Performance Enhancement of Standard Cell Placement Techniques using Memetic Algorithm
نویسندگان
چکیده
The growing complexity in the electronic hardware now necessitates in improving the performance of searching algorithms. Genetic algorithms do not guarantee global optimum solution to NP-Hard problems but are generally good at finding acceptable solution to problems. In complex combinatorial spaces, hybridization with other optimization techniques can greatly improve the efficiency of search. Memetic algorithm (MA) is an improvisation over genetic algorithms (GA) that combines global and local search by using evolutionary algorithms to perform exploration while the local search methods are used for exploitation. Here, exploitation is the process of visiting entirely new regions of a search space where the gain can also be high. This paper discusses the (MAs) as a solution to Standard Cell Placement (SCP) problem and procedures are laid down to strike a balance between genetic search and local search in MAs. A comparison of MA with the already established results for SCP using conventional and Hybrid techniques by the author depicts improvement in the performance of SCP algorithm in terms of solution quality and computing speed. About 15% improvement in overall wire-length was observed along side it being 25% faster over the Tabu Search (TS) algorithm discussed in previous works of the author. General Terms: Algorithm, exploration, exploitation
منابع مشابه
An Improved Standard Cell Placement Methodology using Hybrid Analytic and Heuristic Techniques
In recent years, size of VLSI circuits is dramatically grown and layout generation of current circuits has become a dominant task in design flow. Standard cell placement is an effective stage of physical design and quality of placement affects directly on the performance, power consumption and signal immunity of design. Placement can be performed analytically or heuristically. Analytical placer...
متن کاملOptimal Placement of Capacitor Banks Using a New Modified Version of Teaching-Learning- Based Optimization Algorithm
Meta-heuristics optimization methods are important techniques for optimal design of the engineering systems. Numerous methods, inspired by different nature phenomena, have been introduced in the literature. A new modified version of Teaching-Learning-Based Optimization (TLBO) Algorithm is introduced in this paper. TLBO, as a parameter free algorithm, is based on the learning procedure of studen...
متن کاملPerformance Evaluation and Comparison of GA, SA & LSA Based Algorithms for Standard Cell Placement in VLSI Design
Performance Evaluation and Comparison of GA, SA & LSA Based Algorithms for Standard Cell Placement in VLSI Design Dr. Aaquil Bunglowala, Dr. Nidhi Asthana Department of Electronics and Telecommunication Department of Engineering Mathematics MPSTME, Shirpur Campus,Maharashtra, SAIT,Indore, M.P. INDIA __________________________________________________________________________________________ Abstr...
متن کاملMulti-Objective Optimization of Standard Cell Placement using Memetic Algorithm
Beyond the optimization of single parameter (usually the wire-length) in Standard Cell Placement (SCP), focus in the present work is laid on the optimization of speed, power, and the wire length. As discussed in our previous work of hybrid algorithms for single objective optimization of SCP the main advantage of hybridization is the improvement in convergence speed to Pareto front although it l...
متن کاملSOLVING A STEP FIXED CHARGE TRANSPORTATION PROBLEM BY A SPANNING TREE-BASED MEMETIC ALGORITHM
In this paper, we consider the step fixed-charge transportation problem (FCTP) in which a step fixed cost, sometimes called a setup cost, is incurred if another related variable assumes a nonzero value. In order to solve the problem, two metaheuristic, a spanning tree-based genetic algorithm (GA) and a spanning tree-based memetic algorithm (MA), are developed for this NP-hard problem. For compa...
متن کامل