A production-inventory model to optimize the operation of distributed energy resource networks in a rolling horizon.

IF 3.4 3区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES Heliyon Pub Date : 2024-10-30 eCollection Date: 2024-11-15 DOI:10.1016/j.heliyon.2024.e39900
Pablo Cortés, Alejandro Escudero-Santana, Elena Barbadilla-Martin, José Guadix
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Abstract

The recent advancements in energy production, storage, and distribution are creating unprecedented opportunities in the field. Major consumers can benefit from the implementation of distributed energy resource networks capable of generating electricity or heating from sources, often renewable ones, in close proximity to the point of use, rather than relying on centralized generation sources from power plants. In this paper, we introduce a pioneering model designed to determine the optimal set of energy commands in a distributed energy resource network, minimizing operational costs in a time horizon. Indeed, we propose an innovative mixed-integer linear programming formulation rooted in the production-inventory models commonly employed in aggregate production planning. The system integrates diverse energy generation sources, storage facilities, and demand points, encompassing both electric and heating commodities. The optimum of the model is achieved for all analyzed instances of the test library (2 scenarios-20 instances) in an exceptionally short time, outperforming other approaches previously presented in the literature. We employed the Gurobi optimizer to solve the model, obtaining rapid responses that ensure real-time decision-making and facilitate effective control of the distributed energy resource network within a three-days' rolling horizon, as discussed in a simulated real-life application case study. Indeed, the proposed model solves in less than 1 s, enabling near-instantaneous decision-making. This swift solution time surpasses any known references in the field, effectively shifting the bottleneck in DER network operation from the decision-making process to the forecasting of demand and weather conditions. While forecasting typically requires a minimum of 15 min, our approach suggests that a reduction in this forecasting time could further enhance the control system's response time, given the model's ability to deliver optimal solutions almost immediately. The real-time availability of optimal solutions allows for the seamless incorporation of stochastic elements into the control loop via a rolling horizon process.

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在滚动范围内优化分布式能源资源网络运行的生产库存模型。
能源生产、储存和分配领域的最新进展为该领域带来了前所未有的机遇。分布式能源资源网络能够就近利用可再生能源发电或供热,而不是依赖发电厂的集中式发电资源,这将使主要消费者受益。在本文中,我们介绍了一个开创性的模型,旨在确定分布式能源资源网络中的最佳能源指令集,最大限度地降低时间范围内的运营成本。事实上,我们提出了一种创新的混合整数线性规划方法,该方法植根于总体生产规划中常用的生产-库存模型。该系统集成了各种能源发电、存储设施和需求点,包括电力和供热商品。对于测试库中的所有分析实例(2 个场景-20 个实例),该模型都能在极短的时间内达到最优,优于之前文献中介绍的其他方法。我们采用了 Gurobi 优化器来求解模型,获得了快速响应,确保了实时决策,促进了分布式能源资源网络在三天滚动范围内的有效控制,这在模拟现实应用案例研究中进行了讨论。事实上,拟议模型的求解时间不到 1 秒,几乎可以实现即时决策。这种快速的求解时间超过了该领域任何已知的参考值,有效地将 DER 网络运行的瓶颈从决策过程转移到了需求和天气条件的预测上。虽然预测通常至少需要 15 分钟,但我们的方法表明,由于模型能够几乎立即提供最优解决方案,因此缩短预测时间可以进一步提高控制系统的响应速度。最佳解决方案的实时可用性允许通过滚动视界过程将随机因素无缝纳入控制环路。
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来源期刊
Heliyon
Heliyon MULTIDISCIPLINARY SCIENCES-
CiteScore
4.50
自引率
2.50%
发文量
2793
期刊介绍: Heliyon is an all-science, open access journal that is part of the Cell Press family. Any paper reporting scientifically accurate and valuable research, which adheres to accepted ethical and scientific publishing standards, will be considered for publication. Our growing team of dedicated section editors, along with our in-house team, handle your paper and manage the publication process end-to-end, giving your research the editorial support it deserves.
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