A standard assumption when using a control chart to monitor a process is th
at the observations from the process output are independent. However, for m
any processes the observations are autocorrelated, and this autocorrelation
can have a significant effect on the performance of the control chart. Thi
s paper considers the problem of monitoring the mean of a process in which
the observations can be modeled as an AR(1) process plus a random error. An
exponentially weighted moving average (EWMA) control chart based on the re
siduals from the forecast values of the model is evaluated using an integra
l equation method. This control chart's performance is compared to the perf
ormance of an EWMA control chart based on the original observations, and th
e effect of process parameter estimation on the control charts is investiga
ted, When the level of autocorrelation is low or moderate, the two EWMA cha
rts require about the same amount of time to detect various shifts; but for
high levels of autocorrelation and large shifts, the EWMA chart of the res
iduals is a little faster.