考虑发电量预测和实时电价的光伏一体化储能系统基于抽样的模型预测控制

Juan Ospina, N. Gupta, Alvi Newaz, Mario Harper, M. Faruque, Emmanuel G. Collins, R. Meeker, Gwen Lofman
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引用次数: 28

摘要

本文提出了一种新的控制方案,通过开发一个能够基于预测值和实时能源价格控制分布式能源的通用框架,旨在解决本地和并网分布式能源管理问题。该模型采用基于抽样的模型预测控制(SBMPC),结合实时电价、光伏发电和负荷功率预测,在使总成本最小化的前提下对可用分布式能源(DERs)进行分配调度。该策略旨在找到太阳能、电网和储能(ES)电力的理想组合,目标是使整个系统的总能源成本最小化。给出了一个为期7天的测试用例场景的离线和控制器硬件在环(CHIL)结果,并与两个手动基础测试用例和四种基线优化算法(遗传算法(GA)、粒子群优化(PSO)、二次规划内点法(QP-IP)和顺序二次规划(SQP))进行了比较,这些算法旨在解决考虑系统当前状态和未来状态的优化问题。该模型采用24小时预测视界和15分钟控制视界。结果表明,与其他基准控制算法相比,该算法节省了大量的成本和执行时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sampling-Based Model Predictive Control of PV-Integrated Energy Storage System Considering Power Generation Forecast and Real-Time Price
This paper proposes a novel control solution designed to solve the local and grid-connected distributed energy resources (DERs) management problem by developing a generalizable framework capable of controlling DERs based on forecasted values and real-time energy prices. The proposed model uses sampling-based model predictive control (SBMPC), together with the real-time price of energy and forecasts of PV and load power, to allocate the dispatch of the available distributed energy resources (DERs) while minimizing the overall cost. The strategy developed aims to find the ideal combination of solar, grid, and energy storage (ES) power with the objective of minimizing the total cost of energy of the entire system. Both offline and controller hardware-in-the-loop (CHIL) results are presented for a 7-day test case scenario and compared with two manual base test cases and four baseline optimization algorithms (Genetic Algorithm (GA), Particle Swarm Optimization (PSO), Quadratic Programming interior-point method (QP-IP), and Sequential Quadratic Programming (SQP)) designed to solve the optimization problem considering the current status of the system and also its future states. The proposed model uses a 24-hour prediction horizon with a 15-minute control horizon. The results demonstrate substantial cost and execution time savings when compared to the other baseline control algorithms.
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