scholarly journals Neural network modeling of change in lactic acid concentration during continuous fermentation of bifidobacteria

2020 ◽  
Vol 64 (11) ◽  
pp. 61-69
Author(s):  
Ilya V. Maklyaev ◽  
◽  
Yury A. Lemetyuynen ◽  
Vera S. Nokhaeva ◽  
Svetlana A. Evdokimova ◽  
...  

In this work the changes in the lactic acid concentration during continuous fermentation of bifidobacteria have been investigated to obtain a neural network mathematical description. The fermentation was carried out under the conditions close to those of the descending colon (maintaining pH of 6.8 with 20% sodium hydroxide; anaerobiosis; the medium dilution rate was 0.04 h-1). This colon section is characterized by a large number of microorganisms, as well as their enormous influence on the host organism. The researches were carried out with the probiotic strain of Bifidobacterium adolescentis VKPM Ac-1662 (ATCC 15703T), the concentrations of the prebiotic oligofructose were varied (2, 5, 10, 15 g/l). Until a dynamic equilibrium state and at least 36 h after that, the concentrations of lactic and acetic acids using the of high performance liquid chromatography, optical density and viable bacteria count (CFU/ml) were measured. The neural network was trained on the basis on the obtained experimental data. The multilayer perceptron was chosen as the main architecture of the neural network. The vectors of the training sample include 6 variables: 5 input and 1 output. The training took place synchronously using the error back propagation method. The general error of the neural network was 1.85%. It was proved that the neural network approach helps to well illustrate the influence of various factors on the course of biotechnological processes; it summarizes the multiple experimental data with an acceptable error. The resulting neural network mathematical description proves that the representativeness of the training sample is important for obtaining the most accurate mathematical description. Further researches are needed to obtain a mathematical description of the change in the all environment components concentration in the form of a complex of the trained artificial neural networks.

Author(s):  
Е. Ерыгин ◽  
E. Erygin ◽  
Т. Дуюн ◽  
T. Duyun

This article describes the task of predicting roughness when finishing milling using neural network modeling. As a basis for the creation and training of an artificial neural network, a progressive formu-la for determining the roughness during finishing milling is chosen. The thermoEMF of the processing and processed materials is used as one of the parameters for calculating the roughness. The use of thermoEMF allows to take into account the material of the workpiece and the cutting tool, which af-fects the accuracy of the results. A training sample is created with data for five inputs and one output. The architecture, features and network learning algorithm are described. A neural network that de-termines the roughness for finishing milling has been created and configured. The process of learning and debugging of the neural network by means of graphs is clearly displayed. The network operability is checked on the test data, which allows obtaining positive results.


Author(s):  
Sergey O. Ivanov ◽  
Aleksandr A. Lariukhin ◽  
Maxim V. Nikandrov ◽  
Leonid A. Slavutskii

Modern electric power facilities-stations and high-voltage substations have become digital objects with the active use of high-speed local networks directly involved in the technological process. Management, analysis and control of information exchange in the digital substation of the power system require the development of new tools and approaches. For these purposes, machine learning methods can be used, in particular, the artificial neural networks. The paper presents the results of neural network modeling of the operation of the overcurrent protection – as a variant of the information exchange analysis. An elementary perceptron is used as a neural network with the simplest structure. The optimized structure of the neural network and estimates of the accuracy of the neural network algorithm are given, depending on the size of the training sample (from 1000 to 50000 records), the number of training epochs. It is shown that the analysis of the neural network algorithm errors encountered during testing of the neural network enables to estimate the threshold (the setting value) current protection depending on the size of the training sample. It is found that the recognition of the protection trigger threshold in neural network modeling is violated only when the all three phase currents in electrical mains are close to the threshold. The possibilities of improving the proposed approach and its use for detecting anomalies in the information exchange and operation of secondary equipment of digital substations of the power system are discussed.


2019 ◽  
Vol 23 (Suppl. 2) ◽  
pp. 575-582 ◽  
Author(s):  
Evgenii Kuznetsov ◽  
Sergey Leonov ◽  
Dmitry Tarkhov ◽  
Alexander Vasilyev

The paper deals with a parameter identification problem for creep and fracture model. The system of ordinary differential equations of kinetic creep theory is applied for describing this model. As for solving the parameter identification problem, we proposed to use the technique of neural network modeling, as well as the multilayer approach. The procedures of neural network modeling and multilayer approximation constructing application is demonstrated by the example of finding parameters for uniaxial tension model for isotropic steel 45 specimens at creep conditions. The solution corresponding to the obtained parameters agrees well with theoretical strain-damage characteristics, experimental data, and results of other authors.


2019 ◽  
Vol 52 (9-10) ◽  
pp. 1362-1370 ◽  
Author(s):  
Yuen Liang ◽  
Suan Xu ◽  
Kaixing Hong ◽  
Guirong Wang ◽  
Tao Zeng

A new polynomial fitting model based on a neural network is presented to characterize the hysteresis in piezoelectric actuators. As hysteresis is multi-valued mapping, and traditional neural networks can only solve one-to-one mapping, a hysteresis mathematical model is proposed to expand the input of the neural network by converting the multi-valued into one-to-one mapping. Experiments were performed under designed excitation with different driven voltage amplitudes to obtain the parameters of the model using the polynomial fitting method. The simulation results were in good accordance with the measured data and demonstrate the precision with which the model can predict the hysteresis. Based on the proposed model, a single-neuron adaptive proportional–integral–derivative controller combined with a feedforward loop is designed to correct the errors induced by the hysteresis in the piezoelectric actuator. The results demonstrate superior tracking performance, which validates the practicability and effectiveness of the presented approach.


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