Publication: Relationships between climatic factors to the paddy yeild: A case study from North-Western province of Sri Lanka
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Type:
Article
Date
2020-09-23
Journal Title
Journal ISSN
Volume Title
Publisher
Smart Computing and Systems Engineering, 2020
Abstract
Climate variation is one of the major impacting
issues for paddy cultivation. It also highly impacts the harvest.
Therefore, many researchers try to understand the relationships
between climatic factors and harvest using numerous methods.
Sri Lanka is still titled as a country with an agricultural-based
economy and thus identifying the impact of climate variability
on agriculture is very important. However, previous studies
reveal a little information in the context of Sri Lanka on the
impact of climate variabilities on agriculture. Therefore, this
study showcases an artificial neural network (ANN) framework;
that is an ordinary machine learning algorithm based on the
model of the human neuron system, to evaluate the relationships
among the climatic components and the paddy harvest in the
North-Western province of Sri Lanka. This on-going study helps
to analyze the relationships between the paddy harvest of the
North-Western province and climate, including rainfall
minimum atmospheric temperature and maximum atmospheric
temperature. Correlation coefficient (R) and mean squared
error (MSE) are used to test the performance of the ANN model.
The results obtained from the analysis revealed that the
predicted and real paddy yields have a significant correlation
with rainfall, maximum temperature and minimum
temperature.
Description
Keywords
Artificial Neural Network (ANN), LM algorithm, NorthWestern province, Paddy yield, Rainfall, Temperature
