Abstract
SHS investigation development is considered from the geographical and historical viewpoint. 3 stages are described. Within Stage 1 the work was carried out in the Department of the Institute of Chemical Physics in Chernogolovka where the scientific discovery had been made. At Stage 2 the interest to SHS arose in different cities and towns of the former USSR. Within Stage 3 SHS entered the international scene. Now SHS processes and products are being studied in more than 50 countries.
Abstract
Agriculture is very important in the Indian economy. Nowadays, due to the
change in climate and the increase in global warming, the weather is an unpredictable
variable. So, the most common issue that Indian farmers encounter is that they fail to
identify the best-suited and appropriate crop for their soil using conventional methods.
As a result, they experience a significant drop in production. This is a big problem in a
country where farming employs over 58 percent of the population and results in low
crop production. To overcome this issue, a model is built using machine learning which
has a better system to guide the farmers, and it is a modern agricultural strategy for
selecting the best crop by considering all the factors like nitrogen, phosphorus,
potassium percentages, temperature, humidity, rainfall, and ph value. This paper
proposes the use of machine learning techniques such as logistic regression, decision
tree, KNN (k-Nearest Neighbours) and Naive Bayes to determine the best-suited crop
based on attributes of soil and environmental factors. In the end, an accuracy of 96.36
percent from the logistic regression, 99.54 percent from the decision tree, 98.03 percent
from the k-nearest neighbours and 99.09 percent from the naive Bayes is obtained,
resulting in the decision tree having the highest accuracy with 99.54 percent. This
paper gives an extensive Exploratory Data Analysis (EDA) on the Crop
recommendation Dataset and builds an appropriate Machine Learning Model that will
help farmers predict their suitable crops based on their parameters.
Keywords:
Accuracy, Crop recommendation, Dataset, Data pre-processing, Decision tree, Humidity, k-nearest neighbours (KNN) algorithm, Logistic Regression, Machine learning (ML), ML algorithms, Naive Bayes algorithm, Ph value, Python, Rainfall, SciKit-learn, Soil NPK percentages, Streamlit, Temperature.
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Authors:Bentham Science Books