人工智能增强型可再生能源系统生命周期评估

Kelvin Edem Bassey, Ayanwunmi Rebecca Juliet, Akindipe O. Stephen
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引用次数: 0

摘要

随着全球对可再生能源的大力推广,全面评估可再生能源系统在整个运行生命周期中对环境的影响和可持续性已成为当务之急。传统的生命周期评估(LCA)方法虽然有用,但往往无法处理与可再生能源系统相关的复杂动态数据。本研究探讨了人工智能(AI)和机器学习(ML)技术在加强风能、太阳能和绿色氢能系统生命周期评估中的应用,旨在提供更准确、高效和全面的评估。人工智能驱动的生命周期评估模型利用了可再生能源系统生命周期各个阶段的大量数据集,包括原材料提取、制造、安装、运行、维护和退役。通过采用 ML 算法,这些模型可以识别数据中的模式和关系,预测潜在的环境影响,并深入了解随着时间推移的可持续性表现。研究的重点是开发和验证包含各种数据输入(如材料使用、能源消耗、排放和废物产生)的 ML 模型。这些模型使用来自多个可再生能源项目的历史数据进行训练,能够适应新的数据输入,确保不断提高评估的准确性。主要研究结果表明,人工智能增强型生命周期评估模型大大提高了环境影响评估的精度和深度。对于风能系统,人工智能模型有助于预测涡轮机的使用寿命和维护需求,从而优化资源利用,最大限度地减少对环境的影响。在太阳能系统中,人工智能技术有助于预测降解率和能源产量,从而促进更可持续的设计和运行。在绿色制氢方面,ML 模型可以优化电解过程,评估氢供应链的整体可持续性。将人工智能融入生命周期评估有助于实时监控和动态调整,确保可再生能源系统以最高的可持续性运行。这种方法不仅能提高单个系统的环境绩效,还能支持可再生能源部署和政策制定方面的战略决策。总之,在生命周期评估中应用人工智能和 ML 技术为评估可再生能源系统的环境影响和可持续性提供了一种变革性方法。这项研究强调了先进分析技术在推动全球向可持续能源过渡中的关键作用,并呼吁进一步探索和采用人工智能驱动的生命周期评估方法。关键词机器学习、可再生能源系统、环境影响、可持续性、人工智能增强生命周期。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AI-Enhanced lifecycle assessment of renewable energy systems
As the global push towards renewable energy intensifies, it becomes imperative to comprehensively assess the environmental impacts and sustainability of renewable energy systems throughout their operational lifecycle. Traditional lifecycle assessment (LCA) methods, while useful, often fall short in handling the complex, dynamic data associated with renewable energy systems. This study explores the application of artificial intelligence (AI) and machine learning (ML) techniques to enhance lifecycle assessments of wind, solar, and green hydrogen energy systems, aiming to provide more accurate, efficient, and comprehensive evaluations. AI-driven LCA models leverage extensive datasets from various stages of the lifecycle of renewable energy systems, including raw material extraction, manufacturing, installation, operation, maintenance, and decommissioning. By employing ML algorithms, these models can identify patterns and relationships within the data, predict potential environmental impacts, and provide insights into sustainability performance over time. The research focuses on developing and validating ML models that incorporate diverse data inputs such as material usage, energy consumption, emissions, and waste generation. These models are trained using historical data from multiple renewable energy projects and are capable of adapting to new data inputs, ensuring continuous improvement in assessment accuracy. Key findings demonstrate that AI-enhanced LCA models significantly improve the precision and depth of environmental impact assessments. For wind energy systems, ML models help in predicting turbine lifespan and maintenance needs, thereby optimizing resource use and minimizing environmental footprints. In solar energy systems, AI techniques assist in forecasting degradation rates and energy yield, contributing to more sustainable design and operation. For green hydrogen production, ML models optimize the electrolysis process and assess the overall sustainability of hydrogen supply chains. The integration of AI in LCA facilitates real-time monitoring and dynamic adjustments, ensuring that renewable energy systems operate at peak sustainability. This approach not only enhances the environmental performance of individual systems but also supports strategic decision-making in renewable energy deployment and policy development. In conclusion, the application of AI and ML techniques in lifecycle assessment offers a transformative approach to evaluating the environmental impact and sustainability of renewable energy systems. This research underscores the critical role of advanced analytics in advancing the global transition to sustainable energy and calls for further exploration and adoption of AI-driven LCA methodologies. Keywords: Machine Learning, Renewable Energy Systems, Environmental Impact, Sustainability, AI-Enhanced Lifecycle.
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