cover
Contact Name
-
Contact Email
-
Phone
-
Journal Mail Official
jtsiskom@ce.undip.ac.id
Editorial Address
-
Location
Kota semarang,
Jawa tengah
INDONESIA
Jurnal Teknologi dan Sistem Komputer
Published by Universitas Diponegoro
ISSN : 26204002     EISSN : 23380403     DOI : -
Jurnal Teknologi dan Sistem Komputer (JTSiskom, e-ISSN: 2338-0403) adalah terbitan berkala online nasional yang diterbitkan oleh Departemen Teknik Sistem Komputer, Universitas Diponegoro, Indonesia. JTSiskom menyediakan media untuk mendiseminasikan hasil-hasil penelitian, pengembangan dan penerapannya di bidang teknologi dan sistem komputer, meliputi sistem embedded, robotika, rekayasa perangkat lunak dan jaringan komputer. Lihat fokus dan ruang lingkup JTSiskom. JTSiskom terbit 4 (empat) nomor dalam satu tahun, yaitu bulan Januari, April, Juli dan Oktober (lihat Tanggal Penting). Artikel yang dikirimkan ke jurnal ini akan ditelaah setidaknya oleh 2 (dua) orang reviewer. Pengecekan plagiasi artikel dilakukan dengan Google Scholar dan Turnitin. Artikel yang telah dinyatakan diterima akan diterbitkan dalam nomor In-Press sebelum nomor regular terbit. JTSiskom telah terindeks DOAJ, BASE, Google Scholar dan OneSearch.id Perpusnas. Lihat daftar pengindeks. Artikel yang dikirimkan harus sesuai dengan Petunjuk Penulisan JTSiskom. JTSiskom menganjurkan Penulis menggunakan aplikasi manajemen referensi, seperti Mendeley, Endnote atau lainnya. Penulis harus register ke jurnal atau jika telah teregister, dapat langsung log in dan melakukan lima langkah submisi artikel. Penulis harus mengupload Pernyataan Pengalihan Hak Cipta saat submisi. Artikel yang terbit di JTSiskom akan diberikan nomer identifier unik (DOI/Digital Object Identifier) dan tersedia serta bebas diunduh dari portal JTSiskom ini. Penulis tidak dipungut biaya baik untuk pengiriman artikel maupun pemrosesan artikel (lihat APC/Article Processing Charge). Jurnal ini mengimplementasikan sistem LOCKSS untuk pengarsipan secara terdistribusi di jaringan LOCKSS privat.
Arjuna Subject : -
Articles 413 Documents
Pengaruh Masukan Kendali Terhadap Hasil Identifikasi Parameter Pesawat Udara Konfigurasi Konvensional Matra Terbang Longitudinal Eries Bagita Jayanti; Novita Atmasari; Hidayati Mardikasari; Ardian Rizaldi; Fuad Surastyo Pranoto; Singgih Satrio Wibowo
Jurnal Teknologi dan Sistem Komputer Volume 7, Issue 1, Year 2019 (January 2019)
Publisher : Department of Computer Engineering, Engineering Faculty, Universitas Diponegoro

Show Abstract | Download Original | Original Source | Check in Google Scholar | Full PDF (441.737 KB) | DOI: 10.14710/jtsiskom.7.1.2019.25-30

Abstract

Parameter identification is a process to get real characteristics of the motion dynamics of an object which can then be used to build the dynamics model of the object, which has a very high level of validity and accuracy. The modeling process is usually carried out using aircraft input data and the results of existing navigation data recording. From the data, the model parameters are estimated using the simple least square method. In this study, the simulation was carried out by varying the deflection input in the control field and simulation time. The input given to the longitudinal dimension is the deflection of the elevator control field. The results of parameter identification in the Corsair A-7A plane in the longitudinal dimension indicate that the input form 3-2-1 has a smaller error value than using doublet and pulse inputs. This shows that the input form 3-2-1 is most suitable for the longitudinal dimension among the given inputs.
Front Matter - JTSiskom Volume 7 Issue 1 Year 2019 JTSiskom, Editor in Chief
Jurnal Teknologi dan Sistem Komputer Volume 7, Issue 1, Year 2019 (January 2019)
Publisher : Department of Computer Engineering, Engineering Faculty, Universitas Diponegoro

