IMPLEMENTATION OF NEURAL NETWORK MODEL ADAPTIVE RESONANCE THEORY FOR AIRCRAFT IDENTIFICATION SYSTEM

Radar will emit electromagnetic waves to identify an object that fly in the sky and to get data related with the object. Usually to make process identification of an object easier, radar will be equipped with interrogator identification friend or foe (IFF) that often called secondary surveillance ra...

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Main Author: ICHSAN UTAMA (NIM: 13202121), NUR
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/12485
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:12485
spelling id-itb.:124852017-09-27T10:18:38ZIMPLEMENTATION OF NEURAL NETWORK MODEL ADAPTIVE RESONANCE THEORY FOR AIRCRAFT IDENTIFICATION SYSTEM ICHSAN UTAMA (NIM: 13202121), NUR Indonesia Final Project INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/12485 Radar will emit electromagnetic waves to identify an object that fly in the sky and to get data related with the object. Usually to make process identification of an object easier, radar will be equipped with interrogator identification friend or foe (IFF) that often called secondary surveillance radar (SSR). Interrogator IFF will send request signal to the object that want to be identified. The object or the plane that equipped with transmitter responder (transponder), after receive request signal from the interrogator IFF, will respond the signal automatically by sent identification code. If the object did not respond the signal that sent by the radar properly, then the object will be identified as black flight or hostile (or at least not friendly). To identify the object that categories as black flight, another way can be used by analyze radar cross section (RCS) data and speed of the object.<p>RCS and the speed of the object that caught by the radar not always same. In order to make identification process can be done quickly and accurate enough needed a system that can identify an object with capability to adapt with changeable input data but also can keep the stability. System that has the kind of capability is a system that implements neural network system. Neural Network that used in this final project is adaptive resonance theory (ART) neural network that can adapt with new inputs but can keep the stability of input that have been learned previously. Experiment result showed, the system that made, can recognize aircraft type based on RCS and speed data. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description Radar will emit electromagnetic waves to identify an object that fly in the sky and to get data related with the object. Usually to make process identification of an object easier, radar will be equipped with interrogator identification friend or foe (IFF) that often called secondary surveillance radar (SSR). Interrogator IFF will send request signal to the object that want to be identified. The object or the plane that equipped with transmitter responder (transponder), after receive request signal from the interrogator IFF, will respond the signal automatically by sent identification code. If the object did not respond the signal that sent by the radar properly, then the object will be identified as black flight or hostile (or at least not friendly). To identify the object that categories as black flight, another way can be used by analyze radar cross section (RCS) data and speed of the object.<p>RCS and the speed of the object that caught by the radar not always same. In order to make identification process can be done quickly and accurate enough needed a system that can identify an object with capability to adapt with changeable input data but also can keep the stability. System that has the kind of capability is a system that implements neural network system. Neural Network that used in this final project is adaptive resonance theory (ART) neural network that can adapt with new inputs but can keep the stability of input that have been learned previously. Experiment result showed, the system that made, can recognize aircraft type based on RCS and speed data.
format Final Project
author ICHSAN UTAMA (NIM: 13202121), NUR
spellingShingle ICHSAN UTAMA (NIM: 13202121), NUR
IMPLEMENTATION OF NEURAL NETWORK MODEL ADAPTIVE RESONANCE THEORY FOR AIRCRAFT IDENTIFICATION SYSTEM
author_facet ICHSAN UTAMA (NIM: 13202121), NUR
author_sort ICHSAN UTAMA (NIM: 13202121), NUR
title IMPLEMENTATION OF NEURAL NETWORK MODEL ADAPTIVE RESONANCE THEORY FOR AIRCRAFT IDENTIFICATION SYSTEM
title_short IMPLEMENTATION OF NEURAL NETWORK MODEL ADAPTIVE RESONANCE THEORY FOR AIRCRAFT IDENTIFICATION SYSTEM
title_full IMPLEMENTATION OF NEURAL NETWORK MODEL ADAPTIVE RESONANCE THEORY FOR AIRCRAFT IDENTIFICATION SYSTEM
title_fullStr IMPLEMENTATION OF NEURAL NETWORK MODEL ADAPTIVE RESONANCE THEORY FOR AIRCRAFT IDENTIFICATION SYSTEM
title_full_unstemmed IMPLEMENTATION OF NEURAL NETWORK MODEL ADAPTIVE RESONANCE THEORY FOR AIRCRAFT IDENTIFICATION SYSTEM
title_sort implementation of neural network model adaptive resonance theory for aircraft identification system
url https://digilib.itb.ac.id/gdl/view/12485
_version_ 1820728534983770112