The Most Promising New Energy Source—Wind Power
DOI:
https://doi.org/10.54097/hset.v33i.5240Keywords:
Environmentally Friendly, New Energy, Wind Power, Wind Energy.Abstract
Energy is an important part of the development of human society, but due to the large consumption of oil, coal and other resources, it also brings environmental pollution. Therefore, people have higher and higher requirements for environmental protection and sustainable development. Renewable energy plays a key role in meeting climate change agreement targets, increasing energy security, improving access to electricity and reducing fossil energy consumption. Wind power is a sustainable energy source. Because it is environmentally friendly and rich in resources, scientists have spent thousands of years looking for an effective method. This paper mainly introduces the development of wind power utilization and generation, wind navigation aid, wind water diversion and wind heat. In addition, the present situation, advantages and disadvantages of these technologies are described in detail, and the future development of wind power generation is briefly described. Hopefully this article will give a general idea of what wind power can be used for.
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