The dramatic increase in carbon dioxide emissions is a major cause of global warming and climate change, posing a serious threat to human development and profoundly affecting the global ecosystem. Currently, carbon dioxide emissions prediction studies rely heavily on a large amount of data support, and the accuracy of predictions is greatly reduced when data are scarce. In addition, the inherent uncertainty, volatility, and complexity of CO2 emission data further exacerbate the challenge of accurate prediction. To address these issues, a novel hybrid model for CO2 emission prediction is proposed in this paper. A feature screening method is designed for effective and reliable feature selection from the perspective of algorithm stability, which can improve the prediction performance. In order to accurately predict periodic sequences with limited training samples, a least squares support vector machine is employed in this paper. In addition, the parameters of the prediction model are optimised using the improved sparrow search algorithm and enhanced by Sin chaos mapping, adaptive inertia weights and Cauchy-Gauss variables. An empirical study is conducted using Chinese carbon emission data as a case study, and the validity and superiority of the proposed model are verified through comparative experiments. The results show that the improved SSA has stronger global optimisation capability and faster convergence speed. In addition, in terms of prediction results, the hybrid model has the best consistency with the actual data, which significantly improves the prediction accuracy.

Download full-text PDF

Source
http://dx.doi.org/10.1080/09593330.2025.2464979DOI Listing

Publication Analysis

Top Keywords

carbon dioxide
12
hybrid model
12
sparrow search
8
search algorithm
8
dioxide emissions
8
co2 emission
8
emission data
8
prediction
7
model
5
data
5

Similar Publications

'Too much, too little' - heat wave impact during pregnancy and the need for adaptation measures.

Glob Health Action

December 2025

Department of Epidemiology and Global Health, Medical Faculty, Umeå University, Umeå, Sweden.

The balls are rolling for climate change, with increasing vulnerability to women and children related to climate extreme events. Recent evidence has shown that acute exposure to heat wave during pregnancy can be associated with adverse health outcomes in childhood, with the risk being significantly higher among socially disadvantaged population, despite their lack of contribution to global carbon dioxide emissions and the rising global ambient temperature. This unequal impact requires utmost attention to develop tools, establish interdisciplinary teams, and to implement evidence-based interventions for the betterment of women and children in climate-vulnerable populations.

View Article and Find Full Text PDF

Scaling relations of CO hydrogenation and dissociation on single metal atom doped InO catalysts with promoted oxygen vacancy sites.

RSC Adv

March 2025

CAS Key Laboratory of Low-Carbon Conversion Science and Engineering, Shanghai Advanced Research Institute, Chinese Academy of Sciences 100 Haike Road Shanghai 201210 P. R. China

In this work, we conducted a computational study on single atom doped InO catalysts with 12 transition metals (Fe-Cu, Ru-Ag, Os-Au) through density functional theory (DFT) calculations, by investigating the dissociation of H, and the dissociation and hydrogenation of CO. From the thermodynamic-kinetic scaling relationships such as Brønsted-Evans-Polanyi (BEP) and transition-state scaling (TSS) relations, we establish the descriptors for the energy barriers and improve our understanding of the synergistic catalytic effect of oxygen vacancies and single atoms. We find that the adsorption energy of the H adatom on the perfect surface can serve as an effective descriptor for the dissociation energy barrier of H on this surface, and the formation energy of the oxygen vacancy can serve as an effective descriptor for the energy barrier of CO hydrogenation to HCOO as well as the energy barrier of CO direct dissociation.

View Article and Find Full Text PDF

During anaerobic digestion (AD) of lignocellulose- and protein-rich substrates known to contain a high load of aromatic compounds, various undesired intermediates can arise, which can accumulate and cause serious disturbances during the cascade-like AD process. The phenyl acids phenyl-acetic-(PAA), phenyl-propionic-(PPA), and phenyl-butyric acid (PBA) are such intermediates suspected to negatively affect the microbial community, resulting in a decreased biogas yield. In the present study, the impact of PAA, PPA, and PBA on the metabolism of CO reducing methanogens was investigated.

View Article and Find Full Text PDF

Carbonyl sulfide (COS) is the most abundant and longest-lasting organic reduced sulfur compound in the atmosphere. Removing it is a critical and challenging aspect in desulfurization technology in order to comply with global restrictions on harmful emissions. Catalytic hydrolysis refers to the process whereby COS reacts with water under the influence of a catalyst to generate carbon dioxide and hydrogen sulfide.

View Article and Find Full Text PDF

Mineral Carbonation for Carbon Sequestration: A Case for MCP and MICP.

Int J Mol Sci

March 2025

Research Institute on Mines and the Environment (RIME), University of Quebec in Abitibi-Témiscamingue, Rouyn-Noranda, QC J9X 5E4, Canada.

Mineral carbonation is a prominent method for carbon sequestration. Atmospheric carbon dioxide (CO) is trapped as mineral carbonate precipitates, which are geochemically, geologically, and thermodynamically stable. Carbonate rocks can originate from biogenic or abiogenic origin, whereby the former refers to the breakdown of biofragments and the latter precipitation out of water.

View Article and Find Full Text PDF

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!