Keyword search (4,163 papers available)

"Rice" Keyword-tagged Publications:

Title Authors PubMed ID
1 Tuning Deep Learning for Predicting Aluminum Prices Under Different Sampling: Bayesian Optimization Versus Random Search Alicia Estefania Antonio Figueroa 41751647
CONCORDIA
2 Heterologous Expression of Thermostable Endoglucanases from Rasamsonia emersonii: A Paradigm Shift in Biomass Hydrolysis Raheja Y; Singh V; Gaur VK; Tsang A; Chadha BS; 40418313
GENOMICS
3 Integrative approach to mitigate chromium toxicity in soil and enhance antioxidant activities in rice (Oryza sativa L.) using magnesium-iron nanocomposite and Staphylococcus aureus strains Ali MA; Sardar MF; Dar AA; Niaz M; Ali J; Wang Q; Zheng Y; Luo Y; Albasher G; Li F; 39190219
ENCS
4 Assessing greenhouse gas emissions in Cuban agricultural soils: Implications for climate change and rice (Oryza sativa L.) production Dar AA; Chen Z; Rodríguez-Rodríguez S; Haghighat F; González-Rosales B; 38295640
ENCS
5 Assessment of coal supply chain under carbon trade policy by extended exergy accounting method Roozbeh Nia A; Awasthi A; Bhuiyan N; 37363701
ENCS
6 Volatility spillover around price limits in an emerging market Aktas OU; Kryzanowski L; Zhang J; 32837364
JMSB
7 The Impact of Income and Taxation in a Price-Tiered Cigarette Market: findings from the ITC Bangladesh Surveys. Huq I, Nargis N, Lkhagvasuren D, Hussain AG, Fong GT 29695459
PSYCHOLOGY
8 Genetic structure and diversity of indigenous rice (Oryza sativa) varieties in the Eastern Himalayan region of Northeast India. Choudhury B, Khan ML, Dayanandan S 23741655
BIOLOGY

 

Title:Assessing greenhouse gas emissions in Cuban agricultural soils: Implications for climate change and rice (Oryza sativa L.) production
Authors:Dar AAChen ZRodríguez-Rodríguez SHaghighat FGonzález-Rosales B
Link:https://pubmed.ncbi.nlm.nih.gov/38295640/
DOI:10.1016/j.jenvman.2024.120088
Publication:Journal of environmental management
Keywords:Agricultural soilAuto Regressive distributed lag (ARDL)Climate changeCubaForecastingGreenhouse gas (GHG)Rice production
PMID:38295640 Category: Date Added:2024-02-01
Dept Affiliation: ENCS
1 Department of Building, Civil, and Environmental Engineering, Concordia University, 1455 de Maisonneuve Blvd. W. Montreal, Quebec, Canada H3G 1M8. Electronic address: darafzal@outlook.com.
2 Department of Building, Civil, and Environmental Engineering, Concordia University, 1455 de Maisonneuve Blvd. W. Montreal, Quebec, Canada H3G 1M8. Electronic address: zhichen@bcee.concordia.ca.
3 Faculty of Agriculture, University of Granma, Granma, Cuba. Electronic address: sfrodriguez1964@gmail.com.
4 Department of Building, Civil, and Environmental Engineering, Concordia University, 1455 de Maisonneuve Blvd. W. Montreal, Quebec, Canada H3G 1M8. Electronic address: fariborz.haghighat@bcee.concordia.ca.
5 Meteorological Center of Granma Province, Granma, Cuba. Electronic address: bettyrosales95@gmail.com.

Description:

Assessing the impact of greenhouse gas (GHG) emissions on agricultural soils is crucial for ensuring food production sustainability in the global effort to combat climate change. The present study delves to comprehensively assess GHG emissions in Cuba's agricultural soil and analyze its implications for rice production and climate change because of its rich agriculture cultivation tradition and diverse agro-ecological zones from the period of 1990-2022. In this research, based on Autoregressive Distributed Lag (ARDL) approach the empirical findings depicts that in short run, a positive and significant impact of 1.60 percent % in Cuba's rice production. The higher amount of atmospheric carbon dioxide (CO2) levels improves photosynthesis, and stimulates the growth of rice plants, resulting in greater grain yields. On the other hand, rice production index raising GHG emissions from agriculture by 0.35 % in the short run. Furthermore, a significant and positive impact on rice production is found in relation to the farm machinery i.e., 3.1 %. Conversely, an adverse and significant impact of land quality was observed on rice production i.e., -5.5 %. The reliability of models was confirmed by CUSUM and CUSUM square plot. Diagnostic tests ensure the absence of serial correlation and heteroscedasticity in the models. Additionally, the forecasting results are obtained from the three machine learning models i.e. feed forward neural network (FFNN), support vector machines (SVM) and adaptive boosting technique (Adaboost). Through the % MAPE criterion, it is evident that FFNN has achieved high precision (91 %). Based on the empirical findings, the study proposed the adoption of sustainable agricultural practices and incentives should be given to the farmers so that future generations inherit a world that is sustainable, and healthy.





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