Requirements of MATLAB/Simulink for Signals

  • Dhananjay SinghEmail author
  • Madhusudan Singh
  • Zaynidinov Hakimjon
Part of the SpringerBriefs in Applied Sciences and Technology book series (BRIEFSAPPLSCIENCES)


The MATLAB instrumental tools accelerate development of application owing to the integration of such different plan tools like the language for working with matrixes, visual modelling, automatic generation of the software code and additional packages for various knowledge areas into one environment. Its powerful language of matrix computations is natural for representation of signals and development of algorithms for digital processing of signals. Additional packages of applied MATLAB (toolboxes) software and Simulink blocks are the richest sources of ready functions, basic blocks for construction of models and visual tools for work with signals. This ensures a wonderful base for user’s own algorithms and software. As an integral part of MATLAB products package for signal processing, Simulink allows fast development, modelling and testing of digital processing of signals using interactive visual modelling with the help of diagrams. Simulink helps analyse the work of algorithms at the earliest stages of software development.


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Copyright information

© The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd. 2019

Authors and Affiliations

  • Dhananjay Singh
    • 1
    Email author
  • Madhusudan Singh
    • 2
  • Zaynidinov Hakimjon
    • 3
  1. 1.Department of Electronics EngineeringHankuk University of Foreign Studies (Global Campus)YonginKorea (Republic of)
  2. 2.School of Technology Studies, Endicott College of International StudiesWoosong UniversityDaejeonKorea (Republic of)
  3. 3.Head of Department of Information TechnologiesTashkent University of Information TechnologiesTashkentUzbekistan

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