Chance-constrained Optimization Models for Agricultural Seed Development and Selection

abstract: Breeding seeds to include desirable traits (increased yield, drought/temperature resistance, etc.) is a growing and important method of establishing food security. However, besides breeder intuition, few decision-making tools exist that can provide the breeders with credible evidence to ma...

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Other Authors: Ozcan, Ozkan Meric (Author)
Format: Dissertation
Language:English
Published: 2019
Subjects:
Online Access:http://hdl.handle.net/2286/R.I.54819
id ndltd-asu.edu-item-54819
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spelling ndltd-asu.edu-item-548192019-11-07T03:00:58Z Chance-constrained Optimization Models for Agricultural Seed Development and Selection abstract: Breeding seeds to include desirable traits (increased yield, drought/temperature resistance, etc.) is a growing and important method of establishing food security. However, besides breeder intuition, few decision-making tools exist that can provide the breeders with credible evidence to make decisions on which seeds to progress to further stages of development. This thesis attempts to create a chance-constrained knapsack optimization model, which the breeder can use to make better decisions about seed progression and help reduce the levels of risk in their selections. The model’s objective is to select seed varieties out of a larger pool of varieties and maximize the average yield of the “knapsack” based on meeting some risk criteria. Two models are created for different cases. First is the risk reduction model which seeks to reduce the risk of getting a bad yield but still maximize the total yield. The second model considers the possibility of adverse environmental effects and seeks to mitigate the negative effects it could have on the total yield. In practice, breeders can use these models to better quantify uncertainty in selecting seed varieties Dissertation/Thesis Ozcan, Ozkan Meric (Author) Armbruster, Dieter (Advisor) Gel, Esma (Advisor) Sefair, Jorge (Committee member) Arizona State University (Publisher) Operations research Agriculture engineering Sustainability Chance-constrained optimization Environmental effects Operations Research Optimization Seed breeding Stochastic optimization eng 63 pages Masters Thesis Industrial Engineering 2019 Masters Thesis http://hdl.handle.net/2286/R.I.54819 http://rightsstatements.org/vocab/InC/1.0/ 2019
collection NDLTD
language English
format Dissertation
sources NDLTD
topic Operations research
Agriculture engineering
Sustainability
Chance-constrained optimization
Environmental effects
Operations Research
Optimization
Seed breeding
Stochastic optimization
spellingShingle Operations research
Agriculture engineering
Sustainability
Chance-constrained optimization
Environmental effects
Operations Research
Optimization
Seed breeding
Stochastic optimization
Chance-constrained Optimization Models for Agricultural Seed Development and Selection
description abstract: Breeding seeds to include desirable traits (increased yield, drought/temperature resistance, etc.) is a growing and important method of establishing food security. However, besides breeder intuition, few decision-making tools exist that can provide the breeders with credible evidence to make decisions on which seeds to progress to further stages of development. This thesis attempts to create a chance-constrained knapsack optimization model, which the breeder can use to make better decisions about seed progression and help reduce the levels of risk in their selections. The model’s objective is to select seed varieties out of a larger pool of varieties and maximize the average yield of the “knapsack” based on meeting some risk criteria. Two models are created for different cases. First is the risk reduction model which seeks to reduce the risk of getting a bad yield but still maximize the total yield. The second model considers the possibility of adverse environmental effects and seeks to mitigate the negative effects it could have on the total yield. In practice, breeders can use these models to better quantify uncertainty in selecting seed varieties === Dissertation/Thesis === Masters Thesis Industrial Engineering 2019
author2 Ozcan, Ozkan Meric (Author)
author_facet Ozcan, Ozkan Meric (Author)
title Chance-constrained Optimization Models for Agricultural Seed Development and Selection
title_short Chance-constrained Optimization Models for Agricultural Seed Development and Selection
title_full Chance-constrained Optimization Models for Agricultural Seed Development and Selection
title_fullStr Chance-constrained Optimization Models for Agricultural Seed Development and Selection
title_full_unstemmed Chance-constrained Optimization Models for Agricultural Seed Development and Selection
title_sort chance-constrained optimization models for agricultural seed development and selection
publishDate 2019
url http://hdl.handle.net/2286/R.I.54819
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