Abstract – This paper presents a new approach to solve the multi area unit commitment problem (MAUCP) using an evolutionary programming based particle swarm optimization (EPPSO) method. The objective of this paper is to determine the optimal or near optimal commitment schedule for generating units located in multiple areas that are interconnected via tie lines. The evolutionary programming based particle swarm optimization method is used to solve multi area unit commitment problem, allocated generation for each area and find the operating cost of generation for each hour. Joint operation of generation resources can result in significant operational cost savings. Power transfer between the areas through the tie lines depends upon the operati...
To meet increasing electricity demand and reduce tremendous greenhouse gas emission at the same time...
Abstract:- A solution to unit commitment using binary particle swarm optimization (BPSO) is presente...
Abstract — Existing unit commitment methods have the problem of stopping at local optimum and slow c...
This paper presents a new approach to solve the profit based multi area unit commitment problem (PBM...
This paper presents a new approach to solve the profit based multi area unit commitment problem (PBM...
This paper presents a novel approach to solve the Multi-Area unit commitment problem using particle ...
The profit based unit commitment (PBUC) problem determines an optimal unit commitment schedule for a...
This paper presents a new improved bilateral contract approach to solve multi-area unit commitment p...
This paper presents a new approach via hybrid particle swarm optimization (HPSO) scheme to solve the...
This paper presents a Particle Swarm Optimization (PSO) based approach for economically dispatching ...
Economic load dispatch among generating units is very important for any power plant. In this work, t...
One of the important optimization problems regarding power system issues is to determine and provide...
This paper integrates Discrete Particle Swarm Optimization (DPSO) and Sequential Quadratic Programmi...
Power plants unit loading optimization problem is of practical importance in the power industry. It...
This paper presents a Hybrid Particle Swarm Optimization (HPSO) to solve the Unit Commitment (UC) pr...
To meet increasing electricity demand and reduce tremendous greenhouse gas emission at the same time...
Abstract:- A solution to unit commitment using binary particle swarm optimization (BPSO) is presente...
Abstract — Existing unit commitment methods have the problem of stopping at local optimum and slow c...
This paper presents a new approach to solve the profit based multi area unit commitment problem (PBM...
This paper presents a new approach to solve the profit based multi area unit commitment problem (PBM...
This paper presents a novel approach to solve the Multi-Area unit commitment problem using particle ...
The profit based unit commitment (PBUC) problem determines an optimal unit commitment schedule for a...
This paper presents a new improved bilateral contract approach to solve multi-area unit commitment p...
This paper presents a new approach via hybrid particle swarm optimization (HPSO) scheme to solve the...
This paper presents a Particle Swarm Optimization (PSO) based approach for economically dispatching ...
Economic load dispatch among generating units is very important for any power plant. In this work, t...
One of the important optimization problems regarding power system issues is to determine and provide...
This paper integrates Discrete Particle Swarm Optimization (DPSO) and Sequential Quadratic Programmi...
Power plants unit loading optimization problem is of practical importance in the power industry. It...
This paper presents a Hybrid Particle Swarm Optimization (HPSO) to solve the Unit Commitment (UC) pr...
To meet increasing electricity demand and reduce tremendous greenhouse gas emission at the same time...
Abstract:- A solution to unit commitment using binary particle swarm optimization (BPSO) is presente...
Abstract — Existing unit commitment methods have the problem of stopping at local optimum and slow c...