Abstract:
This comprehensive study investigates the efficacy and impacts of climate-smart agricultural
practices in Punjab, Pakistan, focusing on rice-wheat and cotton-wheat cropping systems as a
meta-analysis. The research employed a multi-faceted approach, combining field studies,
economic analyses to evaluate various climate-smart practices and their potential for enhancing
agricultural sustainability in the region.
The study examined five key climate-smart practices: Alternate Wetting and Drying (AWD)
and Direct Seeded Rice (DSR) for rice cultivation, Zero Tillage for wheat, ridge sowing for
cotton, and raised bed planting for wheat. Each practice was evaluated for its agronomic
performance, resource use efficiency, economic viability, and environmental impact.
Results demonstrated that AWD in rice cultivation led to water savings of 15-25% and reduced
methane emissions by 30-70% compared to conventional flooding practices. Economic
analysis revealed a 7% increase in net profit for AWD. DSR showed even more promising
economic outcomes, with a 15% increase in total revenue and a 32% increase in net profit,
accompanied by significant reductions in water use and labor requirements.
Zero Tillage wheat demonstrated substantial benefits, including a 24% increase in net profit
and improved soil health. In the wheat-cotton cropping system, ridge sown cotton and raised
bed wheat both showed improvements in water use efficiency and yield potential, with
economic analyses indicating increases in net profit of 22% and 24% respectively.
The study also employed advanced remote sensing techniques, utilizing a Random Forest
algorithm to estimate rice crop areas in Punjab. This method yielded a total rice area estimate
of 2,703,586 hectares, which was 3.79% higher than official estimates from the Crop Reporting
Service. The spatial resolution and accuracy of this approach enabled detailed, district-level
analysis of rice cultivation patterns. Based on the crop area estimations, the study quantified
GHG emissions from rice cultivation. Total CH4 emissions were estimated at 252.79 Gg, with
significant variations observed across districts. This analysis provides crucial data for targeting
emission reduction strategies in high-emission areas.
Finally, the research modelled optimal sowing dates for wheat under changing climate,
considering temperature increases of 1°C and 1.5°C. Results indicated that delayed sowing
dates, ranging from 6 to 14 days depending on the location and temperature increase scenario,
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could help to maintain or improve wheat yields under warming conditions. This finding
highlights the importance of adaptive management strategies for climate change.
Comprehensive approach of this research, combining field-level practices with landscape-scale
analysis and future climate modeling, provides a robust framework for understanding and
addressing the complex challenges facing Punjab's agricultural sector. The findings offer
valuable insights for policymakers, agricultural extension services, and farmers, emphasizing
the potential of climate-smart practices to enhance productivity, resource
efficiency, and environmental sustainability simultaneously. Furthermore, the study underscores the
importance of location-specific recommendations and the integration of advanced technologies
in agricultural planning and management under changing climatic conditions.