Abstract:Abstract:Image reconstruction with electrical impedance tomography (EIT) is a highly nonlinear, underdetermined and morbid inverse problem. Since traditional methods cannot achieve high accuracy and the reconstruction process is usually timeconsuming, a radial basis function neural network based on adaptive particleswarmoptimization (APSORBFNN) method isproposedand used forthe imagereconstruction.15 000 simulation samplesareestablished throughnumericalsimulation,whichare dividedinto the trainingset and test set. After network training, the image correlation coefficient (ICC) on the test set is 095, and the simulation results verify the effectiveness of the proposed APSORBFNN method. When the Gaussian white noises of 30, 40 and 50 dB are added to the test set, the ICCs are 090, 092 and 093, respectively, which proves the robustness of the proposed method. The reconstruction results for the samples with more targets show that the proposed method has good generalization ability. In addition, the experiment data test results of an 8electrode EIT system show that the proposed APSORBFNN method has better image reconstruction results compared with the Tikhonov and RBFNN methods.