METHOD AND SYSTEM FOR ADVERSARIAL MULTI-ARCHITECTURE BASED DELAY PREDICTION IN SCHEDULED TRANSPORTATION NETWORKS

The present disclosure predicts a delay associated with a vehicle. Conventional methods are mainly mathematical based and machine learning based networks are not predicting delay accurately. Initially, the present disclosure Initially, the system receives a user query comprising an expected delay of...

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Bibliographische Detailangaben
Hauptverfasser: REGIKUMAR, Rohith, RAMANUJAM, Arvind, JAYAPRAKASH, Rajesh, SATHEESH, Krishnan
Format: Patent
Sprache:eng ; fre ; ger
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Zusammenfassung:The present disclosure predicts a delay associated with a vehicle. Conventional methods are mainly mathematical based and machine learning based networks are not predicting delay accurately. Initially, the present disclosure Initially, the system receives a user query comprising an expected delay of a target vehicle in at least one target station. Further, a real time data associated with the user query in a predefined horizon is obtained. Further, a spatial feature vector, a temporal feature vector and spatiotemporal features are extracted based on the real time data using a feature extraction technique. Finally, the expected is predicted based on the plurality of features using a trained adversarial regression model, wherein the trained adversarial regression model comprises a critic network and a regressor network. The regressor network is trained with a plurality of architectures and a best architecture with minimum Mean Absolute Error (MAE) is selected for delay prediction.