综合智慧能源 ›› 2026, Vol. 48 ›› Issue (3): 37-46.doi: 10.3969/j.issn.2097-0706.2026.03.004
收稿日期:2025-08-22
修回日期:2026-01-04
出版日期:2026-03-25
通讯作者:
* 王巍(1975),女,教授,博士,从事工业工程、机械工程等方面的研究,vickywong@nefu.edu.cn。作者简介:穆雨彤(2001),女,硕士生,从事联合发电系统低碳优化调度方面的研究,15104660442@163.com。
基金资助:Received:2025-08-22
Revised:2026-01-04
Published:2026-03-25
Supported by:摘要:
联合发电系统可以对分布式电源进行有效管理,降低温室气体排放。然而,现阶段多数研究依旧以经济性为核心目标,对节能减排及相关市场化机制的考虑较为有限,且未能根据最新政策变化对现有机制进行适配性建模,同时,可再生能源的随机性和波动性是亟待解决的问题。因此,提出一种考虑绿证-阶梯碳联合交易机制的“风-光-火-储”联合发电系统优化调度策略,机制设计与模型构建深度耦合:在市场化机制层面,将绿证划分为可交易与不可交易证书,并将其与绿证-阶梯碳联合交易框架深度耦合;在模型构建层面,引入随机机会约束规划刻画可再生能源出力不确定性,构建包含燃气轮机、光伏、风力与储能系统的联合调度模型;在求解层面,提出人工原生动物优化器与粒子群算法融合的APO-PSO混合算法,以提升求解精度与收敛速度。结果表明,所提方法可显著提高可再生能源的利用率,减少碳排放,充分调动储能系统平抑功率波动,削峰填谷,提高电力系统运行的稳定性和经济性。
中图分类号:
穆雨彤, 王巍. 基于APO-PSO的风光火储联合发电系统低碳优化调度[J]. 综合智慧能源, 2026, 48(3): 37-46.
MU Yutong, WANG Wei. Low-carbon optimal scheduling of wind-solar-thermal-storage combined power generation systems based on APO-PSO[J]. Integrated Intelligent Energy, 2026, 48(3): 37-46.
表6
5种情景运行结果
| 情景 | 净收益/元 | 燃气轮机运行成本/元 | 可再生能源发电运维成本/元 | 可再生能源发电弃电罚金/元 | 储能系统运维成本/元 | 购电成 本/元 | 售电收益/元 | CET收益/元 | SCT收益/元 | RECT收益/元 | 可交易REC占比/% |
|---|---|---|---|---|---|---|---|---|---|---|---|
| 1 | 254.88 | 99.55 | 768.97 | 3.95 | 21.54 | 147.17 | 1 296.06 | ||||
| 2 | 465.02 | 72.95 | 768.97 | 3.24 | 31.08 | 151.29 | 1 314.40 | 178.15 | |||
| 3 | 545.13 | 66.55 | 768.97 | 3.12 | 36.09 | 166.72 | 1 334.17 | 252.41 | |||
| 4 | 581.61 | 57.12 | 768.97 | 2.68 | 35.34 | 170.29 | 1 339.52 | 191.97 | 84.52 | 59.40 | |
| 5 | 693.57 | 34.11 | 768.97 | 1.93 | 33.30 | 183.63 | 1 363.50 | 262.41 | 89.60 | 62.97 |
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