Optimization of Machine Operation Schedule in Diesel Power Plant System with Integer Programming Method

Kawulur, Meidy Pingkan Yosefin and Mawa, Johanes Munintja (2018) Optimization of Machine Operation Schedule in Diesel Power Plant System with Integer Programming Method. 2018 International Conference on Applied Science and Technology (ICAST). pp. 449-452. ISSN ISBN 978-1-5386-7547-2

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Abstract

The operation of Diesel Power Plant Machines using fuel oil is diesel oil and this is a high cost usage, so in overcoming this, optimization is carried out in the operating schedule rather than the existing machines. This research was conducted to provide a new approach to the scheduling of power plant operations in North Sulawesi. First, the data in the form of power requirements used by consumers in the operating system were estimated by using a data distribution test in this case the Kolmogorov-Smirnov test was used for normal testing. In testing the data turned out to be normally distributed because for all time intervals the maximum value of the calculation is less than the same as the table value. By using the calculation formula for large samples, the power requirements must be generated by the system at each time interval, and this value is created in a mathematical model to find the combination of machines that is operated. As the aim of this paper is to use Integer Programming Zero-One Method and Additive Algorithm, it can be determined by a combination of machines that will be scheduled to be operated, so as to provide a very efficient contribution to the electricity company. Based on the results of this study, a combination of machines is scheduled to be operated at all time intervals.

Item Type: Article
Subjects: J Machine and Production > JD Karya Ilmiah
Divisions: Teknik > Jurusan Teknik Mesin
Depositing User: Andre Tuerah
Date Deposited: 03 May 2023 04:55
Last Modified: 03 May 2023 04:55
URI: http://repository.polimdo.ac.id/id/eprint/2978

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