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Optimal Sizing and Selection of Energy Storage System Considering Load Uncertainty

机译:考虑负荷不确定性的储能系统优化选型与选择

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Energy storage can play an important role by storing the surplus energy and discharging it whenever required maintaining the demand supply balance. Deploying energy storage helps in restoring the imbalance in the grid due to the integration of renewable energy sources and aids in proper utilization of these sources by minimizing the wastage of surplus energy generated at times. Energy storage systems have mostly flexible capacity and it is important to utilize an optimal capacity of the storage system for proper functioning, stability of the system and also for enhanced economic benefits by minimization of total cost of the system. In this paper, to obtain the optimal size of the energy storage system, its operation is worked out as an optimization problem with an objective function of minimization of cost of the system considering different operational constraints. The optimization model is formulated as a Nonlinear programming (NLP) model in a 24-hour time frame. It is tested with the hourly generation of a solar farm and the load demand along with other operational parameters of the storage system. It is important to select suitable energy storage system considering different technical aspects and cost of the system as per the service requirements. Two different energy storage systems have been considered in the study. The results obtained with the sizing model with the respective storage system are stated. Load uncertainty is a major uncertainty in power systems, to see the impact of the uncertain load in the sizing of the storage system, probabilistic load for 24 hours is generated using Monte Carlo Simulation (MCS) considering Normal Probability density function and fed to the sizing model as inputs. The optimization problem is solved using GAMS optimization platform. The results obtained with both the normal load and the probabilistic load are compared and studied. Difference in results is observed for both the cases. It is seen that the probabilistic load offers a realistic study on the impact of varying load demand on the sizing model of the storage system.
机译:通过存储多余的能量并在需要时保持必要的供需平衡,将多余的能量释放出来,能量存储可以发挥重要作用。部署能量存储有助于恢复由于整合可再生能源而导致的电网不平衡,并通过最大限度地减少有时产生的多余能源的浪费来帮助适当利用这些能源。能量存储系统主要具有灵活的容量,因此对于系统的正常运行,系统的稳定性以及通过最小化系统的总成本来提高经济效益,利用存储系统的最佳容量非常重要。在本文中,为了获得最佳的储能系统尺寸,将其运行作为优化问题进行了研究,其目标功能是在考虑不同运行约束的情况下将系统成本降至最低。该优化模型被公式化为24小时内的非线性规划(NLP)模型。它是按每小时发电的太阳能发电场,负载需求以及存储系统的其他运行参数进行测试的。根据服务要求,考虑不同的技术方面和系统成本,选择合适的储能系统非常重要。研究中考虑了两种不同的储能系统。陈述了使用相应存储系统的规模模型获得的结果。负载不确定性是电力系统中的主要不确定性,要查看不确定负载对存储系统规模的影响,使用蒙特卡洛模拟(MCS)会考虑正常概率密度函数来生成24小时的概率负载,并将其馈入规模模型作为输入。使用GAMS优化平台解决了优化问题。对正常载荷和概率载荷的结果进行了比较和研究。在两种情况下都观察到结果差异。可以看出,概率负载对变化的负载需求对存储系统规模模型的影响提供了现实的研究。

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