Debojyoti Sarkar - Academia.edu (original) (raw)

Papers by Debojyoti Sarkar

Research paper thumbnail of Introduction to Optimization in Manufacturing Operations

Research paper thumbnail of Introductory Review of Swarm Intelligence Techniques

arXiv (Cornell University), Sep 26, 2022

With the rapid upliftment of technology, there has emerged a dire need to 'fine-tune' or 'optimiz... more With the rapid upliftment of technology, there has emerged a dire need to 'fine-tune' or 'optimize' certain processes, software, models or structures, with utmost accuracy and efficiency. Optimization algorithms are preferred over other methods of optimization through experimentation or simulation, for their generic problem-solving abilities and promising efficacy with the least human intervention. In recent times, the inducement of natural phenomena into algorithm design has immensely triggered the efficiency of optimization process for even complex multi-dimensional, non-continuous, non-differentiable and noisy problem search spaces. This chapter deals with the Swarm intelligence (SI) based algorithms or Swarm Optimization Algorithms, which are a subset of the greater Nature Inspired Optimization Algorithms (NIOAs). Swarm intelligence involves the collective study of individuals and their mutual interactions leading to intelligent behavior of the swarm. The chapter presents various population-based SI algorithms, their fundamental structures along with their mathematical models.

Research paper thumbnail of Introductory Review of Swarm Intelligence Techniques

Studies in computational intelligence, Oct 2, 2022

With the rapid upliftment of technology, there has emerged a dire need to 'fine-tune' or 'optimiz... more With the rapid upliftment of technology, there has emerged a dire need to 'fine-tune' or 'optimize' certain processes, software, models or structures, with utmost accuracy and efficiency. Optimization algorithms are preferred over other methods of optimization through experimentation or simulation, for their generic problem-solving abilities and promising efficacy with the least human intervention. In recent times, the inducement of natural phenomena into algorithm design has immensely triggered the efficiency of optimization process for even complex multi-dimensional, non-continuous, non-differentiable and noisy problem search spaces. This chapter deals with the Swarm intelligence (SI) based algorithms or Swarm Optimization Algorithms, which are a subset of the greater Nature Inspired Optimization Algorithms (NIOAs). Swarm intelligence involves the collective study of individuals and their mutual interactions leading to intelligent behavior of the swarm. The chapter presents various population-based SI algorithms, their fundamental structures along with their mathematical models.

Research paper thumbnail of Comparative Performance Analysis of Recent Evolutionary Algorithms

Smart innovation, systems and technologies, 2022

Research paper thumbnail of Genetic Algorithm-Based Deep Learning Models: A Design Perspective

Proceedings of the Seventh International Conference on Mathematics and Computing, 2022

Research paper thumbnail of Introduction to Optimization in Manufacturing Operations

Research paper thumbnail of Introductory Review of Swarm Intelligence Techniques

arXiv (Cornell University), Sep 26, 2022

With the rapid upliftment of technology, there has emerged a dire need to 'fine-tune' or 'optimiz... more With the rapid upliftment of technology, there has emerged a dire need to 'fine-tune' or 'optimize' certain processes, software, models or structures, with utmost accuracy and efficiency. Optimization algorithms are preferred over other methods of optimization through experimentation or simulation, for their generic problem-solving abilities and promising efficacy with the least human intervention. In recent times, the inducement of natural phenomena into algorithm design has immensely triggered the efficiency of optimization process for even complex multi-dimensional, non-continuous, non-differentiable and noisy problem search spaces. This chapter deals with the Swarm intelligence (SI) based algorithms or Swarm Optimization Algorithms, which are a subset of the greater Nature Inspired Optimization Algorithms (NIOAs). Swarm intelligence involves the collective study of individuals and their mutual interactions leading to intelligent behavior of the swarm. The chapter presents various population-based SI algorithms, their fundamental structures along with their mathematical models.

Research paper thumbnail of Introductory Review of Swarm Intelligence Techniques

Studies in computational intelligence, Oct 2, 2022

With the rapid upliftment of technology, there has emerged a dire need to 'fine-tune' or 'optimiz... more With the rapid upliftment of technology, there has emerged a dire need to 'fine-tune' or 'optimize' certain processes, software, models or structures, with utmost accuracy and efficiency. Optimization algorithms are preferred over other methods of optimization through experimentation or simulation, for their generic problem-solving abilities and promising efficacy with the least human intervention. In recent times, the inducement of natural phenomena into algorithm design has immensely triggered the efficiency of optimization process for even complex multi-dimensional, non-continuous, non-differentiable and noisy problem search spaces. This chapter deals with the Swarm intelligence (SI) based algorithms or Swarm Optimization Algorithms, which are a subset of the greater Nature Inspired Optimization Algorithms (NIOAs). Swarm intelligence involves the collective study of individuals and their mutual interactions leading to intelligent behavior of the swarm. The chapter presents various population-based SI algorithms, their fundamental structures along with their mathematical models.

Research paper thumbnail of Comparative Performance Analysis of Recent Evolutionary Algorithms

Smart innovation, systems and technologies, 2022

Research paper thumbnail of Genetic Algorithm-Based Deep Learning Models: A Design Perspective

Proceedings of the Seventh International Conference on Mathematics and Computing, 2022