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Smart city article details

Title Foundation Models For Transportation Intelligence: Its Convergence In Transverse
ID_Doc 26975
Authors Zhao C.; Dai X.; Lv Y.; Tian Y.; Ren Y.; Wang F.-Y.
Year 2022
Published IEEE Intelligent Systems, 37, 6
DOI http://dx.doi.org/10.1109/MIS.2022.3221342
Abstract Smart cities are our aspiration for a better life where transportation intelligence is indispensable. Recent technological advances in intelligent transportation systems have opened up new possibilities for smart mobility in smart cities. Here we present TengYun, a transportation foundation model designed and developed with parallel learning and federated intelligence for our transportation metaverse called TransVerse. TengYun enables decentralized/distributed autonomous organizations with decentralized/distributed operations, as well as various federated technologies, from federated security, federated control, federated management, federated services, to federated ecology for transportation intelligence in smart cities. An example for a federation of transportation transformers is discussed for illustrating the operating procedure of TengYun. © 2001-2011 IEEE.
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