2022
DOI: 10.3390/pr10020250
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Machine Learning-Based Dynamic Modeling for Process Engineering Applications: A Guideline for Simulation and Prediction from Perceptron to Deep Learning

Abstract: A misusage of machine learning (ML) strategies is usually observed in the process systems engineering literature. This issue is even more evident when dynamic identification is performed. The root of this problem is the gradient explode and vanishing issue related to the recurrent neural networks training. However, after the advent of deep learning, these issues were mitigated. Furthermore, the problem of data structuration is often overlooked during the machine learning model identification in this field. In … Show more

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Cited by 11 publications
(6 citation statements)
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“…Initial learning rate On the other hand, it is necessary to ensure that the model used is suitable for what is desired. In this sense, several works in the literature have pointed to the deep neural network as the most suitable machine learning solution to model complex dynamic systems [10,13,29]. For instance, Rebello et al, 2022 [13] and Oliveira et al, 2020 [10] compared several machine learning approaches, concluding that deep learning was able to better describe the dynamics of a pressure swing adsorption unit.…”
Section: Hyperspace Resultsmentioning
confidence: 99%
See 3 more Smart Citations
“…Initial learning rate On the other hand, it is necessary to ensure that the model used is suitable for what is desired. In this sense, several works in the literature have pointed to the deep neural network as the most suitable machine learning solution to model complex dynamic systems [10,13,29]. For instance, Rebello et al, 2022 [13] and Oliveira et al, 2020 [10] compared several machine learning approaches, concluding that deep learning was able to better describe the dynamics of a pressure swing adsorption unit.…”
Section: Hyperspace Resultsmentioning
confidence: 99%
“…In this sense, several works in the literature have pointed to the deep neural network as the most suitable machine learning solution to model complex dynamic systems [10,13,29]. For instance, Rebello et al, 2022 [13] and Oliveira et al, 2020 [10] compared several machine learning approaches, concluding that deep learning was able to better describe the dynamics of a pressure swing adsorption unit. Schweidtmann et al, 2021 [29] points out that among ML techniques-such as random forests, support vector machines, spline functions, among others-deep learning is the most suitable for learning complex dependencies.…”
Section: Hyperspace Resultsmentioning
confidence: 99%
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“…Each method has its own advantages and disadvantages. The literature in ANN-based surrogates presents relevant usages of both methods. ,− …”
Section: Methodsmentioning
confidence: 99%