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首页> 外文期刊>Engineering Applications of Artificial Intelligence >Multi-time slots real-time pricing strategy with power fluctuation caused by operating continuity of smart home appliances
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Multi-time slots real-time pricing strategy with power fluctuation caused by operating continuity of smart home appliances

机译:多时隙实时定价策略,具有由智能家电的操作连续性引起的功率波动

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摘要

Demand side management aims to match power demand to supply through cutting the peak and filling the valley, is one of the most important factors in smart grid. The real-time pricing (RTP) mechanism is an ideal method to adjust power balance between supply and demand. Its implementation has a profound impact on users’ behavior, and on operation and management of the power grid. In this research, we propose an expectation social welfare maximization model, considering the classification of the smart home appliances (SHA) and the correlation of power consumption of multi-time slots. Users can arrange their appliances more profitable and more closely to reality with the advantage of multi-time slots RTP strategy. The constraint in the model reflects the fluctuation (uncertainty) of power consumption caused by operating continuity of the SHA. By introducing probabilistic constraints, the uncertainty optimization model is transformed into a convex optimization problem. The existence and uniqueness of the optimal solution are shown, and its properties are further analyzed. Considering the convex optimization problem is separable in dual domain, this study proposes a decentralized online RTP algorithm to determine each user’s demand and energy supplier’s supply simultaneously. By utilizing Armijo line search to instead of fixed step size of the dual subgradient method, the decentralized online RTP algorithm proposed in this research can overcome the defects of slow convergence and even no convergence from the original dual subgradient method. Finally, the simulation validates the rationality and feasibility of optimization model by the decentralized online RTP algorithm.
机译:需求侧管理旨在通过削减峰值和填充谷底来满足电力需求,这是智能电网中最重要的因素之一。实时定价(RTP)机制是调整供需之间电力平衡的理想方法。它的实施对用户的行为以及电网的运营和管理产生深远的影响。在这项研究中,我们提出了一个期望的社会福利最大化模型,该模型考虑了智能家电(SHA)的分类以及多时隙功耗的相关性。利用多时隙RTP策略,用户可以将其设备安排得更有利可图,并且更加贴近现实。模型中的约束反映了由SHA的运行连续性引起的功耗波动(不确定性)。通过引入概率约束,将不确定性优化模型转化为凸优化问题。给出了最优解的存在性和唯一性,并对其性质进行了进一步分析。考虑到凸优化问题在双域中是可分离的,本研究提出了一种分散式在线RTP算法,可同时确定每个用户的需求和能源供应商的供应。通过使用Armijo线搜索代替双重次梯度方法的固定步长,本研究提出的分散在线RTP算法可以克服原始双重次梯度方法收敛缓慢甚至没有收敛的缺点。最后,通过分散的在线RTP算法,仿真验证了优化模型的合理性和可行性。

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