STATISTICAL ANALYSIS AND PREDICTION MODEL FOR THROUGHPUT IN WIRELESS MULTIMEDIA SENSOR NETWORK USING DEEP LEARNING WITH LONG SHORT TERM MEMORY ARCHITECTURE
The escalation of Internet of Things (IoT) technology is spreading throughout many devices that are used to solve problems in society. Multimedia IoT (M-IoT) is a current IoT trend that focuses on applying multimedia sensors and directly involve multimedia data. One of the approaches to implement...
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Format: | Theses |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/61879 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | The escalation of Internet of Things (IoT) technology is spreading throughout many
devices that are used to solve problems in society. Multimedia IoT (M-IoT) is a
current IoT trend that focuses on applying multimedia sensors and directly involve
multimedia data. One of the approaches to implement infrastructure-layer M-IoT
is through Wireless Sensor Network (WSN). The performance of WSN can be
assessed by measuring the communication throughput. The current technology
enables us to collect communication throughput data in WSN for particular needs.
Some opportunities encountered from the collected data are to analyze it in order
to have an understanding of the data and to make a prediction model for it. In this
research, the throughput data analysis is conducted in a multimedia WSN to
discover the characteristic of it. Then, the deep learning model is designed to
predict future throughput by referring to Long Short Term Memory (LSTM)
architecture. The WSN system that is used in this research is Software-Defined
Network (SDN) based with modified Constrained Application Protocol (CoAP) by
adding sequence length parameter as a communication protocol and with ability
provided by the controller to receive throughput information. The influence of
testing parameters, i.e., number of devices and sequence length, towards
throughput is analyzed. Then, the regression model is implemented to predict the
throughput value based on the testing parameter. The regression model is combined
with a deep learning model with various complexity levels and referring to manyto-
many LSTM architecture. The evaluation is conducted by measuring accuracy
and execution duration result in the implementation. The result shows that the
performance is slightly increased by combining the regression model with the deep
learning model, the more complex architecture shows better results in accuracy but
worse in execution time, and underfitting is still indicated in all the models.
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