An upgrade of predictorfunctions based on the analysis of time series for mashing beer wort

Authors

DOI:

https://doi.org/10.15587/1729-4061.2015.47350

Keywords:

prediction, mathematical model, predictor function, mashing wort

Abstract

The paper presents research findings concerning the complex system of the mashing and brewing section of the brewery by methods of nonlinear dynamics. We have analysed the time series of the variable technological processesof making beer wort. The prior information and analysis on the dimensions of the reconstituted phase trajectories of the object determined our selection of the structures and functions of the basic models of the dynamics in the process of mashing wort; the structures and functions had the form of nonlinear algebraic polynomials and fractional rational functions of the 3-6 order, respectively. As a result, the calculated and established coefficients of the dynamic models have provided adequacy of the experimental data model that is sufficient for practical purposes: the prediction error does not exceed 6 %. Simulation in the VectorODE package made it possible to upgrade predictor functions for predicting the progress of mashing beer wort in chaotic regimes of the process. We have determined the optimal structure and parameters of differential equations as predictors for the criteria of time and prediction accuracy. Besides, we have proved effectiveness of the obtained models for predicting the behaviour of the object in a wide range, including chaotic regimes. The derived models were checked through time test series that showed the effectiveness of these predictor functions: the depth of the prediction was 8-17 minutes with an accuracy of 3 % to 7 %. Using predictor functions ensures the implementation of effective management strategies in the technological complex of beer production in conditions of intermittency.

Author Biographies

Микола Володимирович Чернецький, National University of Food Technologies Volodymyrska str. 68, Kyiv, Ukraine, 01033

PhD student

Department automation of process control

Василь Дмитрович Кишенько, National University of Food Technologies Volodymyrska str. 68, Kyiv, Ukraine, 01033

Candidate of Technical Science, Professor

Department automation of process control

Анатолій Петрович Ладанюк, National University of Food Technologies Volodymyrska str. 68, Kyiv, Ukraine, 01033

Doctor of Technical Science, Professor

Department automation of process control

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Published

2015-08-25

How to Cite

Чернецький, М. В., Кишенько, В. Д., & Ладанюк, А. П. (2015). An upgrade of predictorfunctions based on the analysis of time series for mashing beer wort. Eastern-European Journal of Enterprise Technologies, 4(2(76), 57–62. https://doi.org/10.15587/1729-4061.2015.47350