动态遮阳条件下太阳能光伏系统各种 MPPT 算法的比较评估

Ashiwani Yadav, Nitai Pal, Faizan A. Khan, R. S. Parihar, Arsh Khan, Shekhar Solanki, Dewashri Pansari, Poorva Sharma, Karuna Yadav
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为了保证电网稳定和有效管理能源资源,人们对资源枯竭、气候变化和环境污染的担忧与日俱增,能源转型也随之而来。能源是人类社会可持续发展的基本要求。传统能源资源有限,并不断对环境造成干扰。可再生能源为解决当前的能源危机提供了更好的选择。目前,印度很大一部分电力来自太阳能光伏发电系统。然而,由于其间歇性,高效的 MPPT 算法成为从系统中提取最大输出功率以提高效率的必要条件。因此,我们提出了一种基于神经网络的新型 MPPT 算法,并与传统的 MPPT 技术 "扰动和观测 "以及基于 "增量电导 "的技术进行了对比分析。实验结果表明,与传统技术相比,基于神经网络的 MPPT 算法具有更好的性能特征,如减少稳态误差。用于比较的参数包括上升时间、稳定时间和不同环境条件(如辐照度和温度)下的功率输出。最后,在 MATLAB 环境中对所提出的 MPPT 控制器的性能进行了评估,仿真结果表明,在不同的工作条件下,与传统控制技术相比,所提出的方案更具优势。
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Comparative assessment of various MPPT algorithms for solar photovoltaic systems under dynamic shading conditions

In order to guarantee grid stability and efficiently manage energy resources, there has been a substantial energy transition brought about by growing worries about resource depletion, climate change, and environmental pollution. Energy is the basic requirement for the sustainable development of human society. Conventional energy resources are limited and causing environmental disturbances consistently. Renewable energy offers better alternatives to tackle current energy crisis. A significant proportion of power generated in India is now coming from solar PV systems. However, due to its intermittence nature, efficient MPPT algorithm becomes necessity to extract maximum output power from the system to enhance its efficiency. Therefore, we have proposed a novel neural network based MPPT algorithm and presents a comparative analysis with conventional MPPT techniques ‘Perturb and Observe’, and ‘Incremental Conductance’ based techniques. The experimental outcomes are validated which shows neural network based MPPT algorithm provides better performance characteristics like reduced steady state error compared to conventional techniques. The parameters considered for comparison are rise time, settling time and power output under different environmental conditions such as irradiance and temperature. Finally, the proposed MPPT controller’s performance is evaluated in MATLAB environment and simulation results show the proposed scheme’s superiority as compared to conventional control techniques under different operating conditions.

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