Applicability of Machine Learning Algorithms for Intelligent Farming

Agriculture contributes enormously to the growth and economy of a country due to which it becomes important to upgrade the agricultural facilities for farmers that simulate them for cultivating good quality crops with high production rates. This paper sets sights on classifying different types of cr...

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Published inAdvanced Soft Computing Techniques in Data Science, IoT and Cloud Computing Vol. 89; pp. 121 - 147
Main Authors Verma, Bharti, Sharma, Nikhil, Kaushik, Ila, Bhushan, Bharat
Format Book Chapter
LanguageEnglish
Published Switzerland Springer International Publishing AG 2021
Springer International Publishing
SeriesStudies in Big Data
Subjects
Online AccessGet full text
ISBN9783030756567
3030756564
ISSN2197-6503
2197-6511
DOI10.1007/978-3-030-75657-4_6

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Abstract Agriculture contributes enormously to the growth and economy of a country due to which it becomes important to upgrade the agricultural facilities for farmers that simulate them for cultivating good quality crops with high production rates. This paper sets sights on classifying different types of crops grown, and predicts which crop is best suited for particular location for boosting the production factor. Further, this ML model will be integrated with Internet of Things (IoT) to build an intelligent irrigation system that itself decides whether the crop-land needs to be irrigated or not. This system uses decision tree algorithm, Arduino, sensors, and bolt IoT kit. By means of feature extraction and data analysis techniques, we were able to select highly meaningful and best contributing variables from gathered data that were affecting the prediction values. Also, we discovered and unleashed the working statistics behind certain powerful ML algorithms. Strong statistics like hypothesis testing, chi-square testing and Euclidean distance are thoroughly discussed. Different classification models like K-NN, decision tree, SVM (Support Vector Machine) and logistic regression were implemented and compared in order to reach the best suited model for forecasting the crop class label.
AbstractList Agriculture contributes enormously to the growth and economy of a country due to which it becomes important to upgrade the agricultural facilities for farmers that simulate them for cultivating good quality crops with high production rates. This paper sets sights on classifying different types of crops grown, and predicts which crop is best suited for particular location for boosting the production factor. Further, this ML model will be integrated with Internet of Things (IoT) to build an intelligent irrigation system that itself decides whether the crop-land needs to be irrigated or not. This system uses decision tree algorithm, Arduino, sensors, and bolt IoT kit. By means of feature extraction and data analysis techniques, we were able to select highly meaningful and best contributing variables from gathered data that were affecting the prediction values. Also, we discovered and unleashed the working statistics behind certain powerful ML algorithms. Strong statistics like hypothesis testing, chi-square testing and Euclidean distance are thoroughly discussed. Different classification models like K-NN, decision tree, SVM (Support Vector Machine) and logistic regression were implemented and compared in order to reach the best suited model for forecasting the crop class label.
Author Verma, Bharti
Kaushik, Ila
Sharma, Nikhil
Bhushan, Bharat
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Liang, Yulan
Dash, Sujata
Abraham, Ajith
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Snippet Agriculture contributes enormously to the growth and economy of a country due to which it becomes important to upgrade the agricultural facilities for farmers...
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StartPage 121
SubjectTerms Chi-square test
Data analysis
Decision trees
Entropy
IoT
K-NN
Sigmoid function
Title Applicability of Machine Learning Algorithms for Intelligent Farming
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