DESIGN AND IMPLEMENTATION OF SOFTWARE AND ELECTRICAL HARDWARE ON DEEP-LEARNING BASED FISH APPETITE DETECTION SYSTEM

This final project book contains design, implementation, and testing of electrical hardware, inference models, and integration algorithms from SmartFishSense, a tool for detecting fish appetite when a stimulus is given based on artificial intelligence in the form of deep learning. The three parts...

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Main Author: D'sky, Agape
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/73866
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:73866
spelling id-itb.:738662023-06-24T16:34:16ZDESIGN AND IMPLEMENTATION OF SOFTWARE AND ELECTRICAL HARDWARE ON DEEP-LEARNING BASED FISH APPETITE DETECTION SYSTEM D'sky, Agape Indonesia Final Project Artificial Intelligence, Multi-Modal Inference, Algorithm INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/73866 This final project book contains design, implementation, and testing of electrical hardware, inference models, and integration algorithms from SmartFishSense, a tool for detecting fish appetite when a stimulus is given based on artificial intelligence in the form of deep learning. The three parts of this system are primarily designed to be integrated with the Raspberry Pi 4 model B. These three parts are needed in the product as derived from existing problems, extracted into several specification points, and finally made into realization in several subsections of the product. The design of the electrical hardware subsystems, inference models, and integration algorithms is carried out separately and modularly before being integrated into a single unit. Each subsystem has its own functionality and an interface is defined for each subsystem, so testing can be done on a smaller scale first. Each subsystem is made with different methods and media. Electrical hardware is compiled using Altium, starting from making schematics, preparing PCB layouts, and creating documents for fabrication. Deep learning models (using a mixed multi-modal inference model between CNN and ANN) are built using Tensorflow, starting from designing the model architecture, training, to model validation. The integration algorithm is written in the Python programming language which is implemented on the Raspberry Pi. Broadly speaking, the products made have been able to meet the needs in design, namely to detect fish appetite and reduce the amount of wasted fish feed. However, this is still not enough because it must be limited by several factors, such as lighting, variations of fish and their behavior, and so on. In the future, disturbances caused by these factors can still be corrected by enriching the model training 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 This final project book contains design, implementation, and testing of electrical hardware, inference models, and integration algorithms from SmartFishSense, a tool for detecting fish appetite when a stimulus is given based on artificial intelligence in the form of deep learning. The three parts of this system are primarily designed to be integrated with the Raspberry Pi 4 model B. These three parts are needed in the product as derived from existing problems, extracted into several specification points, and finally made into realization in several subsections of the product. The design of the electrical hardware subsystems, inference models, and integration algorithms is carried out separately and modularly before being integrated into a single unit. Each subsystem has its own functionality and an interface is defined for each subsystem, so testing can be done on a smaller scale first. Each subsystem is made with different methods and media. Electrical hardware is compiled using Altium, starting from making schematics, preparing PCB layouts, and creating documents for fabrication. Deep learning models (using a mixed multi-modal inference model between CNN and ANN) are built using Tensorflow, starting from designing the model architecture, training, to model validation. The integration algorithm is written in the Python programming language which is implemented on the Raspberry Pi. Broadly speaking, the products made have been able to meet the needs in design, namely to detect fish appetite and reduce the amount of wasted fish feed. However, this is still not enough because it must be limited by several factors, such as lighting, variations of fish and their behavior, and so on. In the future, disturbances caused by these factors can still be corrected by enriching the model training data.
format Final Project
author D'sky, Agape
spellingShingle D'sky, Agape
DESIGN AND IMPLEMENTATION OF SOFTWARE AND ELECTRICAL HARDWARE ON DEEP-LEARNING BASED FISH APPETITE DETECTION SYSTEM
author_facet D'sky, Agape
author_sort D'sky, Agape
title DESIGN AND IMPLEMENTATION OF SOFTWARE AND ELECTRICAL HARDWARE ON DEEP-LEARNING BASED FISH APPETITE DETECTION SYSTEM
title_short DESIGN AND IMPLEMENTATION OF SOFTWARE AND ELECTRICAL HARDWARE ON DEEP-LEARNING BASED FISH APPETITE DETECTION SYSTEM
title_full DESIGN AND IMPLEMENTATION OF SOFTWARE AND ELECTRICAL HARDWARE ON DEEP-LEARNING BASED FISH APPETITE DETECTION SYSTEM
title_fullStr DESIGN AND IMPLEMENTATION OF SOFTWARE AND ELECTRICAL HARDWARE ON DEEP-LEARNING BASED FISH APPETITE DETECTION SYSTEM
title_full_unstemmed DESIGN AND IMPLEMENTATION OF SOFTWARE AND ELECTRICAL HARDWARE ON DEEP-LEARNING BASED FISH APPETITE DETECTION SYSTEM
title_sort design and implementation of software and electrical hardware on deep-learning based fish appetite detection system
url https://digilib.itb.ac.id/gdl/view/73866
_version_ 1822007232324173824