产量(工程)
作物
农业
农业工程
农学
农林复合经营
环境科学
地理
生物
工程类
材料科学
考古
冶金
作者
D Rajeswari,Athish Venkatachalam Parthiban,Sivaram Ponnusamy
出处
期刊:Advances in business information systems and analytics book series
日期:2024-02-02
卷期号:: 99-110
标识
DOI:10.4018/979-8-3693-3234-4.ch008
摘要
This chapter explores the transformative integration of digital twin technology and drone-based solutions in agriculture, focusing on the innovative Digital Twin Empowered Drones (DTEDs) system for predicting crop yields. The chapter delineates the workflow involving continuous data collection from IoT-based sensors and drones, feeding into a digital twin model, and utilizing advanced AI algorithms like YOLO V7 for real-time analysis. The system aims to enhance predictive capabilities, optimize resource utilization, monitor crop health, and provide data-driven decision support. Results indicate a remarkable prediction accuracy of 91.69%, showcasing the system's potential to revolutionize agriculture, empower farming communities, and contribute to global food security. The chapter concludes by outlining potential future enhancements and advancements, positioning the digital twin-based crop yield prediction system as a significant stride towards efficient and sustainable agricultural practices.
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