Fresh agricultural product data mining integration system based on big data analysis

A data mining and data analysis module technology, applied in the field of big data algorithms, can solve the problems of vegetable picking and sales not being as good as dumping, information unequal, sales volume restrictions, etc., to achieve the effect of avoiding supply and demand contradictions, solving supply and demand contradictions, and expanding competitiveness

Pending Publication Date: 2022-03-22
江苏业派生物科技有限公司
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  • Abstract
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  • Application Information

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Problems solved by technology

[0002] Fresh agricultural products refer to fresh vegetables, fruits, aquatic products, poultry and livestock and their meat products that are closely related to residents’ lives, because there are many links in the whole process of fresh agricultural products from production to purchase, transportation, storage, wholesale, and retail. It is difficult to be managed as a whole; take vegetables as an example, the seasonality of fresh agricultural products, and fresh vegetables need to be constantly in season throughout the year, resulting in unsustainable procurement; at the same time, the information is not equal between the wholesale market, transportation and vegetable farmers, resulting in There is a contradiction between supply and demand. Due to the limitation of the sales volume of vegetable stalls, there are even rejections of vegetables, and the dumping of vegetables is not as good as picking and selling;
[0003] In recent years, people have tried many methods to solve the problems of fresh agricultural products, limited to scattered planting areas and scattered purchases. People mostly optimize logistics and transportation, such as optimizing transportation routes through genetic algorithms; The sales channels of dishes and the inflated prices of vegetables in cities have not substantially solved the problem of the contradiction between supply and demand.

Method used

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  • Fresh agricultural product data mining integration system based on big data analysis
  • Fresh agricultural product data mining integration system based on big data analysis
  • Fresh agricultural product data mining integration system based on big data analysis

Examples

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Embodiment 2

[0122] Example 2: Taking pears as an example, through the fuzzy prediction module, the local demand of 90 tons in September next year is obtained, and the price is 2 yuan. The difference between the sales end of A is 0.2 yuan through the fuzzy prediction module. At time t, the pricing calculation of the pear forecast The formula is: y(t)=p(t)+εt, and the final price of pears at the sales end of A is 2.2 yuan;

[0123] Through the fuzzy forecasting module, the difference value of sales end B is -0.1 yuan. At time t, the pricing calculation formula for pear prediction at sales end A is: y(t)=p(t)+εt, and the final price of pears at sales end B is 1.9 yuan;

[0124] Vegetable farmer 1 is 20 kilometers away from sales terminal A and 10 kilometers away from sales terminal B. The value of K is 0.03, and a is 0.1. The formula for calculating the transportation cost is: T(d)=K*d+a, and the calculation can be obtained: Vegetable farmer 1 transportation The transportation cost to A sal...

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Abstract

The invention discloses a big data analysis-based fresh agricultural product data mining integration system, and belongs to the technical field of big data algorithms. According to the invention, the price and demand are predicted through the pricing and demand model, and market information is mastered in advance; the pricing prediction module helps the sales end to accurately price, so that the competitiveness of the sales end in price is improved; the vegetable farmer end can visually see the purchase price provided by the sales end, so that the vegetable farmer end can conveniently find the sales end with a proper price and make a transaction choice; based on market demands and sales conditions of fresh agricultural products in the last year, planting planning recommendation is given to avoid contradiction between supply and demand, and a certain selection right of planting types of vegetable farmers is reserved while planting planning is regulated and controlled; the system fully solves the supply and demand contradiction of fresh agricultural products, retains the selection of a vegetable farmer terminal for a sales terminal and planting, and fully guarantees the benefits of the vegetable farmer terminal and the sales terminal.

Description

technical field [0001] The invention relates to the technical field of big data algorithms, in particular to a data mining and integration system for fresh and live agricultural products based on big data analysis. Background technique [0002] Fresh agricultural products refer to fresh vegetables, fruits, aquatic products, poultry and livestock and their meat products that are closely related to residents’ lives, because there are many links in the whole process of fresh agricultural products from production to purchase, transportation, storage, wholesale, and retail. It is difficult to be managed as a whole; take vegetables as an example, the seasonality of fresh agricultural products, and fresh vegetables need to be constantly in season throughout the year, resulting in unsustainable procurement; at the same time, the information is not equal between the wholesale market, transportation and vegetable farmers, resulting in There is a contradiction between supply and demand...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06Q30/02G06Q50/02G06Q10/08G06N3/04G06N3/08
CPCG06Q30/0206G06Q30/0201G06Q50/02G06N3/04G06N3/08G06Q10/083G06N3/048
Inventor 管雨卞晓明马随随
Owner 江苏业派生物科技有限公司
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