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Approximation schemes for r-weighted Minimization Knapsack problems
by
Karapetyan, Areg
, Trung Thanh Nguyen
, Elbassioni, Khaled
in
Approximation
/ Boolean algebra
/ Computer simulation
/ Greedy algorithms
/ Knapsack problem
/ Linear programming
/ Operations research
/ Optimization
/ Polynomials
/ Smart grid
2019
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Approximation schemes for r-weighted Minimization Knapsack problems
by
Karapetyan, Areg
, Trung Thanh Nguyen
, Elbassioni, Khaled
in
Approximation
/ Boolean algebra
/ Computer simulation
/ Greedy algorithms
/ Knapsack problem
/ Linear programming
/ Operations research
/ Optimization
/ Polynomials
/ Smart grid
2019
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Do you wish to request the book?
Approximation schemes for r-weighted Minimization Knapsack problems
by
Karapetyan, Areg
, Trung Thanh Nguyen
, Elbassioni, Khaled
in
Approximation
/ Boolean algebra
/ Computer simulation
/ Greedy algorithms
/ Knapsack problem
/ Linear programming
/ Operations research
/ Optimization
/ Polynomials
/ Smart grid
2019
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Approximation schemes for r-weighted Minimization Knapsack problems
Journal Article
Approximation schemes for r-weighted Minimization Knapsack problems
2019
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Overview
Stimulated by salient applications arising from power systems, this paper studies a class of non-linear Knapsack problems with non-separable quadratic constrains, formulated in either binary or integer form. These problems resemble the duals of the corresponding variants of 2-weighted Knapsack problem (a.k.a., complex-demand Knapsack problem) which has been studied in the extant literature under the paradigm of smart grids. Nevertheless, the employed techniques resulting in a polynomial-time approximation scheme (PTAS) for the 2-weighted Knapsack problem are not amenable to its minimization version. We instead propose a greedy geometry-based approach that arrives at a quasi PTAS (QPTAS) for the minimization variant with boolean variables. As for the integer formulation, a linear programming-based method is developed that obtains a PTAS. In view of the curse of dimensionality, fast greedy heuristic algorithms are presented, additionally to QPTAS. Their performance is corroborated extensively by empirical simulations under diverse settings and scenarios.
Publisher
Springer Nature B.V
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