Investigating the Energy Production through Sustainable Sources by Incorporating Multifarious Machine Learning Methodologies

Umer Javaid, R. Usman, Ali Javaid
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引用次数: 1

Abstract

Artificial Intelligence (AI) has the potential to revolutionize the way we predict and manage energy generation from solar and wind sources. It can greatly enhance the accuracy and scalability of energy prediction in solar and wind power systems. The implementation of advanced machine learning techniques can optimize the performance of these renewable energy systems and predict the variability of energy production. AI-powered algorithms can analyze data from various sources such as weather forecasts and historical energy production data to predict energy generation with increased precision, allowing for optimization of the system's operation. Furthermore, AI can also predict energy demand and adjust energy production, accordingly, resulting in reduced energy waste and increased system efficiency. As the demand for renewable energy continues to rise, the integration of AI in this field becomes increasingly crucial in ensuring a sustainable and dependable energy future. In this research, we investigate the utilization of AI techniques for evaluating the generation of hydrogen from solar and wind power. The results of this study will provide insight into the potential of AI tools for forecasting hydrogen production from solar and wind energy. The amount of hydrogen produced from solar energy is up to 93.3 × 103kg/km2whereas estimated production from wind is 6.7 kg/day. The comparison of the performance of the different machine learning models used in the study will help to identify the most effective method for forecasting hydrogen production in this context. Additionally, the study aims to contribute to the growing body of knowledge on the application of AI in the field of renewable energy and its potential to improve the efficiency, scalability, and reliability of energy systems.
结合多种机器学习方法,通过可持续资源调查能源生产
人工智能(AI)有可能彻底改变我们预测和管理太阳能和风能发电的方式。它可以大大提高太阳能和风能系统能量预测的准确性和可扩展性。先进的机器学习技术的实施可以优化这些可再生能源系统的性能,并预测能源生产的可变性。人工智能算法可以分析各种来源的数据,如天气预报和历史能源生产数据,以提高预测发电量的精度,从而优化系统的运行。此外,人工智能还可以预测能源需求并相应地调整能源生产,从而减少能源浪费,提高系统效率。随着对可再生能源的需求不断上升,人工智能在这一领域的整合对于确保可持续和可靠的能源未来变得越来越重要。在这项研究中,我们研究了人工智能技术在评估太阳能和风能产氢方面的应用。这项研究的结果将深入了解人工智能工具在预测太阳能和风能产氢方面的潜力。太阳能产氢量高达93.3 × 103千克/平方公里,而风能产氢量估计为6.7千克/天。比较研究中使用的不同机器学习模型的性能将有助于确定在这种情况下预测氢气产量的最有效方法。此外,该研究旨在为人工智能在可再生能源领域的应用以及其提高能源系统的效率、可扩展性和可靠性的潜力方面不断增长的知识体系做出贡献。
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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