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首页> 外文期刊>Journal of Computing and Information Science in Engineering >Nearest Neighbor Gaussian Process Emulation for Multi-Dimensional Array Responses in Freeze Nano 3D Printing of Energy Devices
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Nearest Neighbor Gaussian Process Emulation for Multi-Dimensional Array Responses in Freeze Nano 3D Printing of Energy Devices

机译:冻结纳米3D印刷中的多维数组响应的最近邻居高斯工艺仿真

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摘要

Energy 3D printing processes have enabled the manufacturing of energy storage devices with complex structures, high energy density, and high power density. Among these processes, freeze nano printing (FNP) has risen as a promising process. However, quality problems are among the biggest barriers for FNP and other 3D printing processes. Particularly, the droplet solidification time in FNP governs the thermal distribution and subsequently determines the product solidification, formation, and quality. To describe the solidification time, a physical-based heat transfer model is built. But, it is computationally intensive. The objective of this work is to build an efficient emulator for the physical model. There are several challenges unaddressed before: (1) the solidification time at various locations, which is a multi-dimensional array response, needs to be modeled and (2) the construction and evaluation of the emulator at new process settings need to be quick and accurate. Here, we integrate joint tensor decomposition and nearest neighbor Gaussian process (NNGP) to construct an efficient multi-dimensional array response emulator with process settings as inputs. Specifically, structured joint tensor decomposition decomposes the multi-dimensional array responses at various process settings into the setting-specific core tensors and shared low-dimensional factorization matrices. Then, each independent entry of the core tensor is modeled with an NNGP, which addresses the computationally intensive model estimation problem by sampling the nearest neighborhood samples. Finally, tensor reconstruction is performed to make predictions of the solidification time for new process settings. The proposed framework is demonstrated by emulating the physical model of FNP and compared with alternative tensor (multi-dimensional array) regression models.
机译:能量3D打印过程使能量存储装置的制造具有复杂的结构,高能量密度和高功率密度。在这些过程中,冷冻纳米印刷(FNP)作为有前景的过程已经上升。但是,质量问题是FNP和其他3D打印过程的最大障碍之一。特别地,FNP中的液滴固化时间控制热分布,随后确定产品凝固,形成和质量。为了描述凝固时间,构建了基于物理的传热模型。但是,它是计算密集的。这项工作的目的是为物理模型构建一个有效的模拟器。之前有几种挑战:(1)需要建模的各个位置处的凝固时间,并且(2)在新的过程中的仿真器的构造和评估需要快速和准确的。在这里,我们集成了关节张量分解和最近的邻居高斯进程(NNGP)来构造有效的多维阵列响应仿真器,其具有进程设置为输入。具体地,结构化关节张量分解将各种过程设置的多维阵列响应分解为特定的核心张力和共享的低维分解矩阵。然后,核心张量的每个独立条目用NNGP建模,通过对最近的邻域样本进行采样来解决计算上强化模型估计问题。最后,执行张量重建以使预测到新的过程设置的凝固时间。通过模拟FNP的物理模型并与替代张量(多维阵列)回归模型进行比较来证明所提出的框架。

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