METHOD, DEVICE, COMPUTER PROGRAM, AND COMPUTER-READABLE STORAGE MEDIUM FOR DETERMINING A NEURAL NETWORK AND FOR OPERATING A VEHICLE
A method, and a corresponding device and computer, determine a neural network configured to process temporal dependencies. The method includes providing input training data that comprises identification information of messages of a vehicle bus of a vehicle and information with respect to time interv...
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creator | Schlegel, Bernhard Reinisch, Philipp Aladawy, Dina Khaled Saber Amin |
description | A method, and a corresponding device and computer, determine a neural network configured to process temporal dependencies. The method includes providing input training data that comprises identification information of messages of a vehicle bus of a vehicle and information with respect to time intervals between the messages. The messages were transmitted in a first predetermined time period via the vehicle bus. The method also includes providing output training data that is representative of a bus load of the vehicle bus in a second predetermined time period, wherein the second predetermined time period is arranged temporally after the first predetermined time period. The method further includes determining the neural network as a function of the input training data and the output training data, and storing the determined neural network as a pre-trained neural network. |
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subjects | CALCULATING COMPUTER SYSTEMS BASED ON SPECIFIC COMPUTATIONAL MODELS COMPUTING COUNTING PHYSICS |
title | METHOD, DEVICE, COMPUTER PROGRAM, AND COMPUTER-READABLE STORAGE MEDIUM FOR DETERMINING A NEURAL NETWORK AND FOR OPERATING A VEHICLE |
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