In this paper, a deep-learning model is proposed as a viable approach to optimize the information on soil parameters and agricultural variables’ effect in cotton cultivation, even in the case of small datasets. In this study, soil is analyzed to reduce the planting costs by determining the various combinations of soil components and nutrients’ precise amounts. Such factors are essential for cotton cultivation, since their amounts are often not precisely defined, and especially traditional farming methods are characterized by excessive distribution volumes producing significant economic and environmental impact. Not only can artificial intelligence decrease the charges, but it also increases productivity and profits. For this purpose, a deep...
Agriculture can be defined as the systematic and intentional practice of cultivating and managing pl...
Crop cultivation is one of the oldest activities of civilization. For a long time, crop production w...
This article is a survey study of various techniques and the models used in the forecasting of the p...
In this paper, a deep-learning model is proposed as a viable approach to optimize the information on...
A rapidly expanding world population and extreme climate change have made food production a crucial ...
Agriculture is the major occupation in India. The development of India is in the hands of farmers. F...
Agriculture has a key role in the overall economic development of the country. Climate change, irreg...
 Plants are a big part of the ecosystem. Plants are also used by humans for various purpose...
Part 1: Machine Learning (ML), Deep Learning (DL), Internet of Things (IoT)International audienceAcc...
World population is expected to be 10 billion in 2050. With more mouths to feed, agriculture ne...
Controlled environment agriculture (CEA) is an unconventional production system that is resource eff...
Ensuring food security is a major challenge in many countries. With a growing global population, the...
Agriculture is the main stream on which farmers depend. Many surveys have proved that suicide rate o...
Machine learning (ML) refers to the processes that enable computers to think based on variouslearnin...
This study examines the transformative role of deep learning algorithms in agricultural monitoring a...
Agriculture can be defined as the systematic and intentional practice of cultivating and managing pl...
Crop cultivation is one of the oldest activities of civilization. For a long time, crop production w...
This article is a survey study of various techniques and the models used in the forecasting of the p...
In this paper, a deep-learning model is proposed as a viable approach to optimize the information on...
A rapidly expanding world population and extreme climate change have made food production a crucial ...
Agriculture is the major occupation in India. The development of India is in the hands of farmers. F...
Agriculture has a key role in the overall economic development of the country. Climate change, irreg...
 Plants are a big part of the ecosystem. Plants are also used by humans for various purpose...
Part 1: Machine Learning (ML), Deep Learning (DL), Internet of Things (IoT)International audienceAcc...
World population is expected to be 10 billion in 2050. With more mouths to feed, agriculture ne...
Controlled environment agriculture (CEA) is an unconventional production system that is resource eff...
Ensuring food security is a major challenge in many countries. With a growing global population, the...
Agriculture is the main stream on which farmers depend. Many surveys have proved that suicide rate o...
Machine learning (ML) refers to the processes that enable computers to think based on variouslearnin...
This study examines the transformative role of deep learning algorithms in agricultural monitoring a...
Agriculture can be defined as the systematic and intentional practice of cultivating and managing pl...
Crop cultivation is one of the oldest activities of civilization. For a long time, crop production w...
This article is a survey study of various techniques and the models used in the forecasting of the p...