With the continuous development of diagnosis, prediction and systems management technologies for complex pipeline systems and driven by the context of Industry 4.0, digital twin technology has become a research hotspot in the field of smart manufacturing and intelligent operation and maintenance of pipeline systems. Digital twin can be defined as an adaptive model of complex physical systems. The prospect of digital twin and its impact on society is brought closer to reality with recent advances in multiphysics simulation, artificial intelligence, big data cybernetics, data processing and management tools. With a case study on Sino-Myanmar pipelines, the author uses artificial intelligence models on the basis of digital twin technology to predict the pipeline transmission demand to make sure the smooth operation of pipelines with large topographic fluctuations and geological complexity. The objective is to achieve intelligent operation such as real-time autonomous optimization of pipeline operation and control of safety warning, thus realizing data analysis and intelligent diagnosis, as well as providing a reference for the application of demand prediction of complex pipeline networks and system health management in digital twin technology.
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