| Literature DB >> 36267552 |
He Wu1, Xuancheng Zhang2, Yiqin Wang3.
Abstract
Today, with the rapid development of the Internet, society has entered the era of "information explosion." Financial data are a particularly important part of network information, and it has also reached a new level of public demand. The frequent appearance of words such as "carbon peak" and "green" indicates the transition of national policies to the field of sustainable development. Sustainable development would become an inevitable choice, and a green supply chain has become a new trend under this policy background. Supply chain finance uses the ideas and methods of key supply management to provide financial services to related enterprises. If an enterprise cannot acquire, organize, and use the information and data in the supply chain, it is likely to be outdated or even abandoned in the short term. This paper takes the artificial intelligence green financial system as the background and uses the cooperation theory model to analyze and predict the big data information of the enterprise supply chain. It realizes the transformation of information into sustainable resources for enterprises and releases the huge potential of big data. In this model, this model not only helped the company's overall profit increase by about 8.79% but also provided scientific support for corporate decision-making and promoted the development of the company.Entities:
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Year: 2022 PMID: 36267552 PMCID: PMC9578908 DOI: 10.1155/2022/3065435
Source DB: PubMed Journal: J Environ Public Health ISSN: 1687-9805
Figure 1Role of big data analysis.
Figure 2Applications of big data analysis in the supply chain.
Figure 3Application of big data analysis in the supply chain of different industries.
Application of big data in the supply chain of banking, science and technology, medical care, consumption, energy, and manufacturing industries.
| Data processing mode | Commercial value | |
|---|---|---|
| Banking/Finance | Market evaluation new product risk assessment | Increase market value, improve customer loyalty, increase overall revenue, and reduce financial risk |
| High-tech | Comprehensive product analysis, patent record retrieval, smart device global positioning location service | Optimize products, design and manufacture to reduce warranty costs, and speed up problem-solving |
| Medical care | Shared medical records, accelerated diagnosis, and telemedicine | Improved diagnostic quality to speed up diagnosis and treatment |
| Consumption | Precise promotion behavior analysis | Promote customer buying enthusiasm and comply with customers' buying habits |
| Energy | Centralized analysis of sensor array data in exploration and drilling | Reduce accident risk and optimize the exploration process |
The strategic combination between core enterprises and upstream SMEs.
| Middle and upstream enterprises | |||
|---|---|---|---|
| Action | No action | ||
| Core Enterprise | Guarantee | (Action, Guarantee) | (No Action, Guarantee) |
| No guarantee | (Action, No guarantee) | (No Action, No guarantee) | |
Figure 4Replication dynamic phase diagram of the core enterprise group.
Figure 5Phase diagram of replication dynamics of SME groups.
Figure 6Evolutionary trajectory map between core enterprises and their upstream SMEs in the supply chain.