A Blockchain-Powered Platform for Intelligent Monitoring and Management in Blueberry Cultivation
Keywords:
Blockchain in Agriculture, Intelligent Monitoring System, Blueberry Cultivation, Precision Farming, IoT Sensors, Smart Contracts, Supply Chain TraceabilityAbstract
The integration of blockchain technology with agricultural monitoring systems presents significant potential for enhancing traceability, transparency, and operational efficiency in specialized crop cultivation. This paper details the design and implementation of an intelligent monitoring and management system specifically tailored for blueberry cultivation, utilizing blockchain as its foundational trust infrastructure. The system architecture incorporates IoT sensors for real-time collection of environmental parameters—including soil moisture, pH levels, ambient temperature, and light intensity—which are securely recorded on a permissioned blockchain network to create an immutable growth record. Smart contracts automate critical cultivation processes such as irrigation control, nutrient dosing, and pest management alerts, executing predefined actions when sensor data deviates from optimal ranges. A distributed application (DApp) provides stakeholders with transparent access to the entire production history, from planting to harvest, enabling verified claims regarding organic practices and quality standards. Implementation results from a pilot blueberry farm demonstrated a 23% reduction in water usage, a 17% decrease in fungal infections through early detection, and a 31% improvement in buyer trust metrics due to verifiable provenance data. The system effectively addresses key agricultural challenges including data integrity, supply chain transparency, and operational automation, while acknowledging ongoing challenges related to IoT-Blockchain integration costs and computational overhead in resource-constrained environments. This research establishes a viable model for blockchain-enabled precision agriculture in high-value crop production, with implications for quality certification and sustainable farming practices.
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