TY - GEN
T1 - Modeling the Maintenance Time Considering the Experience of the Technicians
AU - Shin, Hyunjong
AU - Tien, Kai wen
AU - Prabhu, Vittaldas
N1 - Publisher Copyright:
© IFIP International Federation for Information Processing 2019.
PY - 2019
Y1 - 2019
N2 - Typically, maintaining a machine requires two different distinct tasks: To select which components to focus their attention; and the subsequent task is to check, repair or replace the selected components. For both tasks, the experience of technicians plays a critical role. An experienced technician is likely to select fewer components and requires less time for the subsequent task compared to an inexperienced technician. As a result, the maintenance time will be varied depending on the experience of the technicians. Extant research for maintenance has predominantly used exponential distribution family for modeling primarily because of its analytical tractability but at the cost of fidelity and inability to capture important characteristics such as technicians’ experience. With the growing adoption of networked sensors based on Internet of Things (IoT), big data, and real-time machinery diagnostics using artificial intelligence it is imperative to develop models with better fidelity for maintenance operations. Therefore, in this paper, we explore a model based on using the negative-hyper geometric distribution for maintenance time that varies based on the technicians’ experience. Our proposed approach requires more inputs such as (1) number of components, (2) number of components not in working state (3) technician’s experience level, and (4) time to fix a component based on the technicians’ experience. For instance, input for (2) could be obtained from IoT sensors and diagnostics. We study the efficacy of the proposed model using computer simulations and statistically characterize the possible impact of technician experience on the parameters of the maintenance distribution.
AB - Typically, maintaining a machine requires two different distinct tasks: To select which components to focus their attention; and the subsequent task is to check, repair or replace the selected components. For both tasks, the experience of technicians plays a critical role. An experienced technician is likely to select fewer components and requires less time for the subsequent task compared to an inexperienced technician. As a result, the maintenance time will be varied depending on the experience of the technicians. Extant research for maintenance has predominantly used exponential distribution family for modeling primarily because of its analytical tractability but at the cost of fidelity and inability to capture important characteristics such as technicians’ experience. With the growing adoption of networked sensors based on Internet of Things (IoT), big data, and real-time machinery diagnostics using artificial intelligence it is imperative to develop models with better fidelity for maintenance operations. Therefore, in this paper, we explore a model based on using the negative-hyper geometric distribution for maintenance time that varies based on the technicians’ experience. Our proposed approach requires more inputs such as (1) number of components, (2) number of components not in working state (3) technician’s experience level, and (4) time to fix a component based on the technicians’ experience. For instance, input for (2) could be obtained from IoT sensors and diagnostics. We study the efficacy of the proposed model using computer simulations and statistically characterize the possible impact of technician experience on the parameters of the maintenance distribution.
KW - Maintenance
KW - Maintenance time
KW - Negative hypergeometric distribution
KW - Technicians’ experience
UR - http://www.scopus.com/inward/record.url?scp=85072957937&partnerID=8YFLogxK
U2 - 10.1007/978-3-030-30000-5_87
DO - 10.1007/978-3-030-30000-5_87
M3 - Conference contribution
AN - SCOPUS:85072957937
SN - 9783030299996
T3 - IFIP Advances in Information and Communication Technology
SP - 716
EP - 721
BT - Advances in Production Management Systems. Production Management for the Factory of the Future - IFIP WG 5.7 International Conference, APMS 2019, Proceedings
A2 - Ameri, Farhad
A2 - Stecke, Kathryn E.
A2 - von Cieminski, Gregor
A2 - Kiritsis, Dimitris
PB - Springer New York LLC
T2 - IFIP WG 5.7 International Conference on Advances in Production Management Systems, APMS 2019
Y2 - 1 September 2019 through 5 September 2019
ER -