Performance analysis of machine learning based prediction models in assessing optimal operation of microgrid under uncertainty

Q3 Mathematics
Sukriti Patty, Tanmoy Malakar
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Abstract

Of late, the exponential rise in the global population is driving higher energy demand. However, the rapid depletion of conventional fossil fuels and growing environmental concerns have prompted the evolution of alternative energy sources. To this end, Microgrid (MG) with Renewable Energy Sources (RES) has emerged as popular means of small-scale localized power grid. However, planning of MG operation poses challenges due to the inherent variability and stochasticity in RES power output and energy demand. On account of this, the present study introduces a Stochastic Energy Management Strategy (SEMS) for a grid-connected MG incorporating Micro-Turbine, Fuel-Cell, RES, Battery Energy Storage, and electrical and heat energy demand. The stochasticity of RES is forecasted through a hybrid prediction model (sARIMA-GRU) and the uncertain demand is estimated via 'Monte Carlo Simulation.' The proposed problem is formulated as a dynamic non-linear stochastic optimization problem. It seeks to minimize the expected value of MG operational cost satisfying the practical constraints. Addressing this, a newly developed ‘Artificial Electric Field Algorithm (AEFA)' is utilized. Several case studies are performed to assess MG operation under varied operating conditions. Moreover, the present study analyses the impact of uncertainty on energy contribution from DER, grid dependency, and MG operation cost. Comparative analysis reveals that sARIMA-GRU outperforms other contemporary prediction models. It is noteworthy that the superior prediction accuracy of sARIMA-GRU leads to lower MG operation costs. Moreover, statistical analysis and convergence confirm the proficiency of applied AEFA over state-of-the-art Grey Wolf Optimization and Firefly Algorithm in solving the proposed problem.

基于机器学习的预测模型在评估不确定情况下微电网优化运行中的性能分析
近来,全球人口的指数式增长推动了能源需求的增长。然而,传统化石燃料的迅速枯竭和人们对环境问题的日益关注,促使人们不断开发替代能源。为此,采用可再生能源(RES)的微电网(MG)已成为小规模本地化电网的流行方式。然而,由于可再生能源电力输出和能源需求固有的多变性和随机性,微电网的运行规划面临挑战。有鉴于此,本研究为并网的 MG 引入了一种随机能源管理策略(SEMS),其中包含微型涡轮机、燃料电池、可再生能源、电池储能以及电能和热能需求。可再生能源的随机性通过混合预测模型(sARIMA-GRU)进行预测,不确定需求则通过 "蒙特卡罗模拟 "进行估算。提出的问题是一个动态非线性随机优化问题。该问题旨在最大限度地降低 MG 运营成本的预期值,同时满足实际约束条件。为此,我们采用了新开发的 "人工电场算法 (AEFA)"。本研究进行了多项案例研究,以评估在不同运行条件下的制动齿轮箱运行情况。此外,本研究还分析了不确定性对 DER 能源贡献、电网依赖性和 MG 运行成本的影响。对比分析表明,sARIMA-GRU 优于其他当代预测模型。值得注意的是,sARIMA-GRU 的卓越预测精度降低了 MG 的运营成本。此外,统计分析和收敛性证实,在解决所提问题时,应用 AEFA 比最先进的灰狼优化算法和萤火虫算法更有效。
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
Results in Control and Optimization
Results in Control and Optimization Mathematics-Control and Optimization
CiteScore
3.00
自引率
0.00%
发文量
51
审稿时长
91 days
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