| Literature DB >> 35845917 |
D Hemanand1, Nilamadhab Mishra2, G Premalatha3, Dinesh Mavaluru4, Amit Vajpayee5, Sumit Kushwaha6, Kibebe Sahile7.
Abstract
Green finance can be referred to as financial investments made on sustainable projects and policies that focus on a sustainable economy. The procedures include promoting renewable energy sources, energy efficiency, water sanitation, industrial pollution control, transportation pollution control, reduction of deforestation, and carbon emissions, etc. Mainly, these green finance initiatives are carried out by private and public agents like business organizations, banks, international organizations, government organizations, etc. Green finance provides a financial solution to create a positive impact on society and leads to environmental development. In the age of artificial intelligence, all industries adopt AI technologies. In this research, we see the applications of the intelligent model to examine the green finance for ecological advancement with regard to artificial intelligence. Feasible transportation and energy proficiency and power transmission are two significant fields to be advanced and focused on minimizing the carbon impression in these industries. Renewable sources like solar energies for power generation and electric vehicles are to be researched and developed. This R&D requires a considerable fund supply, thus comes the green finance. Globally, green finance plays a vital role in creating a sustainable environment. In this research, for performing the green finance analysis, financial maximally filtered graph (FMFG) algorithm is implemented in different domains. The proposed algorithm is compared with the neural model and observed that the proposed model has obtained 98.85% of accuracy which is higher than the neural model.Entities:
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Year: 2022 PMID: 35845917 PMCID: PMC9283008 DOI: 10.1155/2022/2977824
Source DB: PubMed Journal: Comput Intell Neurosci
Figure 1Proposed model of the green finance.
Figure 2The increase in the number of users and also the scale of green finances.
Green financial management classification results.
| Parameter | Customer goods | Healthcare | Industrial | Financial |
|---|---|---|---|---|
| Mean | 8.16 | 8.12 | 8.83 | 7.38 |
| Median | 7.38 | 7.85 | 7.17 | 5.93 |
| Maximum | 9.49 | 9.17 | 8.98 | 7.66 |
| Minimum | 8.35 | 7.33 | 7.94 | 4.53 |
| Standard deviation | 3.38 | 3.68 | 6.85 | 2.36 |
| Correlation of green finance | 88.25 | 94.59 | 83.62 | 80.58 |
Figure 3Performance analysis for affecting proportion of green online finance using WSN with AI.
Performance result analysis for affecting proportion of green online finance variables using WSN with AI.
| Green finance management | Online green finance | Proportion (%) | Average (%) |
|---|---|---|---|
| Customer goods | 8.72 | 7.23 | 90.23 |
| Healthcare | 7.28 | 6.64 | 89.45 |
| Industrial | 7.42 | 5.37 | 88.23 |
| Financial | 6.36 | 5.73 | 92.45 |
Figure 4Performance analysis for processing time of the financial maximally filtered graph algorithm WSN with AI.
Processing time of the algorithm.
| Green finance management | Experiment times (s) | Processing time (s) | Average (%) |
|---|---|---|---|
| Customer goods | 7.76 | 6.23 | 89.23 |
| Healthcare | 6.23 | 5.67 | 86.45 |
| Industrial | 6.46 | 4.35 | 85.23 |
| Financial | 5.34 | 4.78 | 90.45 |
Figure 5Analysis correlation of overlapping green financial management using WSN with AI.
Correlation of overlapping green financial management.
| Parameter | Financial | Stock material | Customer goods | Accuracy |
|---|---|---|---|---|
| Mean | 8.18 | 8.17 | 8.82 | 9.36 |
| Median | 7.39 | 7.89 | 7.72 | 8.92 |
| Maximum | 9.42 | 9.12 | 8.73 | 9.63 |
| Minimum | 8.38 | 7.34 | 7.64 | 8.59 |
| Standard deviation | 3.36 | 3.67 | 5.74 | 7.38 |
| Correlation green finance | 83.29 | 89.59 | 79.47 | 89.54 |
Comparison result analysis for green finance management.
| Algorithm | Training (%) | Testing (%) | Accuracy (%) |
|---|---|---|---|
| Financial maximally filtered graph (FMFG) algorithm | 92.58 | 95.34 | 98.85 |
| Existing method: neural network algorithm | 90.34 | 94.23 | 95.54 |