Spatial optimization (SO) is an important and prolific field of interdisciplinary research. Spatial optimization methods seek optimal allocation or arrangement of spatial units under spatial constraints such as distance, adjacency, contiguity, partition, etc. As spatial granularity becomes finer and problem formulations incorporate increasingly complex compositions of spatial information, the performance of spatial optimization solvers becomes more imperative. My research focuses on scalable spatial optimization methods within the evolutionary algorithm (EA) framework. The computational scalability challenge in EA is addressed by developing a parallel EA library that eliminates the costly global synchronization in massively parallel computi...
International audienceKnowledge discovery from data typically includes solving some type of an optim...
Numerous applications and scientific domains have contributed to tremendous growth of geospatial dat...
A niching technique is an important component of the genetic algorithm when attempting to solve prob...
Multiobjective evolutionary algorithms (MOEAs) are useful tools capable of searching problems that c...
abstract: Nearly 25 years ago, parallel computing techniques were first applied to vector spatial an...
Redistricting is the process of dividing space into districts or zones while optimizing a set of spa...
Many decisions encountered in civil and environmental engineering have spatial implications. Whethe...
This book will introduce the application of intelligent optimization algorithms in detail from the a...
Geo-Spatial computing and data analysis is the branch of computer science that deals with real world...
Data-intensive computing has emerged as a key player for processing large volumes of data exploiting...
“Applicable to most real-world decision scenarios, multiobjective optimization is an area of multicr...
In this thesis, we discuss the problem of path-planning in high-dimensional spaces. Large search spa...
Big data analytics has become not just a popular buzzword but also a strategic direction in informat...
Scalability of optimization algorithms is a major challenge in coping with the ever-growing size of ...
This thesis aims to improve the efficiency and accuracy of optimization algorithms. High-dimensiona...
International audienceKnowledge discovery from data typically includes solving some type of an optim...
Numerous applications and scientific domains have contributed to tremendous growth of geospatial dat...
A niching technique is an important component of the genetic algorithm when attempting to solve prob...
Multiobjective evolutionary algorithms (MOEAs) are useful tools capable of searching problems that c...
abstract: Nearly 25 years ago, parallel computing techniques were first applied to vector spatial an...
Redistricting is the process of dividing space into districts or zones while optimizing a set of spa...
Many decisions encountered in civil and environmental engineering have spatial implications. Whethe...
This book will introduce the application of intelligent optimization algorithms in detail from the a...
Geo-Spatial computing and data analysis is the branch of computer science that deals with real world...
Data-intensive computing has emerged as a key player for processing large volumes of data exploiting...
“Applicable to most real-world decision scenarios, multiobjective optimization is an area of multicr...
In this thesis, we discuss the problem of path-planning in high-dimensional spaces. Large search spa...
Big data analytics has become not just a popular buzzword but also a strategic direction in informat...
Scalability of optimization algorithms is a major challenge in coping with the ever-growing size of ...
This thesis aims to improve the efficiency and accuracy of optimization algorithms. High-dimensiona...
International audienceKnowledge discovery from data typically includes solving some type of an optim...
Numerous applications and scientific domains have contributed to tremendous growth of geospatial dat...
A niching technique is an important component of the genetic algorithm when attempting to solve prob...