L. Raju, Kaviya Appaswamy, Janani Vengatraman, Antony Amalraj Morais
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引用次数: 7
Abstract
The objective of this paper is to develop a Multi Agent System (MAS) for advanced distributed energy management of a solar-wind interconnected micro-grid. This grid connected micro-grid also contains two solar Photo Voltaic (PV) systems, two Wind Turbines each contains a local consumer, a solar PV system and a battery unit. We also consider a Diesel Power Plant that provides considerable power. So, Initially we measure the load patterns, solar power, wind power generated in the two solar and wind units. Then we use Multi Agent System for advanced distributed energy management of this solar-wind micro-grid with smart grid frame work. We develop a simulation model in Java Agent Development Environment (JADE) for distributed, dynamic energy management, which considers the intermittent nature of solar power, wind power, randomness of load, dynamic pricing of grid and variation of critical loads and choose the best possible action every hour to stabilize and optimize the solar micro-grid. Furthermore, MAS increases the operational efficiency, due to decentralised approach and reduced timings. Thus MAS in solar micro-grid energy management leads to economic and environmental optimization. Simulated operation of solar generators and loads are studied by performing simulations under all possible agent objectives. Outcome of the simulation studies proves the effectiveness of proposed MAS in distributed energy management of solar-wind interconnected micro-grid.
本文的目标是开发一种多智能体系统(MAS),用于太阳风互联微电网的先进分布式能源管理。这个连接微电网的电网还包含两个太阳能光伏(PV)系统,两个风力涡轮机每个包含一个当地消费者,一个太阳能光伏系统和一个电池单元。我们也考虑一个柴油发电厂,提供相当大的电力。所以,最初我们测量负荷模式,太阳能发电,风力发电在两个太阳能和风力发电单元中产生。在此基础上,采用多智能体系统对该智能电网框架下的太阳风微电网进行了先进的分布式能源管理。利用Java Agent Development Environment (JADE)开发分布式动态能源管理仿真模型,考虑太阳能、风能发电的间歇性、负荷的随机性、电网的动态定价和临界负荷的变化,每小时选择可能的最佳行动,实现太阳能微电网的稳定和优化。此外,由于分散的方法和减少的时间,MAS提高了作业效率。因此,MAS在太阳能微电网能源管理导致经济和环境的优化。在所有可能的智能体目标下,对太阳能发电机组和负荷的模拟运行进行了研究。仿真研究结果证明了该算法在太阳风互联微电网分布式能量管理中的有效性。