基于规则模糊逻辑的并网光伏系统电能管理

Nousheen Hashmi, S. Khan
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引用次数: 10

摘要

绿色能源与负荷需求的积极配合导致了严重的电能质量和稳定性问题。这就需要采用更新的策略来保持绿色能源和微电网/公用电网之间的电力稳定。本文提出了一种基于规则的模糊智能控制器对多源(光伏、电网、蓄电池)的电力进行调度的储能并网光伏系统在天气条件、减载时间、峰值定价时间等约束条件下的电力管理新技术。该技术对所有输入进行模糊化处理,并根据模糊输出建立模糊规则集。并进行了24小时的仿真,开发了基于规则的功率调度程序。本文提出的模糊控制策略能够感知光伏发电、负荷需求、电网(减载模式)和电池充电状态的持续波动,从而做出正确、快速的决策。建议的基于模糊规则的调度程序可以很好地处理模糊输入,因此不需要任何精确的数值模型,并且可以通过将人类启发式与计算机辅助决策相结合来处理非线性。该技术还为扩展提供了一个框架,以处理多个特殊情况,以优化系统的工作。
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Power Energy Management for a Grid-Connected PV System Using Rule-Base Fuzzy Logic
Active collaboration among green-energy and the load demand lead to serious issue related to power quality and stability. This requires newer strategies to be incorporated to keep the power stability among green energy resources and micro-grid/Utility Grid. This paper presents a novel technique for power management in Grid-connected photovoltaic system with an energy storage system under a set of constraints, including weather conditions, load-shedding hours, peak pricing hours, by using rule-base fuzzy smart controller to schedule power coming from multiple sources (Photovoltaic, Grid, Battery) under the above set of constraints. The technique fuzzify all the inputs and establishes fuzzify rule set from fuzzy outputs before deffuzification process. Simulations are run for 24 hour period and rule base power scheduler is developed. The Proposed fuzzy control strategy is able to sense the continuous fluctuations in photovoltaic power generation, Load Demands, Grid (load Shedding patterns), and Battery State of Charge in order to make correct and quick decisions. The Suggested Fuzzy Rule based scheduler can operate well with vague inputs, thus doesn't not require any exact numerical model and can handle nonlinearity by combining the human heuristics into computer assisted decisions. This technique also provides a framework for extension to handle multiple special cases for an optimized working of the system.
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