Method and system for solving Hamiltonian shortest path based on neural combinatorial optimizer

The invention provides a method and system for solving the shortest Hamiltonian path based on a neural combinatorial optimizer, and relates to the technical field of intelligent calculation and path planning, and the method comprises the steps: designing a shortest Hamiltonian path problem framework...

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Bibliographic Details
Main Authors JIANG ZENGHUI, GUO HONGWEI, LIANG HELAN, LI FANCHANG
Format Patent
LanguageChinese
English
Published 23.01.2024
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Summary:The invention provides a method and system for solving the shortest Hamiltonian path based on a neural combinatorial optimizer, and relates to the technical field of intelligent calculation and path planning, and the method comprises the steps: designing a shortest Hamiltonian path problem framework; designing a neural combination optimizer model based on the encoder-decoder structure; hamiltonian problem instances used for training the neural combination optimizer are randomly generated, and data of all the problem instances are preprocessed through a minimum-maximum normalization and rotation coordinate transformation strategy; inputting the processed data into the neural combination optimizer model for training, and performing optimization by adopting a bidirectional strategy gradient function to obtain a trained neural combination optimizer model; and solving the shortest Hamiltonian path problem containing N nodes by using the trained neural combination optimizer model to obtain an optimal Hamiltonian pa
Bibliography:Application Number: CN202311488722