Citation:
Omogbai Oleghe and Konstantinos Salonitis. Schedule performance measurement based on statistical process control charts. International Journal of Engineering Management and Economics, 2014, Vol. 4, No. 3/4, pp194-212
Abstract:
In a job-shop manufacturing environment, achieving a schedule that is on target is
difficult due to the dynamism of factors affecting the system, and this makes schedule
performance measurement systems hard to design and implement. In the present paper,
Statistical Process Control charts are directly applied to a scheduling process for the
purpose of objectively measuring schedule performance. SPC charts provide an objective
and timely approach to designing, implementing and monitoring schedule performance.
However, the use of Statistical Process Control charts requires an appreciation of the
conditions for applying raw data to SPC charts. In the present paper, the Shewart’s
Individuals control chart are applied to monitor the deviations of actual process times
from the scheduled process times for each job on a process machine. The Individuals
control charts are highly sensitive to non-normal data, which increases the rate of false
alarms, but this can be avoided using data transformation operations such as the Box-Cox
transformation. Statistical Process Control charts have not been used to measure schedule
performance in a job shop setting, so this paper uniquely contributes to research in this
area. In addition, using our proposed methodology enables a scheduler to monitor how an
optimal schedule has performed on the shop floor, study the variations between planned
and actual outcomes, seek ways of eliminating these variations and check if process
improvements have been effective.