Management and control optimization based on deep learning model

Jingjing Dai
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引用次数: 2

Abstract

Microgrid technology is a key solution to improve distributed power consumption, complementary utilization of multiple energy sources, and power supply reliability. To guarantee the reliability of the microgrid system, a realistic strategy must be created. This work takes the microgrid as an object and uses simulation technology to construct a microgrid system. Then, using this simulation system and the double deep Q-learning, the goal is to minimize the 24-hour electricity consumption cost from the external power grid to meet the requirements of voltage deviation. Power balancing and energy storage loads for microgrid systems. Under the constraints of the electrical state and other constraints, the control variable is the energy storage's capacity for charging and discharging, and the optimization strategy of energy storage control is obtained through training. The results demonstrate that the DDQN algorithm will save 26.95% of the electricity purchase cost, which is significantly more than the MPPT algorithm's 12.43% savings. As a result, this work examines the efficacy of the charging and releasing approach for energy storage and confirms the potential of the suggested approach to reduce the cost of purchasing electricity.
基于深度学习模型的管控优化
微电网技术是提高分布式用电、多种能源互补利用、提高供电可靠性的关键解决方案。为保证微电网系统的可靠性,必须制定切实可行的策略。本工作以微电网为对象,利用仿真技术构建微电网系统。然后,利用该仿真系统和双深度q -学习,以最小化外部电网24小时的用电成本来满足电压偏差的要求为目标。微电网系统的功率平衡与储能负荷。在电气状态和其他约束条件的约束下,控制变量为储能的充放电容量,通过训练得到储能控制的优化策略。结果表明,DDQN算法可节省26.95%的购电成本,显著高于MPPT算法的12.43%。因此,这项工作考察了充电和释放方法在储能方面的功效,并证实了所建议的方法在降低购电成本方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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