利用 CNN 预测作物产量

Ritik Bohra, Shrunkhal More, Shwetal Kamat, Rishabh Pathak, Prof. Manisha Shitole
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摘要

深度学习是机器学习的一个分支,它完全基于人工神经网络,因为神经网络要模仿人脑,所以深度学习也是对人脑的一种模仿。农业是印度的主要职业。农作物产量每年都会对国家和国际经济产生直接影响,而产量预测在粮食管理和农业部门发挥着重要作用。我们的任务是建立一个农作物产量预测模型。智能系统的先决条件使人工神经网络成为一种新技术,它为农业研究中的复杂问题提供了各种解决方案。农业部门的绩效主要取决于自然力量,如降雨、温度、气候等的时空分布,因此季风的任何偏差都会导致面积和产量的大幅波动。农作物产量每年都会对国家和国际经济产生直接影响,因此产量预测在粮食管理和农业部门发挥着重要作用。我们的任务是建立一个农作物产量预测模型。人工神经网络架构、预测数据建模的基本原理包括四个阶段,即历史数据分析(描述性)、数据预处理、数据建模和性能估计。首先根据不同属性对数据进行分类。使用 CNN 进行回归分析,观察自变量(预测变量)和因变量(目标变量)之间的关系。基于这种关系训练的模型将预测作物产量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Crop Yield Prediction using CNN
Deep learning is a branch of Machine Learning which is completely based on artificial neural networks, as neural networks are going to mimic the human brain so deep learning is also a kind of mimic of the human brain. Farming is the main occupation of India. Crop yield has a direct impact on nation and international economies annually and the yield predicted plays a significant part in the food management and agriculture sector. The task is to build a prediction model for crop production . A prerequisite of intelligent systems has brought artificial neural networks to become a new technology which provides assorted solutions for complex problems in agriculture research. Performance of the agriculture sector mainly hinges on natural forces such as spatio-temporal distribution of rainfall, temperature, climate etc, with the result any deviation of monsoon from the normal pattern brings about numerous fluctuations in area and production. Crop yield has a direct impact on nation and international economies annually and the yield predicted plays a significant part in the food management and agriculture sector. The task is to build a prediction model for crop production. The basic principle of ANN architecture, Data Modeling for Prediction involves four stages namely historical data analysis (Descriptive), Data preprocessing, modeling of Data and Performance Estimation. First classify data based on different attributes. Regression analysis using CNN, it observes the relation between an independent (predictor) and dependent (target) variables. Based on relation training the model will predict crop yield production. application of ANN in predicting crop yield by using various crop performance features as input parameter
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