A Novel Probabilistic Risk-Based Energy Management Model in the Smart MicroGrids

Sobhan Dorahaki, R. Dashti, H. Shaker
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Abstract

Nowadays, the smart MicroGrid (MG) is known as a challenging and interesting concept to effectively solve the problems and issues of the power system. In this paper, a novel probabilistic risk base optimization model has been proposed to manage the operation cost and risk cost of the smart MG. The electrical and thermal Demand Response (DR) has been considered in the proposed structure. The Probability Distribution Function (PDF) has been used to model the uncertainty of the model. Also, the K-means and Mixed Integer Linear Programming (MILP) scenario reduction methods have been used to decrease the number of scenarios. Furthermore, the objective function of the proposed optimization is modeled as MILP. The CPLEX solver in the GAMS environment is used to solve the problem. Results show that the electrical and thermal DR causes a decrease in the risk cost of the smart MG.
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基于概率风险的智能微电网能量管理新模型
目前,智能微电网(MG)被认为是一个具有挑战性和有趣的概念,可以有效地解决电力系统的问题。本文提出了一种基于概率风险的智能自动驾驶汽车运行成本和风险成本优化模型。在提出的结构中考虑了电和热需求响应(DR)。采用概率分布函数(PDF)对模型的不确定性进行了建模。此外,还使用K-means和混合整数线性规划(MILP)场景约简方法来减少场景的数量。进一步,将优化的目标函数建模为MILP。利用GAMS环境下的CPLEX求解器求解该问题。结果表明,电DR和热DR降低了智能MG的风险成本。
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