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A Novel Approach to Integrating Community Knowledge into Fuzzy Logic-Adapted Spatial Modeling in the Analysis of Natural Resource Conflicts

Lawrence Ibeh 1
Kyriakos Kouveliotis 2
Deepak Rajendra Unune 3
Nguyen Manh Cuong 4
Noah Cheruiyot Mutai 4
Anastasios Fountis 4
Svitlana Samoylenko 4
Tripti Swarnkar 1
Sushma Kumari 4
B. B. Sambiri 4
Sulekha Mohamud 1
Alina Baskakova 1
1
 
Faculty of Computer Science & Informatics, Berlin School of Business and Innovation (BSBI), Berlin Campus, 12043 Berlin, Germany
2
 
Berlin School of Business and Innovation (BSBI), Berlin Campus, 12043 Berlin, Germany
4
 
Faculty of Economics & Business Administration, Berlin School of Business and Innovation (BSBI), Berlin Campus, 12043 Berlin, Germany
Тип публикацииJournal Article
Дата публикации2025-03-06
scimago Q1
wos Q2
БС1
SJR0.688
CiteScore7.7
Impact factor3.3
ISSN20711050
Краткое описание

Resource conflicts constitute a major global issue in areas rich in natural resources. The modeling of factors influencing natural resource conflicts (NRCs), including environmental, health, socio-economic, political, and legal aspects, presents a significant challenge compounded by inadequate data. Quantitative research frequently emphasizes large-scale conflicts. This study presents a novel multilevel approach, SEFLAME-CM—Spatially Explicit Fuzzy Logic-Adapted Model for Conflict Management—for advancing understanding of the relationship between NRCs and drivers under territorial and rebel-based typologies at a community level. SEFLAME-CM is hypothesized to yield a more robust positive correlation between the risk of NRCs and the interacting conflict drivers, provided that the conflict drivers and input variables remain the same. Local knowledge from stakeholders is integrated into spatial decision-making tools to advance sustainable peace initiatives. We compared our model with spatial multi-criteria evaluation for conflict management (SMCE-CM) and spatial statistics. The results from the Moran’s I scatter plots of the overall conflicts of the SEFLAME-CM and SMCE-CM models exhibit substantial values of 0.99 and 0.98, respectively. Territorial resource violence due to environmental drivers increases coast-wards, more than that stemming from rebellion. Weighing fuzzy rules and conflict drivers enables equal comparison. Environmental variables, including proximity to arable land, mangrove ecosystems, polluted water, and oil infrastructures are key factors in NRCs. Conversely, socio-economic and political factors seem to be of lesser importance, contradicting prior research conclusions. In Third World nations, local communities emphasize food security and access to environmental services over local political matters amid competition for resources. The synergistic integration of fuzzy logic analysis and community perception to address sustainable peace while simultaneously connecting environmental and socio-economic factors is SEFLAME-CM’s contribution. This underscores the importance of a holistic approach to resource conflicts in communities and the dissemination of knowledge among specialists and local stakeholders in the sustainable management of resource disputes. The findings can inform national policies and international efforts in addressing the intricate underlying challenges while emphasizing the knowledge and needs of impacted communities. SEFLAME-CM, with improvements, proficiently illustrates the capacity to model intricate real-world issues.

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ГОСТ |
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Ibeh L. et al. A Novel Approach to Integrating Community Knowledge into Fuzzy Logic-Adapted Spatial Modeling in the Analysis of Natural Resource Conflicts // Sustainability. 2025. Vol. 17. No. 5. p. 2315.
ГОСТ со всеми авторами (до 50) Скопировать
Ibeh L., Kouveliotis K., Unune D. R., Cuong N. M., Mutai N. C., Fountis A., Samoylenko S., Swarnkar T., Kumari S., Sambiri B. B., Mohamud S., Baskakova A. A Novel Approach to Integrating Community Knowledge into Fuzzy Logic-Adapted Spatial Modeling in the Analysis of Natural Resource Conflicts // Sustainability. 2025. Vol. 17. No. 5. p. 2315.
RIS |
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TY - JOUR
DO - 10.3390/su17052315
UR - https://www.mdpi.com/2071-1050/17/5/2315
TI - A Novel Approach to Integrating Community Knowledge into Fuzzy Logic-Adapted Spatial Modeling in the Analysis of Natural Resource Conflicts
T2 - Sustainability
AU - Ibeh, Lawrence
AU - Kouveliotis, Kyriakos
AU - Unune, Deepak Rajendra
AU - Cuong, Nguyen Manh
AU - Mutai, Noah Cheruiyot
AU - Fountis, Anastasios
AU - Samoylenko, Svitlana
AU - Swarnkar, Tripti
AU - Kumari, Sushma
AU - Sambiri, B. B.
AU - Mohamud, Sulekha
AU - Baskakova, Alina
PY - 2025
DA - 2025/03/06
PB - MDPI
SP - 2315
IS - 5
VL - 17
SN - 2071-1050
ER -
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@article{2025_Ibeh,
author = {Lawrence Ibeh and Kyriakos Kouveliotis and Deepak Rajendra Unune and Nguyen Manh Cuong and Noah Cheruiyot Mutai and Anastasios Fountis and Svitlana Samoylenko and Tripti Swarnkar and Sushma Kumari and B. B. Sambiri and Sulekha Mohamud and Alina Baskakova},
title = {A Novel Approach to Integrating Community Knowledge into Fuzzy Logic-Adapted Spatial Modeling in the Analysis of Natural Resource Conflicts},
journal = {Sustainability},
year = {2025},
volume = {17},
publisher = {MDPI},
month = {mar},
url = {https://www.mdpi.com/2071-1050/17/5/2315},
number = {5},
pages = {2315},
doi = {10.3390/su17052315}
}
MLA
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Ibeh, Lawrence, et al. “A Novel Approach to Integrating Community Knowledge into Fuzzy Logic-Adapted Spatial Modeling in the Analysis of Natural Resource Conflicts.” Sustainability, vol. 17, no. 5, Mar. 2025, p. 2315. https://www.mdpi.com/2071-1050/17/5/2315.