基于人工神经网络和模糊逻辑的混合 MPPT 控制器在弱光条件下的有效性

Louki Hichem, Merabet Leila, Omeiri Amar
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引用次数: 0

摘要

技术进步和经济发展使电力消耗成为一个大问题。随着传统能源的减少,人们对能源消耗的关注与日俱增。未来,大量化石燃料将无法满足人类的需求。这就促使人们研究使用可再生能源的可行性。可再生能源具有成本效益高、不影响环境和可持续发展等诸多优势。阳光是目前最普遍的能源,因为它既免费又容易获取。因此,光伏(PV)能源在发电领域的重要性与日俱增。由于气象条件(辐照度和温度)的变化,在太阳能光伏系统中跟踪最大功率点(MPP)是一项挑战。为了最大限度地提高太阳能发电装置的效率,必须监控光伏阵列的最佳功率点。本分析比较了扰动和观察 (PO)、模糊逻辑 (FL) 以及建议的人工神经网络 (ANN) - 模糊策略,以确定辐射量最小的光伏系统的 MPP。仿真结果表明,在低辐照水平下,建议的人工神经网络-模糊最大功率点跟踪 (MPPT) 单元控制器在跟踪最大功率方面优于 FL 和 PO MPPT 控制器。
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The effectiveness of a hybrid MPPT controller based on an artificial neural network and fuzzy logic in low-light conditions
Technological advancement and economic progress have made power consumption a big issue. Concern is growing as traditional energy sources dwindle. In the future, numerous fossil fuels will be insufficient to satisfy human requirements. This motivates research into the feasibility of using renewable energy sources. Renewable energy sources offer a multitude of advantages, including their cost-effectiveness, lack of environmental impact, and sustainable nature. Sunlight is currently the most prevalent source of energy because it is both free and readily accessible. Consequently, photovoltaic (PV) energy is gaining importance in the field of electricity generation. Tracking the maximum power point (MPP) in a solar PV system is challenging due to varying meteorological conditions (irradiance and temperature). To maximise the efficiency of a solar power installation, it is essential to monitor the PV array's optimum power point. This analysis compares the perturb and observe (PO), fuzzy logic (FL), and suggested artificial neural network (ANN)-fuzzy strategy for determining the MPP of a PV system with minimal radiation exposure. Simulation results show that at low irradiation levels, the proposed ANN-fuzzy maximum power point tracking (MPPT) unit controller is superior to the FL and PO MPPT controllers in terms of tracking maximum power.
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