GRIPPING RELIABILITY ANALYSIS OF STEEL ARCH SPLICING ROBOT IN VIBRATION ENVIRONMENT BASED ON FUZZY RANDOM VARIABLES

Wei Weng, ∗,∗∗ Yuanfu He,∗∗∗ Zhen Xu,∗∗∗∗ Xiangpan Zheng,∗∗∗ and Xinyi Yu∗∗∗∗∗

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