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Dispatching optimization model of gas-electricity virtual power plant considering uncertainty based on robust stochastic optimization theory

机译:基于鲁棒随机优化理论的不确定性气电虚拟电厂调度优化模型

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With the rapid development of renewable energy, virtual power plant technology has gradually become a key technology to solve the large-scale development of renewable energy. This paper focuses on the stochastic dispatching optimization of gas-electric virtual power plant (GVPP). Based on this, wind power plant, photovoltaic power generation and convention gas turbines are used as the power generation side of GVPP. Power-to-gas (P2G) equipment and gas storage tank can realize the conversion and storage of electricity-gas energy. Price based demand response and incentive based demand response are introduced into the terminal load side to regulate the user's electricity consumption behavior. GVPP bilaterally connects power network and natural gas network, which realizes the bidirectional flow of electricity-gas energy. Firstly, taking the maximization of economic benefits as the objective function, combined with the constraints of power balance, system reserve and so on, a dispatching optimization model of GVPP participating in multi-energy markets is constructed to determine the operation strategy. Secondly, wind, solar and other clean energy have the characteristics of random and fluctuation, which threaten the stable operation of the system. Therefore, a stochastic dispatching optimization model of GVPP considering wind and solar uncertainty is established based on robust stochastic optimization theory. Thirdly, the evaluation indicators of GVPP operation is determined, which can comprehensively evaluate the economic benefits, environmental benefits and system operation of virtual power plant. Finally, in order to verify the validity and feasibility of the model, a virtual power plant is selected for example analysis. The results show that: (1) After the implementation of price based demand response and incentive based demand response, the system load variance changes from 0.03 to 0.013. Through the comparison of load curves, it is found that demand response can play a role of peak-shaving and valley-filling and smooth the power load curve; (2) Stochastic optimization theory can overcome the uncertainty of wind and solar by setting different robust coefficients F which reflects the ability of the system to withstand risks; (3) The optimization effect after introducing the P2G subsystem makes the amount of abandoned clean energy close to zero. The operation risk of system is reduced, and the carbon emissions are reduced by 370 m(3) too. The market space is expanded from electricity market mainly to natural gas market and carbon trading market. (C) 2019 Elsevier Ltd. All rights reserved.
机译:随着可再生能源的飞速发展,虚拟电厂技术已逐渐成为解决可再生能源大规模发展的关键技术。本文重点研究了气电虚拟电厂(GVPP)的随机调度优化。基于此,风力发电厂,光伏发电和常规燃气轮机被用作GVPP的发电侧。动力燃气(P2G)设备和储气罐可以实现电能的转化和存储。将基于价格的需求响应和基于激励的需求响应引入终端负载侧,以调节用户的用电行为。 GVPP双向连接电网和天然气网络,实现了电能的双向流动。首先,以经济利益最大化为目标函数,结合电力平衡,系统储备等约束条件,构建了参与多能源市场的GVPP调度优化模型,确定了运营策略。其次,风能,太阳能等清洁能源具有随机性和波动性,威胁到系统的稳定运行。因此,基于鲁棒随机优化理论,建立了考虑风电和太阳不确定性的GVPP随机调度优化模型。第三,确定了GVPP运行评价指标,可以对虚拟电厂的经济效益,环境效益和系统运行状况进行综合评价。最后,为了验证模型的有效性和可行性,选择了虚拟电厂进行实例分析。结果表明:(1)实施基于价格的需求响应和基于激励的需求响应后,系统负载方差从0.03变为0.013。通过比较负荷曲线,发现需求响应可以起到削峰填谷的作用,平滑电力负荷曲线。 (2)随机优化理论可以通过设置不同的鲁棒系数F来克服风和太阳的不确定性,该系数F反映了系统承受风险的能力; (3)引入P2G子系统后的优化效果使废弃清洁能源的数量接近于零。系统的运行风险降低了,碳排放也降低了370 m(3)。市场空间主要从电力市场扩展到天然气市场和碳交易市场。 (C)2019 Elsevier Ltd.保留所有权利。

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