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Forecasting global plastic production and microplastic emission using advanced optimised discrete grey model

Environmental Science and Pollution Research 2023 16 citations ? Citation count from OpenAlex, updated daily. May differ slightly from the publisher's own count. Score: 55 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Subhra Rajat Balabantaray, Pawan Kumar Singh, Aditya Kumar Sharma Alok Kumar Pandey, Bhartendu Kumar Chaturvedi, Bhartendu Kumar Chaturvedi, Aditya Kumar Sharma

Summary

Researchers used advanced mathematical models to forecast future global plastic production and microplastic emissions. Their projections suggest that both production and emissions will continue rising significantly in the coming decades if current trends hold. The study provides policymakers with quantitative predictions that could help guide strategies for reducing plastic pollution.

Study Type Environmental

Plastic pollution has become a prominent and pressing environmental concern within the realm of pollution. In recent times, microplastics have entered our ecosystem, especially in freshwater. In the contemporary global landscape, there exists a mounting apprehension surrounding the manifold environmental and public health issues that have emerged as a result of the substantial accumulation of microplastics. The objective of the current study is to employ an enhanced grey prediction model in order to forecast global plastic production and microplastic emissions. This study compared the accuracy level of the four grey prediction models, namely, EGM (1,1, α, θ), DGM (1,1), EGM (1,1), and DGM (1,1, α) models, to evaluate the accuracy levels. As per the estimation of the study, DGM (1,1, α) was found to be more suitable with higher accuracy levels to predict microplastic emission. The EGM (1,1, α, θ) model has slightly better accuracy than the DGM (1,1, α) model in predicting global plastic production. Various accuracy measurement tools (MAPE and RMSE) were used to determine the model's efficiency. There has been a gradual growth in both plastic production and microplastic emission. The current study using the DGM (1,1, α) model predicted that microplastic emission would be 1,084,018 by 2030. The present study aims to provide valuable insights for policymakers in formulating effective strategies to address the complex issues arising from the release of microplastics into the environment and the continuous production of plastic materials.

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