Keyword search (4,164 papers available)

"Soil" Keyword-tagged Publications:

Title Authors PubMed ID
1 Evaluation and Utilization of Aged Bacteria in MICP Technology Fukue M; Lechowicz Z; Mulligan CN; Takeuchi S; Takeuchi H; 41900613
ENCS
2 A synergistic approach to rapid stabilization and immobilization of crude oil-contaminated clayey sand using calcium chloride and sodium silicate Rajaei E; Elektorowicz M; Baker MB; 41391286
ENCS
3 Mechanistic insights of plant-microbe interactions for enhancing the growth and productivity of plants under salt stress conditions for agricultural sustainability Sharma B; Negi R; Jyothi SR; Gupta A; Jhamta S; Yadav N; Kaur N; Puri P; Thakur SS; Bagavathiappan S; Thakur N; Shreaz S; Madouh TA; Yadav AN; 41245209
BIOLOGY
4 Electro-washing of pipelines spills: On-site strategies for different soil matrices Rajaei E; Elektorowicz M; 40614426
ENCS
5 Properties and Behavior of Sandy Soils by a New Interpretation of MICP Fukue M; Lechowicz Z; Mulligan CN; Takeuchi S; Fujimori Y; Emori K; 40004331
ENCS
6 Dynamics of soil biota and nutrients at varied depths in a Tamarix ramosissima-dominated natural desert ecosystem: Implications for nutrient cycling and desertification management Islam W; Zeng F; Ahmed Dar A; Sohail Yousaf M; 38340666
CONCORDIA
7 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
8 Assessment of the infiltration of water-in-oil emulsion into soil after spill incidents Qu Z; An C; Yue R; Bi H; Zhao S; 37414189
ENCS
9 Isolation and Identification of Mercury-Tolerant Bacteria LBA119 from Molybdenum-Lead Mining Soils and Their Removal of Hg2 Yao H; Wang H; Ji J; Tan A; Song Y; Chen Z; 36977027
ENCS
10 Utilization of a biosurfactant foam/nanoparticle mixture for treatment of oil pollutants in soil Vu KA; Mulligan CN; 35834082
ENCS
11 Remediation of oil-contaminated soil using Fe/Cu nanoparticles and biosurfactants Vu KA; Mulligan CN; 35361056
ENCS
12 Treatment of decentralized low-Strength livestock wastewater using microcurrent-assisted multi-soil-layering systems: Performance Assessment and microbial analysis Liu C; Huang G; Song P; An C; Zhang P; Shen J; Ren S; Zhao K; Huang W; Xu Y; Zheng R; 34999101
ENCS
13 Exploring the decentralized treatment of sulfamethoxazole-contained poultry wastewater through vertical-flow multi-soil-layering systems in rural communities. Song P, Huang G, An C, Xin X, Zhang P, Chen X, Ren S, Xu Z, Yang X 33065414
ENCS
14 Exploration of nanocellulose washing agent for the green remediation of phenanthrene-contaminated soil. Yin J, Huang G, An C, Zhang P, Xin X, Feng R 33264936
ENCS
15 COSORE: A community database for continuous soil respiration and other soil-atmosphere greenhouse gas flux data. Bond-Lamberty B, Christianson DS, Malhotra A, Pennington SC, Sihi D, AghaKouchak A, Anjileli H, Altaf Arain M, Armesto JJ, Ashraf S, Ataka M, Baldocchi D, Andrew Black T, Buchmann N, Carbone MS, Chang SC, Crill P, Curtis PS, Davidson EA, Desai AR, Drake JE, El-Madany TS, Gavazzi M, Görres CM, Gough CM, Goulden M, Gregg J, Gutiérrez Del Arroyo O, He JS, Hirano T, Hopple A, Hughes H, Järveoja J, Jassal R, Jian J, Kan H, Kaye J, Kominami Y, Liang N, Lipson D, Macdonald CA, Maseyk K, Mathes K, Mauritz M, Mayes 33026137
ENCS
16 A biophysiological perspective on enhanced nitrate removal from decentralized domestic sewage using gravitational-flow multi-soil-layering systems. Song P, Huang G, Hong Y, An C, Xin X, Zhang P 31542583
ENCS
17 Performance analysis and life cycle greenhouse gas emission assessment of an integrated gravitational-flow wastewater treatment system for rural areas. Song P, Huang G, An C, Zhang P, Chen X, Ren S 31273662
ENCS

 

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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