Intelligent decision making for energy management in microgrids with air pollution reduction policy

Y. S. Manjili, Amir Rajaee, M. Jamshidi, B. Kelley
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引用次数: 10

Abstract

Fuzzy Logic-based decision-making framework is implemented for energy management in microgrid systems in order to meet targets such as providing local consumers with required energy demand and making good revenue for the microgrid owner under a time-varying electricity cost policy while helping reduce negative environmental effects due to air polluting sources of electrical energy such as coal fire plants which operate in the main grid in order to provide local microgrid loads. Typically, a microgrid system has two modes of operation. It either works synchronously with the main grid or operates independently from the utility grid in an isolated mode. Distributed renewable energy generators including solar, wind in association with batteries and main grid supply power to the consumer in the microgrid network. One day period is divided to a finite number of time slots. The Fuzzy intelligent approach implemented in this article determines the rate at which power has to be delivered to/taken from the storage unit during the next time slot depending on the electricity price per kWh of energy, local load demand, electricity generation rate through renewable resources, and air pollution factor which are sampled at predetermined rates. Cost function is defined as the sum of balance/revenue due to electricity trade between microgrid and the main grid, which includes the power provided to local load and distribution losses. Five different scenarios are considered for local load and microgrid assembly operation. Measures of balance/revenue will be extracted to represent benefits of using Fuzzy logic for energy management in microgrids with air pollution reduction policy.
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基于空气污染减排政策的微电网能源管理智能决策
基于模糊逻辑的决策框架用于微电网系统的能源管理,以满足在时变电力成本政策下为当地消费者提供所需的能源需求和为微电网所有者创造良好的收益等目标,同时有助于减少由于在主电网中运行的燃煤电厂等电能的空气污染源对环境的负面影响,以提供当地微电网负荷。通常,微电网系统有两种运行模式。它要么与主电网同步工作,要么以隔离模式独立于公用事业电网运行。分布式可再生能源发电机,包括太阳能、风能,与电池和主电网相结合,为微电网中的消费者提供电力。一天的时间被划分为有限的时间段。本文实现的模糊智能方法根据每千瓦时能源的电价、当地负荷需求、可再生资源的发电率和以预定率采样的空气污染因素,确定下一个时隙向存储单元输送/提取电力的速率。成本函数定义为微网与主网之间电力交易的余额/收益之和,其中包括提供给本地负荷的电力和配电损耗。考虑了本地负荷和微电网装配运行的五种不同情况。将提取平衡/收入的度量,以表示在具有减少空气污染政策的微电网中使用模糊逻辑进行能源管理的好处。
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