Synergizing AI and Blockchain: Innovations in Decentralized Carbon Markets for Emission Reduction through Intelligent Carbon Credit Trading

Luka Baklaga
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Abstract

This study aims to enhance the paradigm of decentralized carbon markets by proposing an innovative integration of artificial intelligence (AI) and blockchain technology for intelligent carbon credit trading with the goal of attaining sustainable emission reduction. Blockchain systems powered by artificial intelligence (AI) have the potential to boost the effectiveness of current systems and expedite the global implementation of emissions trading. Although still in its infancy, blockchain artificial intelligence (AI) presents a promising solution to some of the world's most pressing environmental issues. Environmental sustainability is greatly affected by artificial intelligence because of its decentralized computation architecture. The Artificial Intelligence and blockchain are outstanding direction for today’s environmental issues starting from carbon footprint emission to earth market unstable management, whereby the AI facilitates the best possible operational control of power systems and the blockchain offers decentralized trading platforms for the energy markets. The paper's theoretical framework, based on advanced mathematical models, serves as the foundation for this study, in which AI algorithms are methodically constructed to anticipate carbon emissions with unprecedented accuracy. Using sophisticated coding simulations and complicated mathematical formulas, the study boldly transitions into a realistic digital implementation that builds on this theoretical foundation. This complex experiment not only validates the theoretical ideas but also illustrates the complex relationship between blockchain and AI in the decentralized carbon market ecosystem. This experiment's mathematical basis is the creation of an integrated pricing model that seamlessly blends blockchain-based trading dynamics with AI-driven forecasts. The model incorporates a dynamic, self-adjusting system that responds to current market conditions, in addition to optimizing the pricing calculation of carbon credits. Complex market dynamics, player tactics, and the overall equilibrium of the carbon credit market are all modeled by mathematical simulations. The project goes deeper into building blockchain-based smart contracts, which enable safe and transparent transactions. The comprehensive mathematical results of the experiment shed light on the best way to price carbon credits while underscoring the disruptive potential of blockchain and artificial intelligence in terms of sustainable emission reduction strategies used in carbon markets. Major conclusions about the potential advantages of Blockchain AI for guaranteeing emissions reduction are drawn from the current study. Additionally, it presents a roadmap for future research in this area.
人工智能与区块链的协同作用:去中心化碳市场的创新:通过智能碳信用交易实现减排
本研究旨在通过提出创新性的人工智能(AI)与区块链技术的融合,加强分散式碳市场的范式,实现智能碳信用交易,从而达到可持续减排的目标。由人工智能(AI)驱动的区块链系统有可能提高现有系统的效率,加快全球排放交易的实施。尽管区块链人工智能(AI)仍处于起步阶段,但它为解决世界上一些最紧迫的环境问题提供了一个前景广阔的解决方案。由于人工智能的去中心化计算架构,环境的可持续性受到人工智能的极大影响。人工智能和区块链是解决当今从碳足迹排放到地球市场不稳定管理等环境问题的杰出方向,其中,人工智能促进了电力系统的最佳运行控制,而区块链则为能源市场提供了去中心化的交易平台。本文的理论框架基于先进的数学模型,是本研究的基础,其中人工智能算法有条不紊地构建,以前所未有的准确性预测碳排放。这项研究利用精密的编码模拟和复杂的数学公式,在理论基础上大胆地过渡到现实的数字实现。这个复杂的实验不仅验证了理论观点,还说明了区块链和人工智能在去中心化碳市场生态系统中的复杂关系。该实验的数学基础是创建一个综合定价模型,将基于区块链的交易动态与人工智能驱动的预测无缝融合。除了优化碳信用额的定价计算外,该模型还包含一个动态的、可自我调节的系统,以应对当前的市场状况。复杂的市场动态、玩家策略以及碳信用额市场的整体平衡都是通过数学模拟来建模的。该项目还深入研究了构建基于区块链的智能合约,从而实现安全透明的交易。实验的综合数学结果揭示了碳信用定价的最佳方式,同时强调了区块链和人工智能在碳市场可持续减排战略方面的颠覆性潜力。本研究得出了关于区块链人工智能在保证减排方面的潜在优势的主要结论。此外,本研究还为这一领域的未来研究提供了路线图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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