预测尼日利亚最佳能源储存和减排潜力的机器学习支持框架

IF 4.2 Q2 ENERGY & FUELS
Stanley Aimhanesi Eshiemogie , Peace Precious Aielumoh , Tobechukwu Okamkpa , Miracle Chinonso Jude , Lois Efe , Andrew Nosakhare Amenaghawon , Handoko Darmokoesoemo , Heri Septya Kusuma
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引用次数: 0

摘要

近来,能源充足和减少碳排放的需求一直是全球努力的重点。因此,本研究采用机器学习支持方法,通过比较尼日利亚到 2050 年的两种电力方案,重点关注电力存储技术的纳入和排除,力求通过整合可再生能源来减少碳排放。使用中央综合设计(CCD)生成设计矩阵以收集数据,并使用 EnergyPLAN 软件在 CCD 数据的基础上针对四项输出创建能源系统模拟:年度总成本、二氧化碳排放、临界过剩发电量(CEEP)和电力进口。三种机器学习(ML)算法--多层感知器(MLP)、极梯度提升(XGBoost)和支持向量回归(SVR)--采用贝叶斯优化方法进行调整,以开发将输入映射到输出的模型。使用遗传算法进行优化,以确定使输出最小化的最佳输入容量。结果表明,采用电力存储技术(EST)可将可再生能源(RES)的比例提高 37%,从而减少 19.14% 的二氧化碳排放量。电池储能系统 (BESS)、车辆到电网 (V2G) 储能和抽水蓄能 (PHS) 等 EST 可以存储随着可再生能源比例增加而产生的关键过剩电力。将 EST 纳入尼日利亚 2050 年的能源格局对于将更多可再生能源纳入能源组合(从而减少二氧化碳排放)和管理过剩电力生产至关重要。本研究概述了满足尼日利亚 2050 年需求的最佳电力生产计划,强调需要采取一种平衡的方法,将化石燃料、可再生能源、核能和先进的存储解决方案结合起来,以实现可持续和高效的电力系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A machine learning-supported framework for predicting Nigeria’s optimal energy storage and emission reduction potentials

A machine learning-supported framework for predicting Nigeria’s optimal energy storage and emission reduction potentials
Energy sufficiency and the need to reduce carbon emissions have always been at the forefront of global efforts in recent times. This is the motivation of this study which seeks to reduce carbon emissions through the integration of renewable energy sources, by comparing two electricity scenarios for Nigeria by 2050, focusing on the inclusion and exclusion of electricity storage technologies, using a machine learning-supported approach. A Central Composite Design (CCD) was used to generate a design matrix for data collection, with EnergyPLAN software used to create energy system simulations on the CCD data for four outputs: total annual cost, CO2 emissions, critical excess electricity production (CEEP), and electricity import. Three machine learning (ML) algorithms— multi-layer perceptron (MLP), extreme gradient boosting (XGBoost), and support vector regression (SVR)—were tuned using Bayesian optimization to develop models mapping the inputs to outputs. A genetic algorithm was used for optimization to determine the optimal input capacities that minimize the outputs. Results indicated that incorporating electricity storage technologies (EST) leads to a 37% increase in renewable electricity sources (RES) share, resulting in a 19.14% reduction in CO2 emissions. EST such as battery energy storage systems (BESS), vehicle-to-grid (V2G) storage, and pumped hydro storage (PHS), allow for the storage of the critical excess electricity that comes with increasing RES share. Integrating EST in Nigeria’s 2050 energy landscape is crucial for incorporating more renewable electricity sources into the energy mix – thereby reducing CO2 emissions – and managing excess electricity production. This study outlines a plan for optimal electricity production to meet Nigeria’s 2050 demand, highlighting the need for a balanced approach that combines fossil fuels, renewable energy, nuclear power, and advanced storage solutions to achieve a sustainable and efficient electricity system.
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来源期刊
Renewable Energy Focus
Renewable Energy Focus Renewable Energy, Sustainability and the Environment
CiteScore
7.10
自引率
8.30%
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审稿时长
48 days
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