MACHINE LEARNING-BASED MODELING FRAMEWORK FOR IMPROVING ROMANIAN RESILIENCE STRATEGY TO GREENHOUSE GAS EMISSIONS IN RELATION TO VISEGRAD GROUP

被引:0
|
作者
Petrea, Stefan-Mihai [1 ]
Simionov, Ira-Adeline [1 ]
Antache, Alina [1 ]
Nica, Aurelia [1 ]
Antohi, Cristina [1 ]
Cristea, Dragos Sebastian [1 ]
Arseni, Maxim [1 ]
Calmuc, Madalina [1 ]
Iticescu, Catalina [1 ]
机构
[1] Dunarea de Jos Univ Galati, REXDAN Res Infrastruct, 98 George Cosbuc St, Galati, Romania
关键词
machine learning; environmental modeling; GHG; environmental strategy; tree-based models; CARBON; CONSUMPTION;
D O I
暂无
中图分类号
S [农业科学];
学科分类号
09 ;
摘要
The present research reveals the difference between Romania and V4 in terms of the Greenhouse Gas Emissions Strategy and establishes a machine learning (ML) -based modeling framework for improving the ability to reach zero GHG by the mid-21st century. The ML tree-based algorithms, based on dual dimension environmental-economic nexus, revealed that net greenhouse gas emissions (NGHGE) are mostly conditioned by greenhouse gases from agriculture (GHGA), a fact valid both in the case of Romania (feature importance -FI = 0.41) and V4 (FI = 0.86). However, for V4, the 2nd important predictor is identified as greenhouse gases from waste management (FI = 0.26), while in the case of Romania, the national expenditure on environmental protection has a limited impact (FI =0.02) on NGHGE. Both integrated models have good prediction accuracy (Rsq. 0.70, RMSE 0.53 for the model associated with the Romania database and Rsq. 0.76, RMSE 0.47 for the V4 model). It can be concluded that in terms of integrated GHG emissions management strategy, Romania can merge with V4 to increase the environmental efficiency towards achieving the EU environmental goals.
引用
收藏
页码:150 / 157
页数:8
相关论文
共 49 条
  • [41] A Framework for Using Real-World Data and Health Outcomes Modeling to Evaluate Machine Learning-Based Risk Prediction Models
    Rodriguez, Patricia J.
    Veenstra, David L.
    Heagerty, Patrick J.
    Goss, Christopher H.
    Ramos, Kathleen J.
    Bansal, Aasthaa
    VALUE IN HEALTH, 2022, 25 (03) : 350 - 358
  • [42] Modeling Indirect Greenhouse Gas Emissions Sources from Urban Wastewater Treatment Plants: Integrating Machine Learning Models to Compensate for Sparse Parameters with Abundant Observations
    Huang, Yujun
    Xie, Yifan
    Wu, Yipeng
    Meng, Fanlin
    He, Chengyu
    Zou, Hao
    Wang, Xiaoting
    Shui, Ailun
    Liu, Shuming
    ENVIRONMENTAL SCIENCE & TECHNOLOGY, 2023, 57 (48) : 19860 - 19870
  • [43] Development of a novel machine learning-based weighted modeling approach to incorporate Salmonella enterica heterogeneity on a genetic scale in a dose-response modeling framework
    Karanth, Shraddha
    Pradhan, Abani K.
    RISK ANALYSIS, 2023, 43 (03) : 440 - 450
  • [44] Theoretical modeling and machine learning-based data processing workflows in comprehensive two-dimensional gas chromatography-A review
    Gaida, Meriem
    Stefanuto, Pierre-Hugues
    Focant, Jean-Francois
    JOURNAL OF CHROMATOGRAPHY A, 2023, 1711
  • [45] Prediction of greenhouse gas emissions reductions via machine learning algorithms: Toward an artificial intelligence-based life cycle assessment for automotive lightweighting
    Akhshik, Masoud
    Bilton, Amy
    Tjong, Jimi
    Singh, Chandra Veer
    Faruk, Omar
    Sain, Mohini
    SUSTAINABLE MATERIALS AND TECHNOLOGIES, 2022, 31
  • [46] Toward contactless human thermal monitoring: A framework for Machine Learning-based human thermo-physiology modeling augmented with computer vision
    Rida, Mohamad
    Abdelfattah, Mohamed
    Alahi, Alexandre
    Khovalyg, Dolaana
    BUILDING AND ENVIRONMENT, 2023, 245
  • [47] ExAIRFC-GSDC: An Advanced Machine Learning-Based Interpretable Framework for Accurate Gas Leakage Detection and Classification ( vol 18, pg 16, 2025)
    Lalithadevi, B.
    Krishnaveni, S.
    INTERNATIONAL JOURNAL OF COMPUTATIONAL INTELLIGENCE SYSTEMS, 2025, 18 (01)
  • [48] Improving Hourly Precipitation Estimates for Flash Flood Modeling in Data-Scarce Andean-Amazon Basins: An Integrative Framework Based on Machine Learning and Multiple Remotely Sensed Data
    Chancay, Juseth E.
    Espitia-Sarmiento, Edgar Fabian
    REMOTE SENSING, 2021, 13 (21)
  • [49] A machine learning-based pipeline for modeling medical, socio-demographic, lifestyle and self-reported psychological traits as predictors of mental health outcomes after breast cancer diagnosis: An initial effort to define resilience effects
    Kourou, Konstantina
    Manikis, Georgios
    Poikonen-Saksela, Paula
    Mazzocco, Ketti
    Pat-Horenczyk, Ruth
    Sousa, Berta
    Oliveira-Maia, Albino J.
    Mattson, Johanna
    Roziner, Ilan
    Pettini, Greta
    Kondylakis, Haridimos
    Marias, Kostas
    Karademas, Evangelos
    Simos, Panagiotis
    Fotiadis, Dimitrios, I
    COMPUTERS IN BIOLOGY AND MEDICINE, 2021, 131