Items where Author is "Puja Negara, Teguh"

Up a level
Export as [feed] Atom [feed] RSS 1.0 [feed] RSS 2.0
Group by: Item Type | No Grouping
Jump to: Thesis
Number of items: 7.

Thesis

Sukarji, Sigit Widodo and Chairunnas, Andi and Puja Negara, Teguh (2023) Menentukan Kualitas Kopi Arabica Berdasarkan Kekentalan dan Keasaman Kopi Arabica. Skripsi thesis, Universitas Pakuan.

Aripin, Moch. and Hardhienata, Soewarto and Puja Negara, Teguh (2023) J-INTECH (Journal of Information and Technology) Terakreditasi Kemendikbud SK No. 204/E/KPT/2022 E-ISSN: 2580-720X || P-ISSN: 2303-1425 Deteksi Gangguan Tidur Menggunakan Metode Jaringan Saraf Tiruan Berbasis Internet Of Things (IOT) Moch Aripin1* , Soewarto Hardhienata2, Teguh Puja Negara3 1,2,3Universitas Pakuan, Fakultas Matematika dan Ilmu Pengetahuan Alam, Program Studi Ilmu Komputer, Bogor, Indonesia Informasi Artikel Abstrak Diterima: 26-05-2024 Direvisi: 27-05-2024 Diterbitkan: 28-06-2024 Gangguan tidur seperti Central Sleep Apnea (CSA) dan Obstructive Sleep Apnea (OSA) dapat berdampak buruk bagi kesehatan jika tidak ditangani dengan baik. Penelitian ini bertujuan merancang alat pendeteksi gangguan tidur menggunakan metode jaringan saraf tiruan berbasis Internet of Things (IoT). Sistem ini menggunakan sensor AD8232 untuk mengakuisisi sinyal elektrokardiogram (EKG) yang kemudian diekstraksi fitur High Frequency dan Low Frequency. Ekstraksi fitur dilakukan dengan metode Fast Fourier Transform. Klasifikasi kondisi normal, CSA, atau OSA dilakukan dengan metode jaringan saraf tiruan Multilayer Perceptron yang ditraining menggunakan data dari Physionet. Mikrokontroler ESP32 digunakan untuk memproses ekstraksi fitur dan klasifikasi. Hasil klasifikasi kemudian dikirimkan ke database melalui modul WiFi ESP32 dan ditampilkan pada antarmuka website. Dari pengujian kinerja sensor AD8232 diperoleh akurasi 96,85%, akurasi klasifikasi menggunakan Jaringan Syaraf Tiruan sebesar 80%, dan waktu komputasi rata-rata 7,6 ms. Sistem ini berpotensi membantu deteksi dini gangguan tidur sehingga dapat ditangani lebih awal oleh tenaga medis. Kata Kunci Gangguan tidur; Central Sleep Apnea; obstructive Sleep Apnea; Jaringan Saraf Tiruan; Internet of Things *Email Korespondensi: mocharipin214@gmail.com Abstract Sleep disorders such as Central Sleep Apnea (CSA) and Obstructive Sleep Apnea (OSA) can have adverse health effects if not treated properly. This research aims to design a sleep disorder detection device using the Internet of Things (IoT)- based artificial neural network method. This system uses AD8232 sensor to acquire electrocardiogram (ECG) signal which is then extracted High Frequency and Low Frequency features. Feature extraction is performed using the Fast Fourier Transform method. Classification of normal, CSA, or OSA conditions is performed using the Multilayer Perceptron artificial neural network method which is trained using data from Physionet. The ESP32 microcontroller is used to process the feature extraction and classification. The classification results are then sent to the database via the ESP32 WiFi module and displayed on the website interface. From testing the performance of the AD8232 sensor, an accuracy of 96.85% was obtained, the classification accuracy using the Artificial Neural Network was 80%, and the average computation time was 7.6 ms. This system has the potential to help early detection of sleep disorders so that they can be treated early by medical personnel. Skripsi thesis, Universitas Pakuan.

Ali, Muhamad Ihsan and Denih, Asep and Puja Negara, Teguh (2023) Jemuran Otomatis Berbasis Arduino Menggunakan Sensor Raindrop. Skripsi thesis, Universitas Pakuan.

Prasetya, Eki and Hardhienata, Soewarto and Puja Negara, Teguh (2022) PERANGKAT LUNAK GRAPHIC USER INTERFACE (GUI) UNTUK SIMULASI GELOMBANG ELEKTROMAGNETIK MENGGUNAKAN METODE FINITE DIFFERENCE TIME DOMAIN. Skripsi thesis, Universitas Pakuan.

Maulana, Ridha and Chairunnas, Andi and Puja Negara, Teguh (2020) SISTEM MANAJEMEN RISIKO SAFETY DENGAN METODE EVALUATION DISTANCE AVERAGE SOLUTION (EDAS) PADA PERUSAHAAN MANUFAKTUR. Skripsi thesis, Universitas Pakuan.

Abdul Azis, Faizal and Setyaningsih, Sri and Puja Negara, Teguh (2020) DISTANCE VISIBILITY SAFETY DETECTOR ON TELEVISION USING FUZZY LOGIC METHOD. Skripsi thesis, Universitas Pakuan.

Transailluna, Frasenda and Mulyana, Iyan and Puja Negara, Teguh (2019) RANCANG BANGUN PERANGKAT PERHITUNGAN BIAYA AIR PADA METERAN AIR MENGGUNAKAN WATER FLOW SENSOR BERBASIS INTERNET OF THINGS. Skripsi thesis, Universitas Pakuan.

This list was generated on Thu Nov 21 20:13:42 2024 WIB.