物联网
产量(工程)
计算机科学
作物
农业工程
机器学习
作物产量
人工智能
农学
嵌入式系统
工程类
材料科学
冶金
生物
作者
Rahul Bhati,Shivam Gaur,Kamil Abdullah,Jay Prakash Singh
标识
DOI:10.1109/icdt61202.2024.10489510
摘要
Agriculture, constituting 17% of India's GDP and employing 58% of the population, faces productivity challenges without comprehensive knowledge of soil, crops, and weather. To enhance predictability, machine learning techniques integrate historical data with live inputs from sensors and IoT devices. This study employs diverse classifiers—SVM, RF, Linear Regression, Naive Bayes, and Decision Trees—leveraging their unique strengths. Remarkably, the Random Forest classifier emerges as a potent tool for forecasting agricultural yields. The research underscores the efficacy of Random Forest and Naive Bayes in analyzing crops within prevailing climatic conditions, boasting high accuracy in data analysis. This advanced predictive model demands a systematic examination of vast datasets encompassing variables like soil quality, pH levels, and climatic patterns. By synthesizing information from these diverse sources, the model excels in forecasting harvests well in advance. This technical approach not only enhances agricultural productivity but also illustrates the transformative power of machine learning in optimizing crop management strategies for sustainable and resilient farming practices.
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