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Implementation of the Maintenance Cost Optimization Function in Manufacturing Execution Systems

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Enterprise Information Systems (ICEIS 2022)

Abstract

In this chapter, we consider the global problem of spare parts operating costs optimization from an implementation perspective. So far, the problem of the optimal replacement time for a spare part has been extensively studied in the context of a single part. The available analytical models allow for a very accurate estimation of further service life and savings related to the replacement. Nevertheless, the simultaneous optimization problem of the operating costs for all spare parts used in the factory is beyond the scope of the developed analytical methods. This chapter presents a proposal of a method allowing for global cost optimization. This is one of many approaches that can be used. However, we want to show what kind of problems the global optimization task boils down to in this case. Our goal is to propose modern architecture for IT systems supporting the maintenance department. We believe that the methods presented in this chapter will be an important foundation for this type of solution.

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Correspondence to Andrzej Chmielowiec .

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Chmielowiec, A., Klich, L., Woś, W., Błachowicz, A. (2023). Implementation of the Maintenance Cost Optimization Function in Manufacturing Execution Systems. In: Filipe, J., Śmiałek, M., Brodsky, A., Hammoudi, S. (eds) Enterprise Information Systems. ICEIS 2022. Lecture Notes in Business Information Processing, vol 487. Springer, Cham. https://doi.org/10.1007/978-3-031-39386-0_7

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  • DOI: https://doi.org/10.1007/978-3-031-39386-0_7

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