The simulation of pH control by artificial neural networks using MATLAB
The control of a neutralization process between a strong acid and a strong base has been a challenging problem due to the asymptotic behavior of the titration curve near the pH 7. Many techniques have been studied bur acceptable method has yet to be developed. The use of Artificial Neural Networks (...
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oai:animorepository.dlsu.edu.ph:faculty_research-85072023-01-16T08:44:36Z The simulation of pH control by artificial neural networks using MATLAB Lim, Zervin G. Espiritu, Mark Erwin M. Barcelona, Richard Jefferson B. Olaño, Servillano SB., Jr. The control of a neutralization process between a strong acid and a strong base has been a challenging problem due to the asymptotic behavior of the titration curve near the pH 7. Many techniques have been studied bur acceptable method has yet to be developed. The use of Artificial Neural Networks (ANN) to control non-linear systems has been found to be promising. This study attempts to simulate the ability of ANN to control the pH of the neutralization process by using the toolbox included in MATLAB®. A SIMULINK® model of the control system, which is similar to the form of a simple feedback control system, was developed. A PIO controller is added to the control system to act as the controller for the entire process. The objective is for the ANN to generate the signal to regulate the flow of the base. The base reacts with the acid introduced at constant flow rate as to neutralize the acid to pH 7. The PID controller, which was tuned using the Ziegler-Nichols method, was used to generate the training data for the neural network. The effectiveness of the neural network was tested both by introducing step changes in the acid concentration and by changing the pH set point. From the results of the simulation, it was observed that the neural networks can effectively control the pH as it responds and adapts well to the changes introduced in the system. 2003-01-01T08:00:00Z text https://animorepository.dlsu.edu.ph/faculty_research/7834 Faculty Research Work Animo Repository Hydrogen-ion concentration Neutralization (Chemistry) Neural networks (Computer science) Chemical Engineering |
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Hydrogen-ion concentration Neutralization (Chemistry) Neural networks (Computer science) Chemical Engineering Lim, Zervin G. Espiritu, Mark Erwin M. Barcelona, Richard Jefferson B. Olaño, Servillano SB., Jr. The simulation of pH control by artificial neural networks using MATLAB |
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The control of a neutralization process between a strong acid and a strong base has been a challenging problem due to the asymptotic behavior of the titration curve near the pH 7. Many techniques have been studied bur acceptable method has yet to be developed. The use of Artificial Neural Networks (ANN) to control non-linear systems has been found to be promising. This study attempts to simulate the ability of ANN to control the pH of the neutralization process by using the toolbox included in MATLAB®. A SIMULINK® model of the control system, which is similar to the form of a simple feedback control system, was developed. A PIO controller is added to the control system to act as the controller for the entire process. The objective is for the ANN to generate the signal to regulate the flow of the base. The base reacts with the acid introduced at constant flow rate as to neutralize the acid to pH 7. The PID controller, which was tuned using the Ziegler-Nichols method, was used to generate the training data for the neural network.
The effectiveness of the neural network was tested both by introducing step changes in the acid concentration and by changing the pH set point. From the results of the simulation, it was observed that the neural networks can effectively control the pH as it responds and adapts well to the changes introduced in the system. |
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Lim, Zervin G. Espiritu, Mark Erwin M. Barcelona, Richard Jefferson B. Olaño, Servillano SB., Jr. |
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Lim, Zervin G. Espiritu, Mark Erwin M. Barcelona, Richard Jefferson B. Olaño, Servillano SB., Jr. |
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Lim, Zervin G. |
title |
The simulation of pH control by artificial neural networks using MATLAB |
title_short |
The simulation of pH control by artificial neural networks using MATLAB |
title_full |
The simulation of pH control by artificial neural networks using MATLAB |
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The simulation of pH control by artificial neural networks using MATLAB |
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The simulation of pH control by artificial neural networks using MATLAB |
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simulation of ph control by artificial neural networks using matlab |
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Animo Repository |
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2003 |
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https://animorepository.dlsu.edu.ph/faculty_research/7834 |
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