Exploration of cross-border e-commerce and its logistics supply chain innovation and development path for agricultural exports based on deep learning

This paper studies the cross-border e-commerce of agricultural products and its logistics supply chain collaborative management approach, the overall transaction mode and basic content, and proposes a cross-border e-commerce supply chain conceptual model. Aiming at the problems of agricultural produ...

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Main Author: Jin Lijing
Format: Article
Language:English
Published: Sciendo 2024-01-01
Series:Applied Mathematics and Nonlinear Sciences
Subjects:
Online Access:https://doi.org/10.2478/amns.2023.2.01529
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author Jin Lijing
author_facet Jin Lijing
author_sort Jin Lijing
collection DOAJ
description This paper studies the cross-border e-commerce of agricultural products and its logistics supply chain collaborative management approach, the overall transaction mode and basic content, and proposes a cross-border e-commerce supply chain conceptual model. Aiming at the problems of agricultural product supply chains, a method for predicting agricultural product export prices is proposed. The Prophet algorithm under deep learning is utilized to construct the Prophet agricultural product price prediction model for trend, cycle, and holiday terms. Over the introduction of RNN algorithms and LSEM algorithms to optimize the prediction performance of the model, as well as the gradient explosion. On this basis, GRU neural networks are proposed as an improved model of RNN-LSTM. Prediction comparison experiments are designed to empirically analyze agricultural export price prediction and supply chain logistics risk control, and the results of the empirical analysis show that the vegetable export price predicted by using Prophet algorithm during the period of date 2013/4-2013/9 is 2.975, which differs from the actual price by 0.009 yuan, and the margin of error is in the interval of [-0.091,0.014], which is the smallest variation among the three algorithms, which shows that Prophet model has the best performance. After optimizing the FAPSC risk control coefficient, the risk value of supply chain logistics and transportation was successfully reduced from 0.364 to 0.296, and FAPSC effectively minimized the risk.
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spelling doaj.art-9e51f94a185d4e58aca9c3f5ffaaf6e22024-01-29T08:52:44ZengSciendoApplied Mathematics and Nonlinear Sciences2444-86562024-01-019110.2478/amns.2023.2.01529Exploration of cross-border e-commerce and its logistics supply chain innovation and development path for agricultural exports based on deep learningJin Lijing01Department of Entrepreneurship, Yiwu Industrial and Commercial College, Yiwu, Zhejiang, 322000, China.This paper studies the cross-border e-commerce of agricultural products and its logistics supply chain collaborative management approach, the overall transaction mode and basic content, and proposes a cross-border e-commerce supply chain conceptual model. Aiming at the problems of agricultural product supply chains, a method for predicting agricultural product export prices is proposed. The Prophet algorithm under deep learning is utilized to construct the Prophet agricultural product price prediction model for trend, cycle, and holiday terms. Over the introduction of RNN algorithms and LSEM algorithms to optimize the prediction performance of the model, as well as the gradient explosion. On this basis, GRU neural networks are proposed as an improved model of RNN-LSTM. Prediction comparison experiments are designed to empirically analyze agricultural export price prediction and supply chain logistics risk control, and the results of the empirical analysis show that the vegetable export price predicted by using Prophet algorithm during the period of date 2013/4-2013/9 is 2.975, which differs from the actual price by 0.009 yuan, and the margin of error is in the interval of [-0.091,0.014], which is the smallest variation among the three algorithms, which shows that Prophet model has the best performance. After optimizing the FAPSC risk control coefficient, the risk value of supply chain logistics and transportation was successfully reduced from 0.364 to 0.296, and FAPSC effectively minimized the risk.https://doi.org/10.2478/amns.2023.2.01529deep learningprophet algorithmgru neural networkrnn-lstm improvement modelagricultural product exportsams 2010 codes:
spellingShingle Jin Lijing
Exploration of cross-border e-commerce and its logistics supply chain innovation and development path for agricultural exports based on deep learning
Applied Mathematics and Nonlinear Sciences
deep learning
prophet algorithm
gru neural network
rnn-lstm improvement model
agricultural product exports
ams 2010 codes:
title Exploration of cross-border e-commerce and its logistics supply chain innovation and development path for agricultural exports based on deep learning
title_full Exploration of cross-border e-commerce and its logistics supply chain innovation and development path for agricultural exports based on deep learning
title_fullStr Exploration of cross-border e-commerce and its logistics supply chain innovation and development path for agricultural exports based on deep learning
title_full_unstemmed Exploration of cross-border e-commerce and its logistics supply chain innovation and development path for agricultural exports based on deep learning
title_short Exploration of cross-border e-commerce and its logistics supply chain innovation and development path for agricultural exports based on deep learning
title_sort exploration of cross border e commerce and its logistics supply chain innovation and development path for agricultural exports based on deep learning
topic deep learning
prophet algorithm
gru neural network
rnn-lstm improvement model
agricultural product exports
ams 2010 codes:
url https://doi.org/10.2478/amns.2023.2.01529
work_keys_str_mv AT jinlijing explorationofcrossborderecommerceanditslogisticssupplychaininnovationanddevelopmentpathforagriculturalexportsbasedondeeplearning