A Hybrid Machine Learning Framework for Optimizing Crop Selection via Agronomic and Economic Forecasting
A Hybrid Machine Learning Framework for Optimizing Crop Selection via Agronomic and Economic Forecasting
Farmers in developing regions like Karnataka, India, face a dual challenge: navigating extreme market and climate volatility while being excluded from the digital revolution due to literacy barriers. This paper presents a novel decision support system that addresses both challenges through a unique synthesis of machine learning and human-computer interaction. We propose a hybrid recommendation engine that integrates two predictive models: a Random Forest classifier to assess agronomic suitability based on soil, climate, and real-time weather data, and a Long Short-Term Memory (LSTM) network to forecast market prices for agronomically viable crops. This integrated approach shifts the paradigm from "what can grow?" to "what is most profitable to grow?", providing a significant advantage in mitigating economic risk. The system is delivered through an end-to-end, voice-based interface in the local Kannada language, leveraging fine-tuned speech recognition and high-fidelity speech synthesis models to ensure accessibility for low-literacy users. Our results show that the Random Forest model achieves 98.5% accuracy in suitability prediction, while the LSTM model forecasts harvest-time prices with a low margin of error. By providing data-driven, economically optimized recommendations through an inclusive interface, this work offers a scalable and impactful solution to enhance the financial resilience of marginalized farming communities.
Niranjan Mallikarjun Sindhur、Pavithra C、Nivya Muchikel
农业科学技术发展农业经济南印语系(达罗毗荼语系、德拉维达语系)计算技术、计算机技术
Niranjan Mallikarjun Sindhur,Pavithra C,Nivya Muchikel.A Hybrid Machine Learning Framework for Optimizing Crop Selection via Agronomic and Economic Forecasting[EB/OL].(2025-07-06)[2025-08-02].https://arxiv.org/abs/2507.08832.点此复制
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