IEEE Trans Ultrason Ferroelectr Freq Control. 2022 Jul;69(7):2352-2370. doi: 10.1109/TUFFC.2022.3177469. Epub 2022 Jun 30.
The precise temperature distribution measurement is crucial in many industrial fields, where ultrasonic tomography (UT) has broad application prospects and significance. In order to improve the resolution of reconstructed temperature distribution images and maintain high accuracy, a novel two-step reconstruction method is proposed in this article. First, the problem of solving the temperature distribution is converted to an optimization problem and then solved by an improved version of the equilibrium optimizer (IEO), in which a new nonlinear time strategy and novel population update rules are deployed. Then, based on the low-resolution and high-precision images reconstructed by IEO, Gaussian process regression (GPR) is adopted to enhance image resolution and keep the reconstruction errors low. After that, the number of divided grids and the parameters of IEO are also further studied to improve the reconstruction quality. The results of numerical simulations and experiments indicate that high-resolution images with low reconstruction errors can be reconstructed effectively by the proposed IEO-GPR method, and it also shows excellent robust performance. For a complex three-peak temperature distribution, a competitive accuracy with 3.10% and 2.37% error at root-mean-square error and average relative error is achieved, respectively. In practical experiment, the root-mean-square error of IEO-GPR is 0.72%, which is at least 0.89% lower than that of conventional algorithms.
精确的温度分布测量在许多工业领域中至关重要,超声层析成像(UT)在此具有广泛的应用前景和意义。为了提高重建温度分布图像的分辨率并保持高精度,本文提出了一种新的两步重建方法。首先,将求解温度分布的问题转换为优化问题,并通过改进的平衡优化器(IEO)进行求解,其中部署了新的非线性时间策略和新颖的种群更新规则。然后,基于 IEO 重建的低分辨率和高精度图像,采用高斯过程回归(GPR)来提高图像分辨率并保持较低的重建误差。之后,还进一步研究了划分网格的数量和 IEO 的参数,以提高重建质量。数值模拟和实验结果表明,所提出的 IEO-GPR 方法可以有效地重建具有低重建误差的高分辨率图像,并且还表现出出色的鲁棒性能。对于复杂的三峰温度分布,在均方根误差和平均相对误差方面分别达到了 3.10%和 2.37%的竞争精度。在实际实验中,IEO-GPR 的均方根误差为 0.72%,至少比传统算法低 0.89%。