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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Optimal Capacity Allocation of Energy Storage System considering Uncertainty of Load and Wind Generation
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Optimal Capacity Allocation of Energy Storage System considering Uncertainty of Load and Wind Generation

机译:考虑负载和风发电不确定性的能量存储系统的最佳容量分配

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Energy storage systems (ESSs) are promising solutions for the mitigation of power fluctuations and the management of load demands in distribution networks (DNs). However, the uncertainty of load demands and wind generations (WGs) may have a significant impact on the capacity allocation of ESSs. To solve the problem, a novel optimal ESS capacity allocation scheme for ESSs is proposed to reduce the influence of uncertainty of both WG and load demands. First, an optimal capacity allocation model is established to minimize the ESS investment costs and the network power loss under constraints of DN and ESS operating points and power balance. Then, the proposed method reduces the uncertainty of load through a comprehensive demand response system based on time-of-use (TOU) and incentives. To predict the output of WGs, we combined particle swarm optimization (PSO) and backpropagation neural network to create a prediction model of the wind power. An improved simulated annealing PSO algorithm (ISAPSO) is used to solve the optimization problem. Numerical studies are carried out in a modified IEEE 33-node distribution system. Simulation results demonstrate that the proposed model can provide the optimal capacity allocation and investment cost of ESSs with minimal power losses.
机译:能量存储系统(ESS)是对电力波动缓解和配送网络中负载需求的管理的有希望的解决方案。然而,负载需求和风力代(WG)的不确定性可能对ESS的能力分配产生重大影响。为了解决问题,提出了一种新的ESSS体能分配方案,以减少WG和负载需求的不确定性的影响。首先,建立了最佳容量分配模型,以最大限度地减少ESS投资成本和DN和ESS运行点和功率平衡的约束下的网络功率损失。然后,所提出的方法通过基于使用时间(tou)和激励措施来减少通过综合需求响应系统的负荷的不确定性。为了预测WG的输出,我们组合粒子群优化(PSO)和BackPropagation神经网络以创建风力的预测模型。改进的模拟退火PSO算法(ISAPSO)用于解决优化问题。在修改的IEEE 33节点分配系统中进行数值研究。仿真结果表明,所提出的模型可以提供具有最小功率损耗的ESS的最佳容量分配和投资成本。

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