Hasil Pencarian  ::  Simpan CSV :: Kembali

Hasil Pencarian

Ditemukan 197410 dokumen yang sesuai dengan query
cover
Ronny Wicaksono
"The feed forward neural network (FFANN) model has been the most popular form of artificial neural network model used for forecasting, particularly in economics and finance. In this paper, we elucidate the application of FFANN as a means of modeling financial data. We particularly focus on the model building of FFANN as time series model and use inflation rates in Indonesia as a case study. A comparison is drawn between FFANN model and the best existing models based on traditional econometrics time series approach. The best models are selected on forecasting ability by using the MSE, particularly on the dynamic forecast. The results show that FFANN models outperform the traditional econometric time series model."
Depok: Fakultas Ekonomi dan Bisnis Universitas Indonesia, 2006
T18415
UI - Tesis Membership  Universitas Indonesia Library
cover
Ratna Aditya Apsari
"

Meningkatnya angka prevalensi gangguan depresi, terutama di generasi muda, membawa urgensi tentang pentingnya menjaga kesehatan mental. Terlebih lagi, adanya gangguan depresi pada seseorang telah terbukti untuk meningkatkan risiko dan keparahan (severity) penyakit kardiovaskular. Seringkali, depresi luput atau salah didiagnosis sebagai penyakit lain, karena gejala-gejalanya yang mirip dengan penyakit non-mental lainnya. Karena itu, kebutuhan untuk membuat suatu sistem berbasis sinyal elektroensefalografi (EEG) yang dapat membantu diagnosis gangguan mental ini menjadi semakin penting. Tujuan penelitian ini adalah membuat program analisis spektral dan klasifikasi sinyal EEG untuk membantu diagnosis gangguan depresi yang berbasis Machine Learning. Untuk melengkapinya, dibuat juga aplikasi MATLAB dengan Graphical User Interface agar mempermudah pengguna. Sinyal EEG diproses menggunakan dua metode, yaitu wavelet dan Power Spectral Density (PSD). Relative Power Ratio dan Average Alpha Asymmetry dihitung sebagai fitur klasifikasi. Untuk mereduksi jumlah fitur, dilakukan perhitungan dominansi. Fitur akan diurutkan sesuai dominansinya, sehingga fitur dengan dominansi tertinggi akan digunakan untuk klasifikasi Machine Learning. Pengklasifikasi yang digunakan adalah feedforward neural network dengan cross validation. Hasil akurasi tertinggi yang dicapai adalah 83,6% menggunakan metode wavelet dan 77,5% menggunakan metode PSD. Selain itu, di bagian Frontal dan Parietal subyek depresi, ditemukan aktivitas alfa bagian otak kanan yang lebih dominan. Hal tersebut konsisten dengan penemuan dari riset-riset sebelumnya yang menunjukkan bahwa subyek depresi memiliki asimetri aktivitas otak yang dominan di bagian kanan.


The increasing prevalence of depressive disorder (also known as major depressive disorder or MDD), especially in the younger generations, has brought urgency upon the importance of keeping good mental health. Moreover, depression has proven to increase risks of cardiovascular diseases, along with their severities. Depressive disorders are oftentimes not diagnosed or misdiagnosed, because some of the symptoms are similar with those of other non-mental illnesses. Because of that, the necessity to build a system based on electroencephalographic (EEG) signals that could help diagnose this mental illness has been increasing in importance. The goal of this research is to make a Machine Learning-based classification program that implements EEG spectral analysis to aid for the diagnostics of depression. A MATLAB application with a Graphical User Interface was made as an addition to the program so that users can operate it easily. EEG signals were processed using two different signal processing methods, which are wavelet and Power Spectral Density (PSD). Relative Power Ratio and Average Alpha Asymmetry were calculated for feature extraction. As a feature-reducing method, feature dominance was calculated and ranked so that the highest ranked features will be used as input for the Machine Learning classification. The classifier used was feedforward neural network with cross validation. The highest achieved results were 83,6% accuracy using the wavelet method and 77,5% accuracy using the PSD method. Other than that, depressed subjects also showed a dominant right-hemisphere alpha activity in the Frontal and Parietal region, which is consistent with previous research that reveals the right-dominated asymmetry in the depressed brain.

