Data-Driven Distributionally Robust Operation of Distribution Networks with Ramping Flexibility

M. R. Feizi, Abdulraheem H. Alobaidi, M. Khodayar
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Abstract

The increase in the generation capacity of the variable renewable resources and electricity demand introduces new operational challenges to the unbalanced three-phase distribution networks. This paper addresses the uncertainty associated with the ramping of net demand using a data-driven approach. A continuous-time optimization problem is reformulated to a linear programming problem using Bernstein polynomials. A distributionally robust optimization problem is formulated to capture the worst-case probability distribution of the net demand, which includes the demand and the PV generation. The solution to the distributionally robust operation of the unbalanced distribution network is compared to that of the stochastic programming problem in which the uncertainty associated with the net demand ramp is captured using scenarios. The developed formulated problem is validated using a modified IEEE 13-bus unbalanced distribution system. The impact of ramp limits of the main feeder on the expected operation cost of the distribution network is investigated.
基于数据驱动的配电网络鲁棒运行
可变可再生能源发电容量的增加和电力需求的增加给不平衡的三相配电网带来了新的运行挑战。本文使用数据驱动的方法解决了与净需求增长相关的不确定性。利用伯恩斯坦多项式将连续时间优化问题转化为线性规划问题。建立了一个分布鲁棒优化问题,以捕获净需求的最坏概率分布,其中包括需求和光伏发电。将不平衡配电网的分布鲁棒性运行问题与随机规划问题的解决方案进行了比较,其中随机规划问题使用场景捕获与净需求斜坡相关的不确定性。利用改进的IEEE 13总线不平衡配电系统验证了所建立的公式问题。研究了主馈线坡道限制对配电网预期运行成本的影响。
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