Abstract

Sulfur dioxide is an important source of atmospheric pollution. Many countries are developing policies to reduce sulfur dioxide emissions. In this paper, a novel prediction model is proposed, which could be used to forecast sulfur dioxide emissions. To improve the modeling procedure, fractional order accumulating generation operator and fractional order reducing generation operator are introduced. Based on fractional order operators, a discrete grey model with fractional operators is developed, which also makes use of genetic algorithms to optimize the modeling parameter r. The improved performance of the model is demonstrated via comparison studies with other grey models. The model is then used to predict China’s sulfur dioxide emissions. The forecast result shows that the amount of sulfur dioxide emissions is steadily decreasing and the policies of sulfur dioxide reduction in China are effective. According to the current trend, by 2020, the value of China’s sulfur dioxide emissions will be only 86.843% of emissions in 2015. Fractional order generation operators can be used to develop other fractional order system models.

Highlights

  • Sulfur dioxide is the most common form of sulfur oxides

  • The results show that the discrete grey model with fractional operators has a lower Mean absolute percentage error (MAPE) than the discrete grey model based on fractional order accumulate

  • This paper introduces a new prediction model by changing and optimizing the values of fractional order, giving rise to a discrete grey model with fractional operators

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Summary

Introduction

Sulfur dioxide (chemical formula SO2) is the most common form of sulfur oxides. The colorless gas has a strong irritating odor and is a major air pollutant. Zhou and Zhang established an improved metabolism grey model for predicting small samples with a singular datum and applied it to study sulfur dioxide emissions in China [13]. Cheng and Wu [28, 29] proposed the analytic expression of fractional summation operator but did not propose fractional difference operator and believed that the fractional difference operator generally does not satisfy the exponential rule In this paper, both the fractional order accumulating generation operator and fractional order reducing generation operator are studied. A discrete grey model with fractional operators is used to predict China’s future sulfur dioxide emissions.

Fractional Order Generation Operators
Discrete Grey Model with Fractional Operators
Verification of Discrete Grey Model with Fractional Operators
Prediction of China’s Sulfur Dioxide Emissions
Findings
Conclusion
Full Text
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