Detail publikačního výsledku

Carbon Emission Trends and Their Economic Implications: A Heuristic Approach to Information-Poor Environments

FRANC, Š.

Originální název

Carbon Emission Trends and Their Economic Implications: A Heuristic Approach to Information-Poor Environments

Anglický název

Carbon Emission Trends and Their Economic Implications: A Heuristic Approach to Information-Poor Environments

Druh

Článek Scopus

Originální abstrakt

Introduction Carbon emission models are essential tools for analysing and predicting emission trends. However, the development of such models is often limited by a lack of sufficient data, making traditional statistical approaches difficult to apply. This study proposes a novel, qualitative, trend-based modelling framework that utilizes equation-less heuristics as an alternative to conventional, data-intensive carbon emission models. Methods The model employs a trend reasoning method based on expert knowledge and simplified indicators (increasing, constant, decreasing), applied to qualitative variables such as carbon strategy and profitability. Verbal knowledge statements are formalized without numerical values, allowing modelling in information-poor environments. Results The resulting model generated 29 internally consistent future scenarios with defined trend-based transitions between them. The structure allows integration of interdisciplinary insights from economics, environmental science, engineering, and policy domains. Discussion The proposed model enables structured analysis of emission scenarios without the need for precise data. It is flexible but relies on expert judgment and does not quantify scenario probabilities. Still, it offers valuable support for decision-making under uncertainty. Conclusion Trend-based models using qualitative reasoning provide a low-data, high-flexibility alternative for exploring carbon emission dynamics, supporting decision-making processes even without formal training in modeling theory.

Anglický abstrakt

Introduction Carbon emission models are essential tools for analysing and predicting emission trends. However, the development of such models is often limited by a lack of sufficient data, making traditional statistical approaches difficult to apply. This study proposes a novel, qualitative, trend-based modelling framework that utilizes equation-less heuristics as an alternative to conventional, data-intensive carbon emission models. Methods The model employs a trend reasoning method based on expert knowledge and simplified indicators (increasing, constant, decreasing), applied to qualitative variables such as carbon strategy and profitability. Verbal knowledge statements are formalized without numerical values, allowing modelling in information-poor environments. Results The resulting model generated 29 internally consistent future scenarios with defined trend-based transitions between them. The structure allows integration of interdisciplinary insights from economics, environmental science, engineering, and policy domains. Discussion The proposed model enables structured analysis of emission scenarios without the need for precise data. It is flexible but relies on expert judgment and does not quantify scenario probabilities. Still, it offers valuable support for decision-making under uncertainty. Conclusion Trend-based models using qualitative reasoning provide a low-data, high-flexibility alternative for exploring carbon emission dynamics, supporting decision-making processes even without formal training in modeling theory.

Klíčová slova

Carbon Emission; Decision making; Economics; Forecast; Scenario; Sociology; Transition; Trend model

Klíčová slova v angličtině

Carbon Emission; Decision making; Economics; Forecast; Scenario; Sociology; Transition; Trend model

Autoři

FRANC, Š.

Rok RIV

2026

Vydáno

09.10.2025

Periodikum

The open environmental research journal

Svazek

18

Číslo

12

Stát

Nizozemsko

Strany počet

9

URL

BibTex

@article{BUT200343,
  author="Štěpán {Franc}",
  title="Carbon Emission Trends and Their Economic Implications: A Heuristic Approach to Information-Poor Environments",
  journal="The open environmental research journal",
  year="2025",
  volume="18",
  number="12",
  pages="9",
  doi="10.2174/0125902776406706250928033400",
  url="https://www.scopus.com/pages/publications/105026786796?origin=resultslist"
}