Comparison of Three Computational Approaches for Tree Crop Irrigation Decision Support

This paper explores methodologies for developing intelligent automated decision systems for complex processes that contain uncertainties, thus requiring computational intelligence. Irrigation decision support systems (IDSS) promise to increase water efficiency while sustaining crop yields. Here, we...

Full description

Bibliographic Details
Main Authors: Panagiotis Christias, Ioannis N. Daliakopoulos, Thrassyvoulos Manios, Mariana Mocanu
Format: Article
Language:English
Published: MDPI AG 2020-05-01
Series:Mathematics
Subjects:
DSS
ID3
Online Access:https://www.mdpi.com/2227-7390/8/5/717
id doaj-c0d17b2784e441faabfcf30e68a6ea36
record_format Article
spelling doaj-c0d17b2784e441faabfcf30e68a6ea362020-11-25T02:40:34ZengMDPI AGMathematics2227-73902020-05-01871771710.3390/math8050717Comparison of Three Computational Approaches for Tree Crop Irrigation Decision SupportPanagiotis Christias0Ioannis N. Daliakopoulos1Thrassyvoulos Manios2Mariana Mocanu3Faculty of Automatic Control and Computers, University Politehnica of Bucharest, 060042 Bucharest, RomaniaDepartment of Agriculture, Hellenic Mediterranean University, 71410 Heraklion, GreeceDepartment of Agriculture, Hellenic Mediterranean University, 71410 Heraklion, GreeceFaculty of Automatic Control and Computers, University Politehnica of Bucharest, 060042 Bucharest, RomaniaThis paper explores methodologies for developing intelligent automated decision systems for complex processes that contain uncertainties, thus requiring computational intelligence. Irrigation decision support systems (IDSS) promise to increase water efficiency while sustaining crop yields. Here, we explored methodologies for developing intelligent IDSS that exploit statistical, measured, and simulated data. A simple and a fuzzy multicriteria approach as well as a Decision Tree based system were analyzed. The methodologies were applied in a sample of olive tree farms of Heraklion in the island of Crete, Greece, where water resources are scarce and crop management is generally empirical. The objective is to support decision for optimal financial profit through high yield while conserving water resources through optimal irrigation schemes under various (or uncertain) intrinsic and extrinsic conditions. Crop irrigation requirements are modelled using the FAO-56 equation. The results demonstrate that the decision support based on probabilistic and fuzzy approaches point to strategies with low amounts and careful distributed water irrigation strategies. The decision tree shows that decision can be optimized by examining coexisting factors. We conclude that irrigation-based decisions can be highly assisted by methods such as decision trees given the right choice of attributes while keeping focus on the financial balance between cost and revenue.https://www.mdpi.com/2227-7390/8/5/717DSSmulticriteriafuzzy logicdecision treesID3irrigation management
collection DOAJ
language English
format Article
sources DOAJ
author Panagiotis Christias
Ioannis N. Daliakopoulos
Thrassyvoulos Manios
Mariana Mocanu
spellingShingle Panagiotis Christias
Ioannis N. Daliakopoulos
Thrassyvoulos Manios
Mariana Mocanu
Comparison of Three Computational Approaches for Tree Crop Irrigation Decision Support
Mathematics
DSS
multicriteria
fuzzy logic
decision trees
ID3
irrigation management
author_facet Panagiotis Christias
Ioannis N. Daliakopoulos
Thrassyvoulos Manios
Mariana Mocanu
author_sort Panagiotis Christias
title Comparison of Three Computational Approaches for Tree Crop Irrigation Decision Support
title_short Comparison of Three Computational Approaches for Tree Crop Irrigation Decision Support
title_full Comparison of Three Computational Approaches for Tree Crop Irrigation Decision Support
title_fullStr Comparison of Three Computational Approaches for Tree Crop Irrigation Decision Support
title_full_unstemmed Comparison of Three Computational Approaches for Tree Crop Irrigation Decision Support
title_sort comparison of three computational approaches for tree crop irrigation decision support
publisher MDPI AG
series Mathematics
issn 2227-7390
publishDate 2020-05-01
description This paper explores methodologies for developing intelligent automated decision systems for complex processes that contain uncertainties, thus requiring computational intelligence. Irrigation decision support systems (IDSS) promise to increase water efficiency while sustaining crop yields. Here, we explored methodologies for developing intelligent IDSS that exploit statistical, measured, and simulated data. A simple and a fuzzy multicriteria approach as well as a Decision Tree based system were analyzed. The methodologies were applied in a sample of olive tree farms of Heraklion in the island of Crete, Greece, where water resources are scarce and crop management is generally empirical. The objective is to support decision for optimal financial profit through high yield while conserving water resources through optimal irrigation schemes under various (or uncertain) intrinsic and extrinsic conditions. Crop irrigation requirements are modelled using the FAO-56 equation. The results demonstrate that the decision support based on probabilistic and fuzzy approaches point to strategies with low amounts and careful distributed water irrigation strategies. The decision tree shows that decision can be optimized by examining coexisting factors. We conclude that irrigation-based decisions can be highly assisted by methods such as decision trees given the right choice of attributes while keeping focus on the financial balance between cost and revenue.
topic DSS
multicriteria
fuzzy logic
decision trees
ID3
irrigation management
url https://www.mdpi.com/2227-7390/8/5/717
work_keys_str_mv AT panagiotischristias comparisonofthreecomputationalapproachesfortreecropirrigationdecisionsupport
AT ioannisndaliakopoulos comparisonofthreecomputationalapproachesfortreecropirrigationdecisionsupport
AT thrassyvoulosmanios comparisonofthreecomputationalapproachesfortreecropirrigationdecisionsupport
AT marianamocanu comparisonofthreecomputationalapproachesfortreecropirrigationdecisionsupport
_version_ 1724780811906973696