考虑减排的风电场机组承诺的量子启发二进制粒子群算法

Xiaoshan Wu, Bu-han Zhang, Kui Wang, Junfang Li, Y. Duan
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引用次数: 12

摘要

为了减少大气污染物的排放,节能减排的发电计划是一种必然趋势。本文建立了求解风电场发电系统机组承诺的数学模型,该模型包含一个考虑成本、排放和系统上下旋转备用约束的双目标函数;同时,本文采用量子启发的二进制粒子群算法(QBPSO)求解常规机组开/关问题,采用原始-对偶内点法求解经济负荷调度问题。此外,本文还部署了新的启发式调整规则,以确保整个算法在可行区域内搜索最优粒子。该方法适用于由40台机组组成的24小时需求水平和一定比例的风电场组成的电力系统。仿真结果表明,同时考虑成本和排放,既能保证发电的可靠性和效率,又符合环境要求,使机组承诺结果更加合理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Quantum-inspired Binary PSO algorithm for unit commitment with wind farms considering emission reduction
To reduce air pollutant emissions, generation scheduling with energy conservation and emission reduction is a kind of inevitable trend. The paper builds the mathematical model for solving unit commitment of power system with wind farms, which contains a bi-objective function considering both cost and emissions and up/down spinning reserve constraints of the system; simultaneously, the article uses a Quantum-inspired Binary PSO (QBPSO) for the regular unit on/off problem and the primal-dual interior point method for economic load dispatch problem. In addition, the paper deploys new heuristic adjusted regulations to ensure the whole algorithm to search the optimal particle in the feasible region. The proposed method is applied to power systems which are composed of up to 40-units with 24-h demand horizon and a certain proportion of wind farms. The simulation results show that considering both cost and emissions can not only guarantee the reliability and efficiency of power generation, but also be coincident with the environment requirements, making the unit commitment results more reasonable.
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