alexa Abstract | Evaluation of food logistics system based on generalized regression neural network

Journal of Chemical and Pharmaceutical Research
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This paper constructs a food logistics system evaluation model based on generalized regression neural network. It first establishes an evaluation index system for food logistics system and studies the standardization of relevant indexes; then it explores related theories of generalized regression neural network and establishes a food logistics system evaluation model based on generalized regression neural network; finally a fairly satisfying test result is acquired through numerical example examination. The test result shows: the evaluation model proves to be simple and practicable and is effective in evaluating food logistics system. This paper provides food producers with an effective tool to select evaluate and manage food logistics system.

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Author(s): Changming Li and Lihong Guo


Food logistics system, generalized regression neural network, index system, evaluation model, regression

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