Prediction maintenance integrated decision-making approach supported by digital twin-driven cooperative awareness and interconnection framework
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Yong Wang | Shanghua Mi | Hao Zheng | Yixiong Feng | Yicong Gao | Jianrong Tan | Jianrong Tan | Yixiong Feng | Yong Wang | Hao Zheng | Yicong Gao | Shanghua Mi
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