Fast Solution Method for the Large-Scale Unit Commitment Problem with Long-Term Storage

Bo Li;Chunjie Qin;Ruotao Yu;Wei Dai;Mengjun Shen;Ziming Ma;Jianxiao Wang
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Abstract

Long-term storage (LTS) can provide various services to address seasonal fluctuations in variable renewable energy by reducing energy curtailment. However, long-term unit commitment (UC) with LTS involves mixed-integer programming with large-scale coupling constraints between consecutive intervals (state-of-charge (SOC) constraint of LTS, ramping rate, and minimum up/down time constraints of thermal units), resulting in a significant computational burden. Herein, an iterative-based fast solution method is proposed to solve the long-term UC with LTS. First, the UC with coupling constraints is split into several sub problems that can be solved in parallel. Second, the solutions of the sub problems are adjusted to obtain a feasible solution that satisfies the coupling constraints. Third, a decoupling method for long-term time-series coupling constraints is proposed to determine the global optimization of the SOC of the LTS. The price-arbitrage model of the LTS determines the SOC boundary of the LTS for each sub problem. Finally, the sub problem with the SOC boundary of the LTS is iteratively solved independently. The proposed method was verified using a modified IEEE 24-bus system. The results showed that the computation time of the unit combination problem can be reduced by 97.8%, with a relative error of 3.62%.
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具有长期存储的大型机组投用问题的快速求解方法
长期储能(LTS)可以提供各种服务,通过减少弃电来解决可变可再生能源的季节性波动问题。然而,LTS的长期单元承诺(UC)涉及混合整数规划,并且在连续区间(LTS的荷电状态(SOC)约束、升温速率和热单元的最小上下时间约束)之间存在大规模耦合约束,导致了巨大的计算负担。在此基础上,提出了一种基于迭代的快速求解方法。首先,将具有耦合约束的统一通信问题分解为若干可以并行解决的子问题。其次,对子问题的解进行调整,得到满足耦合约束的可行解;第三,提出了一种长期时间序列耦合约束的解耦方法,以确定LTS SOC的全局优化。LTS的价格套利模型确定了LTS子问题的SOC边界。最后,独立迭代求解了LTS的SOC边界子问题。采用改进的IEEE 24总线系统对该方法进行了验证。结果表明,该方法可将单元组合问题的计算时间缩短97.8%,相对误差为3.62%。
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来源期刊
Chinese Journal of Electrical Engineering
Chinese Journal of Electrical Engineering Energy-Energy Engineering and Power Technology
CiteScore
7.80
自引率
0.00%
发文量
621
审稿时长
12 weeks
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