Limited access to energy in rural areas undermines the quality of life and hinders the short-term economic growth in a community. It is therefore essential to identify the evolution of technological tools, the social factors, and the current development in the forms of energy commercialization. Using a bibliometric approach and systematic review, this study aimed to conduct case studies in rural communities that implemented decentralized and sustainable energy systems. The methodology involved: i) A bibliometric analysis under the mapping of co-occurrence by keywords and trend topics using scientific databases like Scopus and Web of Science (WoS); ii) The Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) method; and iii) A systematic review using the Mixed Methods Appraisal Tool (MMAT). A total of 259 articles from rural communities were analyzed from year 1979 to 2024 to prove that biomass, prevailing throughout history, is the most feasible source of energy generated during implementation; the analysis also provided a better understanding of its utilization mechanisms. Bioenergy accounted for 36% of the scientific contribution, primarily out of its widespread availability and the diversity of methods for harnessing energy from this resource. The energy transition of the last two decades was reflected in renewable energy sources (29%), energy mix (18%), and solar energy (9%), relegating conventional energy to only 2%. This study discovered that the research areas of hydropower and wind energy were influenced by the feasibility and social acceptability of their respective projects. Meanwhile, the use of blockchain, exerting an impact on the traceability of decentralized energy trading, advocated a proposal for change in current markets to strengthen the sustainability of projects, streamline processes, and back up information. To sum up, this study examined the utilization and implementation of renewable energy in decentralized energy projects, thereby contributing to energy autonomy and optimized resource utilization.
This study examines the influence of Islamic leadership on employee creativity within Islamic Microfinance Institutions, focusing on the mediating roles of knowledge sharing and organizational innovation. Utilizing Structural Equation Modeling with Partial Least Squares (SEM-PLS), data were collected from 117 employees across several institutions. The findings reveal that Islamic leadership significantly enhances knowledge sharing, positively impacting employee creativity. Organizational innovation directly fosters knowledge sharing and moderates the relationship between Islamic leadership and knowledge sharing, amplifying the positive effects. These results highlight the synergistic interaction among leadership, knowledge exchange, and innovation in cultivating a creative and high-performing organizational environment. This research enriches the literature on human resource management in Islamic finance by demonstrating how ethical leadership and innovative practices can improve organizational outcomes, with practical implications for enhancing competitiveness through leadership development and an innovative organizational culture.
Accurate forecasting of coffee crop yield is essential for enhancing agricultural decision-making, ensuring food security, and mitigating environmental risks. India cultivates both Arabica and Robusta across more than one hundred registered varieties. In this study, yield forecasts were developed for three representative varieties—C×R, Sln3, and Sln5B—using agro-ecological data collected from 2015 to 2022 at the Central Coffee Research Institute (CCRI), Coffee Research Station, Balehonnur, Karnataka, India. A stochastic machine learning framework was employed to identify and evaluate the most influential agro-ecological predictors through a multivariate feature selection approach coupled with correlation matrix analysis. Optimal predictors were organized into three distinct parameter groups, which were then used as inputs to four regression models: Extra Trees (ET), Gradient Boosting (GB), Random Forest (RF), and Decision Tree (DT). Independent testing revealed that the ET model consistently provided the highest accuracy. For C×R, yield was most accurately predicted using Group-1 parameters, such as coffee leaf rust (CLR), minimum temperature (Tmin), maximum temperature (Tmax), relative humidity (Rh), rainfall (Rf), organic carbon (OC), phosphorus (P), potassium (K), pH, plant spacing (Sp), and plant age (Ag), achieving a coefficient of determination (R²) of 0.98 with a Root Mean Square Error (RMSE) of 8.61 kg ha⁻¹. For Sln3, Group-3 parameters, such as CLR, Tmin, Tmax, Rh, Rf, OC, P, K, pH, Ag, Sp, minimum sunshine hours (SSmin), maximum sunshine hours (SSmax), vapor (Vp), and dew point (Dp), produced an R² of 0.98 with an RMSE of 8.27 kg ha⁻¹, while for Sln5B, Group-3 parameters yielded an R² of 0.97 with an RMSE of 7.79 kg ha⁻¹. These results demonstrate the superiority of the ET algorithm compared with GB, RF, and DT models, which exhibited comparatively lower predictive accuracy. Simulation outcomes further revealed that age, rainfall, and the incidence of CLR were among the most decisive agro-ecological determinants of yield. These findings underscore the potential of stochastic machine learning models, particularly the ET model, for enhancing yield prediction and identifying agro-ecological drivers of coffee productivity.