2022
DOI: 10.1088/1742-6596/2408/1/012023
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The use of dual machine learning in industrial electrical tomography

Abstract: Machine learning techniques are playing a key role in tomography. Process tomography, also known as industrial tomography, uses a variety of physical phenomena. Contrary to the commonly used computed tomography in medicine, electrical, ultrasound, radio and even optical tomography are used in industry. In electrical tomography we distinguish between impedance and capacitance tomography. This manuscript presents an algorithmic method to allow accurate measurements of reactors and industrial vessels using electr… Show more

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“…Dynamic development focuses on methods like artificial neural networks, elastic net, support vector machine, LSTM, and other related techniques [15,16]. This study aims to develop a new predictive model based on machine learning to optimize the selection of RFSSW process parameters for achieving maximum shear load capacity in the joint [17,18]. Moreover, the research developed an improved algorithm enabling a percentage assessment of the quality of the RFSSW joint based on optical analysis of the weld.…”
Section: Introductionmentioning
confidence: 99%
“…Dynamic development focuses on methods like artificial neural networks, elastic net, support vector machine, LSTM, and other related techniques [15,16]. This study aims to develop a new predictive model based on machine learning to optimize the selection of RFSSW process parameters for achieving maximum shear load capacity in the joint [17,18]. Moreover, the research developed an improved algorithm enabling a percentage assessment of the quality of the RFSSW joint based on optical analysis of the weld.…”
Section: Introductionmentioning
confidence: 99%