A Review of Intelligent Practices for Irrigation Prediction
Hans Krupakar, Akshay Jayakumar, Dhivya G

TL;DR
This paper reviews computational and statistical methods for irrigation prediction, emphasizing machine learning techniques and their efficiencies in estimating evapotranspiration to improve water resource management amid environmental variabilities.
Contribution
It provides a comprehensive comparison of various data mining and machine learning algorithms used for irrigation prediction, highlighting their effectiveness and proposing a promising technique based on prior success.
Findings
Support Vector Machine (SVM) shows high accuracy.
Hybrid genetic algorithms outperform individual models.
Fuzzy logic techniques offer flexible prediction capabilities.
Abstract
Population growth and increasing droughts are creating unprecedented strain on the continued availability of water resources. Since irrigation is a major consumer of fresh water, wastage of resources in this sector could have strong consequences. To address this issue, irrigation water management and prediction techniques need to be employed effectively and should be able to account for the variabilities present in the environment. The different techniques surveyed in this paper can be classified into two categories: computational and statistical. Computational methods deal with scientific correlations between physical parameters whereas statistical methods involve specific prediction algorithms that can be used to automate the process of irrigation water prediction. These algorithms interpret semantic relationships between the various parameters of temperature, pressure,…
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Taxonomy
TopicsHydrological Forecasting Using AI · Stock Market Forecasting Methods · Energy Load and Power Forecasting
MethodsLogistic Regression
