Please use this identifier to cite or link to this item: https://repository.unej.ac.id/xmlui/handle/123456789/99856
Title: Power Curves Prediction using Empirical Data Regression on Small Scale Compressed Air Energy Storage
Authors: WIDJONARKO, Widjonarko
SOENOKO, Rudy
WAHYUDI, Slamet
SISWANTO, Eko
Keywords: Empirical
observation
prediction
power curve
regression
small scale-CAES
Issue Date: 1-Dec-2019
Publisher: Journal of Mechanical Engineering and Sciences, Volume 13, Issue 4, pp. 6144-6164, December 2019
Abstract: The key to optimizing the system is to know the operating point of the system at the time of loading, or it is known as the power curve. However, to identify the power curve, the existing method is to model the mathematical of the system. Therefore some component characteristics need to be known and need additional observations if the component variable is unknown, and it becomes a long identification process. So, in this exploratory research will be presented the way to find out the power curve of a system without modeling mathematical of the system, but by using the polynomial regression technique. This regression technique form is using the empirical data of the power curve form parameter on SS-CAES prototype. The method is based on five approach model in which is the variation of loading sampling data to be used with the purpose is to find the best sampling of prediction. The data will be analyzed in the form of statistical parameters and the graph to show the evaluation process of this technique. From the results of the regression can be concluded that the power curve of SS-CAES can be identified with a high correlation value of 0.997 (99,745% accuracy) and the best way to take samples of data to be used in this technique is presented in the paper.
URI: http://repository.unej.ac.id/handle/123456789/99856
Appears in Collections:LSP-Jurnal Ilmiah Dosen

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