International Journal of Innovative Research in Computer and Communication Engineering

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TITLE Plant Disease Detection with Organic Solution
ABSTRACT Plant diseases caused by fungal, bacterial, viral, and pest-related pathogens pose a significant threat to agricultural productivity and crop health. Conventional reliance on chemical pesticides has led to adverse environmental impacts, including soil degradation, ecological imbalance, and potential health risks to humans and animals. This study focuses on the identification of common plant diseases and the evaluation of effective organic solutions for their control and prevention. The research involves systematic analysis of disease symptoms, causal agents, and transmission patterns, followed by the application of eco-friendly treatment methods. These include neem oil spray, garlic–chili extract, baking soda-based fungicides, compost tea, soap-water insect repellents, and cow dung manure. The findings demonstrate that these natural remedies are biodegradable, cost-effective, and sustainable alternatives to synthetic chemicals. Additionally, they enhance soil fertility, improve plant immunity, and support long-term agricultural resilience. The study highlights the practical feasibility of integrating organic disease management practices into modern farming systems, thereby promoting sustainable agriculture, safer food production, and environmental conservation.
AUTHOR MONIKA INGOLE, KARISHMA BISEN, CHAITALI SATHPUTE, SANJIVANI PATIL, MONIKA MALKAM Asst. Professor, Dept. of Computer Science & Engineering, Wainganga College of Engineering and Management, Nagpur, Maharashtra, India UG Student, B. Tech Student, Dept. of Computer Science & Engineering, Wainganga College of Engineering and Management, Nagpur, Maharashtra, India
VOLUME 183
DOI DOI: 10.15680/IJIRCCE.2026.1404042
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