JA Purity IV
  • HOME
    • Business
    • Corporate
    • Logistics
    • Product
    • News / Magazine
  • MTECH PROJECTS
    • COMPUTER SCIENCE
      • MTech Python Projects
        • Machine Learning Projects
        • Deep Learning Projects
        • Blockchain Projects
        • django Projects
      • MTech Java Projects
        • Cloud Computing Projects
        • Data Mining Projects
        • Mobile Computing Projects
        • Networking Projects
      • MTech NS2 Projects
        • Wireless Communication Projects
        • Vehicular Technology Projects
      • MTech Hadoop Projects
      • MTech Android Projects
    • ELECTRONICS
      • MTech DSP Projects
      • MTech DIP Projects
      • MTech VLSI Projects
      • MTech Communication Projects
    • ELECTRICAL
      • MTech Power Systems Projects
      • MTech Power Electronics Projects
      • MTech Control Systems Projects
    • OTHER
      • Chemical Projects
      • Mechanical Projects
      • All Other Projects
  • EMBEDDED KITS
    • MTech Embedded Kits
    • BTech Embedded Kits
  • PROJECTS+
  • PUBLISHING
    • Research Publishing
    • Authors Guidelines
    • Publishing Policy
  • CONTACT US

Contact Us

  • 4517 Washington Ave. Manchester, Kentucky 39495
  • (201) 555-0124
  • hello@purityiv.com

Welcome to MTech Projects - Online Projects for MTech Students

  • My Account
  • Careers
  • Downloads
  • Blog
JA Purity IV
  • Email Us
  • Phone Number
  • Open Hours
  • HOME
    • Business
    • Corporate
    • Logistics
    • Product
    • News / Magazine
  • MTECH PROJECTS

    MTech Python Projects

    • Machine Learning Projects
    • Deep Learning Projects
    • Blockchain Projects
    • django Projects

    MTECH JAVA PROJECTS

    • Cloud Computing Projects
    • Data Mining Projects
    • Mobile Computing Projects
    • Networking Projects

    MTECH NS2 PROJECTS

    • Wireless Communication Projects
    • Vehicular Technology Projects
    • MTech Hadoop Projects
    • MTech Android Projects

    ELECTRONICS

    • MTech DSP Projects
    • MTech DIP Projects
    • MTech VLSI Projects
    • MTech Communication Projects

    ELECTRICAL

    • MTech Power Systems Projects
    • MTech Power Electronics Projects
    • MTech Control Systems Projects

    OTHER

    • Chemical Projects
    • Mechanical Projects
    • All Other Projects
  • EMBEDDED KITS
    • MTech Embedded Kits
    • BTech Embedded Kits
  • PROJECTS+
  • PUBLISHING
    • Research Publishing
    • Authors Guidelines
    • Publishing Policy
  • CONTACT US

Project Enquiry

  1. You are here:  
  2. Home
  3. Evolutionary Computation
  4. Using the Averaged Hausdorff Distance as a Performance Measure in Evolutionary Multiobjective Optimization
Details
Category: Evolutionary Computation Projects
By MTech Projects
MTech Projects
18.Jan
Hits: 1

Using the Averaged Hausdorff Distance as a Performance Measure in Evolutionary Multiobjective Optimization

PROJECT TITLE :

Using the Averaged Hausdorff Distance as a Performance Measure in Evolutionary Multiobjective Optimization

ABSTRACT :

The Hausdorff distance dH could be a widely used tool to live the distance between different objects in many analysis fields. Attainable reasons for this would possibly be that it is a natural extension of the well-known and intuitive distance between points and/or the very fact that dH defines in sure cases a metric within the mathematical sense. In evolutionary multiobjective optimization (EMO) the task is usually to compute the entire solution set-the therefore-known as Pareto set-respectively its image, the Pareto front. Hence, dH ought to, at least at initial sight, be a natural alternative to measure the performance of the result set in explicit since it's related to the terms spread and convergence as utilized in EMO literature. But, thus far, dH does not notice the general approval in the EMO community. The main reason for this is often that dH penalizes single outliers of the candidate set which will not adjust to the use of stochastic search algorithms like evolutionary ways. In this paper, we tend to outline a replacement performance indicator, Δp, which can be viewed as an “averaged Hausdorff distance” between the outcome set and the Pareto front and that is composed of (slight modifications of) the well-known indicators generational distance (GD) and inverted generational distance (IGD). We have a tendency to will discuss theoretical properties of Δp (plus for GD and IGD) like the metric properties and also the compliance with state-of-theart multiobjective evolutionary algorithms (MOEAs), and can additional on demonstrate by empirical results the potential of Δp as a replacement performance indicator for the evaluation of MOEAs.

Did you like this research project?

To get this research project Guidelines, Training and Code... Click Here

Previous article: Evolutionary Design of Both Topologies and Parameters of a Hybrid Dynamical System Evolutionary Design of Both Topologies and Parameters of a Hybrid Dynamical System Next article: Decomposition-Based Multiobjective Evolutionary Algorithm With an Ensemble of Neighborhood Sizes Decomposition-Based Multiobjective Evolutionary Algorithm With an Ensemble of Neighborhood Sizes
COMPUTER SCIENCE PROJECTS ELECTRONICS PROJECTS ELECTRICAL PROJECTS EMBEDDED PROJECTS MECHANICAL PROJECTS

sell academic m.tech, btech and be projects online

sell academic m.tech, btech and be projects online

Academic Final Year Projects

QUICK LINKS

  • Python Projects With Source Code
  • Java Projects With Source Code
  • Android Projects With Source Code
  • Signal Processing
  • Digital Image Processing
  • VLSI Projects Using Verilog
  • IEEE Projects on Power Systems
  • IEEE Power Electronics
SUPPORT
+91 9573777164
9:00am - 6:00pm IST
info@mtechprojects.com

Navigate

  • ABOUT
  • TESTIMONIALS
  • FIND A DEALER
  • CAREERS

CONTACT

  • CONTACT
  • FAQ
  • RESOURCES
  • EMAIL US

Useful links

  • REFUND & RETURN POLICY
  • PRIVACY POLICIES

Support

  • FACEBOOK
  • TWITTER
  • PINTEREST
  • GOOGLE PLUS
Copyright © 2026 MTech Projects. All Rights Reserved.