are our calibration baseline, # and the next 40 are new data we want to monitor. baseline <- bottle_fill[1:60, ] new_obs <- bottle_fill[61:100, ] calib <- calibrate(baseline, value = ml, index = observation, chart = "i_mr") alarms <- monitor(new_obs, calib) alarms$violations