Elevating sustainability with a multi-renewable hydrogen generation system empowered by machine learning and multi-objective optimization

Q4 Engineering
K. Naveena , Murugaperumal Krishnamoorthy , N. Karuppiah , Pramod Kumar Gouda , Shanmugasundaram Hariharan , K. Saravanan , Ajay Kumar
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引用次数: 0

Abstract

The global energy landscape is rapidly shifting toward cleaner, lower-carbon electricity generation, necessitating a transition to alternate energy sources. Hydrogen, particularly green hydrogen, looks to be a significant solution for facilitating this transformation, as it is produced by water electrolysis with renewable energy sources such as solar irradiations, wind speed, and biomass residuals. Traditional energy systems are costly and produce energy slowly due to unpredictability in resource supply. To address this challenge, this work provides a novel technique that integrates a multi-renewable energy system using multi objective optimization algorithm to meets the machine learning-based forecasted load model. Several forecasting models, including Autoregressive Integrated Moving Average (ARIMA), Random Forest and Long Short-Term Memory Recurrent Neural Network (LSTM-RNN), are assessed for develop the statistical metrics values such as RMSE, MAE, and MAPE. The selected Non-Sorting Moth Flame Optimization (NSMFO) algorithm demonstrates technological prowess in efficiently achieving global optimization, particularly when handling multiple objective functions. This integrated method shows enormous promise in technological, economic, and environmental terms, emphasizing its ability to promote energy sustainability targets.

利用机器学习和多目标优化的多能源制氢系统提升可持续性
全球能源格局正在迅速向更清洁、更低碳的发电方式转变,因此必须向替代能源过渡。氢气,尤其是绿色氢气,看起来是促进这一转变的重要解决方案,因为氢气是利用太阳能辐照、风速和生物质残渣等可再生能源通过水电解产生的。传统能源系统成本高昂,而且由于资源供应的不可预测性,能源生产缓慢。为了应对这一挑战,这项研究提供了一种新技术,利用多目标优化算法整合了多可再生能源系统,以满足基于机器学习的负荷预测模型。对包括自回归综合移动平均(ARIMA)、随机森林和长短期记忆循环神经网络(LSTM-RNN)在内的几种预测模型进行了评估,以开发 RMSE、MAE 和 MAPE 等统计指标值。所选的非排序蛾焰优化(NSMFO)算法在有效实现全局优化方面展示了技术实力,尤其是在处理多个目标函数时。这种综合方法在技术、经济和环境方面显示出巨大的前景,强调了其促进能源可持续发展目标的能力。
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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来源期刊
Measurement Sensors
Measurement Sensors Engineering-Industrial and Manufacturing Engineering
CiteScore
3.10
自引率
0.00%
发文量
184
审稿时长
56 days
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