考虑用户偏好的基于状态任务网络的工业用户最优电源管理策略

Chenwei Jiang, F. Wen, Yusheng Xue, Fei Chen, Yikai Sun, Lijun Zhang
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引用次数: 2

摘要

随着智能电网技术的不断发展,电力系统与用户侧资源的互动不断加强。在各种可以参与需求响应(DR)的用户中,工业用户具有功耗大、设备自动化程度高的特点,因此可以更灵活地调度。本文提出了一种基于状态任务网络(STN)的工业用户最优电源管理策略,以帮助工业用户以电力成本最小化为目标对电力设备进行针对性调度。考虑到用户对生产设备的偏好,通过对工业用户可调度任务节点的优化运行,可以显著降低用户在电价高峰期的用电量。我们进行个案研究,以证明建议方法的可行性和有效性,并研究应用建议方法对工业生产过程和工业用户的经济效益的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal Power Management Strategy for Industrial Users Based on the State Task Network Considering User Preferences
With continuous development of smart grid technology, the interaction between the power system and user-side resources is constantly strengthening. Among various users who can participate in demand response (DR), industrial users have the characteristics of large power consumption and high degree of equipment automation, and hence can be scheduled more flexibly. In this paper, an optimal power management strategy for industrial users based on the state task network (STN) is proposed to assist industrial users specifically scheduling electrical equipment with an objective of minimizing electricity costs. Taking into account the user preferences for production equipment, the electricity consumption of users during the peak electricity price period could be significantly reduced through optimized operation of the schedulable task nodes of industrial users. Case studies are carried out to demonstrate the feasibility and effectiveness of the proposed method and to examine the impacts of applying the proposed method on industrial production processes and economic benefits of industrial users.
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