4.7 Article

A Review of Maximum Power Point Tracking Algorithms for Wind Energy Conversion Systems

期刊

出版社

MDPI
DOI: 10.3390/jmse9111187

关键词

green energy; maximum power point tracking; wind energy conversion systems; wind turbine

资金

  1. Symbiosis International (Deemed University)

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Renewable energy resources, especially wind energy, are gaining popularity. Researchers are focusing on methods to extract energy from these sources. Among these methods, maximum power point tracking algorithms play a key role in optimizing power output.
Renewable energy resources are gaining a lot of popularity. Several researchers have worked on the tracking and extraction of energy from these sources. In the past few decades, among the available green energy resources, wind energy has been the most attractive option among the resources available. It is imperative to use the maximum power available in the wind to achieve the wind turbine (WT) operation at maximum power. The maximum power point tracking (MPPT) algorithms are a pioneer in this context. Many research papers are contributed in this domain which necessitates a thorough review while choosing an appropriate technique. This paper comprehensively focuses on reviewing different algorithms in the past and present for tracking maximum power point, and capturing maximized output power from the wind energy conversion system (WECS). In this paper, the algorithms are classified based on the direct and indirect power measurement, hybrid and smart algorithms for tracking maximum power point, and they are compared, considering the parameters like complexity, convergence speed, use of sensors, memory requirement, need for knowledge of system parameters, etc. The immense popularity of the different versions of perturb and observe (P&O) based algorithms due to their various features is evident from the literature. The review reveals that the hybrid maximum power point tracking algorithms can use the advantages of the conventional methods and eliminate their drawbacks.

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