4.5 Article

Sustainable development of China's smart energy industry based on artificial intelligence and low-carbon economy

Journal

ENERGY SCIENCE & ENGINEERING
Volume 10, Issue 1, Pages 243-252

Publisher

WILEY
DOI: 10.1002/ese3.856

Keywords

artificial intelligence; low‐ carbon economy; smart energy; sustainable development

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This paper studies the sustainable development of China's intelligent energy industry based on artificial intelligence and low-carbon economy. It focuses on the optimization of the power generation industry and proposes a method using statistical variation particle swarm optimization algorithm. The experimental results show the effectiveness of the method in predicting electricity prices.
With the continuous advancement of urbanization, the contradiction between urban development and environmental resources has become increasingly prominent, and environmental pollution has become increasingly serious. To fundamentally solve the problems of environment, energy, and low carbon, we must rely on the intelligence of energy. This paper aims to study the sustainable development of China's intelligent energy industry based on artificial intelligence and low-carbon economy. In view of the problems existing in the optimization of power generation industry, this paper uses the annual load, electricity price, weather, and climate data of a southern power grid, uses the statistical variation particle swarm optimization algorithm, uses the historical runoff and rainfall data to optimize it, and studies the analysis methods, characteristics and laws of short-term load, electricity price and runoff, as well as the uncertain factors affecting their changes. The experimental results show that the predicted price is close to the actual price, and the median error of each period is <1% in statistical analysis, so the forecast value can be used to replace the actual value for scheduling. This method makes full use of the adaptive mutation in the late stage of particle optimization, and introduces the mechanism of particle size selection, which fully ensures the diversity of particles and improves the search ability of particles.

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