Abstract

For great achievements in recent decades, image reconstruction for electrical capacitance tomography (ECT) has been considered in this study. ECT has demonstrated impressive potentials in multiprocess measurement, and the obtained images are of high resolution, which are suitable for advanced procedures in industrial and medical applications and across different tasks and domains. But the ECT system still requires improvements in the quality of image reconstruction given its importance of great significance to obtain the reliability and usefulness of measurement results. The deep neural network is used in this study to extract new features and to update the number of nodes and hidden layers in the system. Recently, deep learning exhibits suitable solutions in many flourishing fields based on different series of artificial neural networks for mapping nonlinear functions. To address the obstacles, this paper proposes an imaging method using an optimizer reconstruction model. An optimization model for imaging is generated as a powerful optimizer for building a computational model to ameliorate the reconstruction accuracy. Based on the deep learning methodology, the previous images reconstructed by using one of the imaging techniques to the required images are abstracted and stored in the deep learning machine, resulting in an error rate of 8.9%, and this is considered good on ECT. Therefore, an artificial neural network of the capacitance (ANNoC) system is introduced to estimate capacitance measurements.

Highlights

  • One of the modern technologies that do not require surgical intervention is the electronic capacitance tomography technique that relies on the application of electric voltage only [1]

  • Any results from electrical capacitance tomography (ECT) are featured in sensitivity to their distribution. e image reconstruction algorithm is the key for opening the horizon in the field of ECT, so more image reconstruction process algorithms are needed. ere are two types of algorithms for image reconstruction of ECT [5]: noniterative and iterative algorithms

  • All the measurements are based on this type and according to architecture design. e following equation illustrates the parameters in detail which reflects the measurement value: C Q, C ε0εrA, (7)

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Summary

Introduction

One of the modern technologies that do not require surgical intervention is the electronic capacitance tomography technique that relies on the application of electric voltage only [1]. Image reconstruction in the ECT system has been developed using a deep learning algorithm with a big dataset based on moveable sensors [17]. Capacitance value is controlled under image reconstruction to measure the distribution of permittivity in ECT based on autoencoder [18].

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