Neural Network Gaussian Process Considering Input Uncertainty for
Composite Structures Assembly
- URL: http://arxiv.org/abs/2011.10861v1
- Date: Sat, 21 Nov 2020 20:21:28 GMT
- Title: Neural Network Gaussian Process Considering Input Uncertainty for
Composite Structures Assembly
- Authors: Cheolhei Lee, Jianguo Wu, Wenjia Wang, Xiaowei Yue
- Abstract summary: We propose a neural network Gaussian process model considering input uncertainty for composite structures assembly.
The NNGPIU can outperform other benchmark methods when the response function is nonsmooth and nonlinear.
Although we use composite structure assembly as an example, the proposed methodology can be applicable to other engineering systems with intrinsic uncertainties.
- Score: 13.330270644806307
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Developing machine learning enabled smart manufacturing is promising for
composite structures assembly process. To improve production quality and
efficiency of the assembly process, accurate predictive analysis on dimensional
deviations and residual stress of the composite structures is required. The
novel composite structures assembly involves two challenges: (i) the highly
nonlinear and anisotropic properties of composite materials; and (ii)
inevitable uncertainty in the assembly process. To overcome those problems, we
propose a neural network Gaussian process model considering input uncertainty
for composite structures assembly. Deep architecture of our model allows us to
approximate a complex process better, and consideration of input uncertainty
enables robust modeling with complete incorporation of the process uncertainty.
Based on simulation and case study, the NNGPIU can outperform other benchmark
methods when the response function is nonsmooth and nonlinear. Although we use
composite structure assembly as an example, the proposed methodology can be
applicable to other engineering systems with intrinsic uncertainties.
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