"
Depok: Fakultas Matematika dan Ilmu Pengetahuan Alam Universitas Indonesia, 2020
S-pdf
UI - Skripsi Membership  Universitas Indonesia Library
cover
Fakultas Teknik Universitas Indonesia, 2001
S39102
UI - Skripsi Membership  Universitas Indonesia Library
cover
Ikhwan Martias
Depok: Fakultas Teknik Universitas Indonesia, 1995
S38438
UI - Skripsi Membership  Universitas Indonesia Library
cover
Achmad Dimyati
Depok: Fakultas Teknik Universitas Indonesia, 1995
S38484
UI - Skripsi Membership  Universitas Indonesia Library
cover
Lin, Chin-Teng
New Jersey:: Prentice-Hall, 1996
629.89 LIN n
Buku Teks  Universitas Indonesia Library
cover
New York: McGraw-Hill, 1996
006.32 FUZ
Buku Teks  Universitas Indonesia Library
cover
Janu Dewandaru
Depok: Fakultas Teknik Universitas Indonesia, 1993
S38366
UI - Skripsi Membership  Universitas Indonesia Library
cover
Inzra Benyamin
Depok: Fakultas Teknik Universitas Indonesia, 1993
S38357
UI - Skripsi Membership  Universitas Indonesia Library
cover
Siregar, Rizki Ramadhan
"Kebutuhan energi untuk rumah tangga atau bangunan di Indonesia sedang tumbuh secara signifikan. Oleh karena itu, efisiensi pada energi pendinginan sangat dibutuhkan. Penelitian ini bertujuan untuk mengembangkan model Artificial Neural Network (ANN) yang dapat memprediksi jumlah konsumsi energi pendinginan untuk pengaturan yang berbeda dari variabel kontrol sistem pendingin VRF. Bangunan dimodelkan oleh perangkat lunak Sketchup dan sistem pendinginan dimodelkan dengan EnergyPlus. MATLAB digunakan untuk training dan testing model ANN. Untuk model testing, set data dikumpulkan melalui simulasi yang sudah divalidasi dengan pengukuran lapangan. Empat langkah yang dilakukan dalam proses training yaitu pengembangan model awal, pemilihan variabel input, optimasi model, dan evaluasi kinerja. Model yang telah dioptimalkan menunjukkan akurasi prediksi yang akurat, sehingga membuktikan potensinya untuk aplikasi dalam algoritma kontrol yang diharapkan dapat menciptakan lingkungan termal ruangan yang nyaman serta energi yang efisien. Hasil analisis TOPSIS menunjukkan penghematan daya listrik sistem VRF sebesar 26% dari daya listrik observasi.

Energy needs for households or buildings in Indonesia are growing significantly. Therefore, efficiency in cooling energy is needed. This study aims to develop an Artificial Neural Network (ANN) model that can predict the amount of cooling energy consumption for different settings of the VRF cooling system control variable. The building is modeled by the Sketchup software and the cooling system is modeled by EnergyPlus. MATLAB is used for training and testing ANN models. For model testing, data sets are collected through simulations that have been validated with field measurements. The four steps involved in the training process are initial model development, selection of input variables, model optimization, and performance evaluation. The optimized model shows accurate prediction accuracy, thereby proving its potential for application in control algorithms that are expected to create a comfortable and energy efficient indoor thermal environment. The results of the TOPSIS analysis show that the VRF system's electrical power savings are 26% of the observed electrical power."
Depok: Fakultas Teknik Universitas Indonesia, 2022
S-Pdf
UI - Skripsi Membership  Universitas Indonesia Library
<<   1 2 3 4 5 6 7 8 9 10   >>