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Wilfred Pinfold
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Buildings Cybersecurity and Privacy Data Education Public Safety Rural Smart Region Transportation Utility Wellbeing Wireless Agriculture Broadband Resilience Introduction Informational Cybersecurity Privacy Energy Waste Water Smart Buildings
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A digital twin is a virtual representation of a physical object or system that can be used for various purposes such as simulation, analysis, and control. It is typically created using data from sensors and other sources to replicate the object's behavior and characteristics, and can be used for a wide range of applications, including manufacturing, aerospace, and infrastructure.
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Digital twins can be used in a variety of fields, such as manufacturing, construction, healthcare, and transportation, to help with design, testing, and optimization of the physical systems. The twin can be used to test and validate changes to the physical system, such as new manufacturing processes or product designs, without having to make those changes in the physical world. Digital twins can also be used to monitor and predict the performance of a physical system, allowing for proactive maintenance and reducing the risk of downtime. For example, a digital twin of a wind turbine can be used to predict potential failures or malfunctions and allow for preventative maintenance to be performed before an actual failure occurs. Overall, the use of digital twins can help reduce costs, increase efficiency, and improve safety and reliability in a wide range of applications.