Analysis and prediction of printable bridge length in fused deposition modelling based on back propagation neural network
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Xiao Li | Xun Xu | Jingchao Jiang | Jonathan Stringer | Guobiao Hu | Pai Zheng | X. Xu | J. Stringer | Jingchao Jiang | Guobiao Hu | P. Zheng | Xiao Li
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