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Main Authors: Mondal, Tapas, Ojha, Akshay Kumar, Pani, Sabyasachi
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2310.01848
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author Mondal, Tapas
Ojha, Akshay Kumar
Pani, Sabyasachi
author_facet Mondal, Tapas
Ojha, Akshay Kumar
Pani, Sabyasachi
contents In this paper, we introduce a deterministic formulation for the geometric programming problem, wherein the coefficients are represented as independent linear-normal uncertain random variables. To address the challenges posed by this combination of uncertainty and randomness, we introduce the concept of an uncertain random variable and present a novel framework known as the linear-normal uncertain random variable. Our main focus in this work is the development of three distinct transformation techniques: the optimistic value criteria, pessimistic value criteria, and expected value criteria. These approaches allow us to convert a linear-normal uncertain random variable into a more manageable random variable. This transition facilitates the transformation from an uncertain random geometric programming problem to a stochastic geometric programming problem. Furthermore, we provide insights into an equivalent deterministic representation of the transformed geometric programming problem, enhancing the clarity and practicality of the optimization process. To demonstrate the effectiveness of our proposed approach, we present a numerical example.
format Preprint
id arxiv_https___arxiv_org_abs_2310_01848
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Uncertain random geometric programming problems
Mondal, Tapas
Ojha, Akshay Kumar
Pani, Sabyasachi
Optimization and Control
90C15
In this paper, we introduce a deterministic formulation for the geometric programming problem, wherein the coefficients are represented as independent linear-normal uncertain random variables. To address the challenges posed by this combination of uncertainty and randomness, we introduce the concept of an uncertain random variable and present a novel framework known as the linear-normal uncertain random variable. Our main focus in this work is the development of three distinct transformation techniques: the optimistic value criteria, pessimistic value criteria, and expected value criteria. These approaches allow us to convert a linear-normal uncertain random variable into a more manageable random variable. This transition facilitates the transformation from an uncertain random geometric programming problem to a stochastic geometric programming problem. Furthermore, we provide insights into an equivalent deterministic representation of the transformed geometric programming problem, enhancing the clarity and practicality of the optimization process. To demonstrate the effectiveness of our proposed approach, we present a numerical example.
title Uncertain random geometric programming problems
topic Optimization and Control
90C15
url https://arxiv.org/abs/2310.01848