Show Abstract | Download Original | Original Source | Check in Google Scholar | Full PDF (382.959 KB)

Abstract

This article contains front-matter of JTSiskom Volume 7 Number 1 Year 2019, which includes a cover page, title page, editorial team, acknowledgment, editorial policy and table of contents. JTSiskom's editorial policies include focus and scope, review process statement, publication frequency, open access policy, archiving policy and statement of article processing fee.
Algoritma Genetika untuk Optimasi Komposisi Makanan Bagi Penderita Hipertensi Anggi Mahadika Purnomo; Davia Werdiastu; Talitha Raissa; Restu Widodo; Vivi Nur Wijayaningrum
Jurnal Teknologi dan Sistem Komputer Volume 7, Issue 1, Year 2019 (January 2019)
Publisher : Department of Computer Engineering, Engineering Faculty, Universitas Diponegoro

Show Abstract | Download Original | Original Source | Check in Google Scholar | Full PDF (219.705 KB) | DOI: 10.14710/jtsiskom.7.1.2019.1-6

Abstract

Hypertension can be prevented and handled by eating nutritious foods with the right composition. The genetic algorithm can be used to optimize the food composition for people with hypertension. Data used include sex, age, weight, height, activity type, stress level, and patient hypertension level. This study uses a reproduction method that is good enough to be applied to integer chromosome representations so that the search results provided are not local optimum solutions. The testing results show that the best genetic algorithm parameters are as follows population size is 15 with average fitness 20.97, the generation number is 40 with average fitness 50.10, and combination crossover rate and mutation rate are 0.3 and 0.7 with average fitness 41.67. The solution obtained is the optimal food composition for people with hypertension.
Perbandingan Metode Segmentasi K-Means Clustering dan Segmentasi Region Growing untuk Pengukuran Luas Wilayah Hutan Mangrove Tyas Panorama Nan Cerah; Oky Dwi Nurhayati; R. Rizal Isnanto
Jurnal Teknologi dan Sistem Komputer Volume 7, Issue 1, Year 2019 (January 2019)
Publisher : Department of Computer Engineering, Engineering Faculty, Universitas Diponegoro

Show Abstract | Download Original | Original Source | Check in Google Scholar | Full PDF (226.824 KB) | DOI: 10.14710/jtsiskom.7.1.2019.31-37

Abstract

This study aims to examine the k-means clustering and region growing segmentation methods to identify and measure the area of mangrove forests in the Southeast Sulawesi province. The image of the area of this study used Landsat 8 satellite imagery. The area of mangrove forest was carried out by calculating the number of pixels identified as mangrove forests with an area density of 900 m2/pixel. The accuracy of the two segmentation methods in calculating the area was compared based on the same area calculated by LAPAN. The overall accuracy of k-means clustering segmentation method has better accuracy, which is 59.26%, than region growing with 33.33% of accuracy. Both image segmentation methods, k-means clustering and region growing, can be used to calculate the area of mangrove forests in the Southeast Sulawesi region using Landsat 8 satellite imagery.
Back Matter - JTSiskom Volume 7 Issue 1 Year 2019 JTSiskom, Editor in Chief
Jurnal Teknologi dan Sistem Komputer Volume 7, Issue 1, Year 2019 (January 2019)
Publisher : Department of Computer Engineering, Engineering Faculty, Universitas Diponegoro

Show Abstract | Download Original | Original Source | Check in Google Scholar | Full PDF (344.217 KB)

Abstract

This article contains back-matter of JTSiskom Volume 7 Issue 1 Year 2019, which includes the author's index, author guidelines, copyright notice and its transfer agreement, publication ethics statements and journal content licenses.
Perbandingan Kinerja Block Storage Ceph dan ZFS di Lingkungan Virtual Faza Abdani Auni Robbi; Agung Budi Prasetijo; Eko Didik Widianto
Jurnal Teknologi dan Sistem Komputer Volume 7, Issue 1, Year 2019 (January 2019)
Publisher : Department of Computer Engineering, Engineering Faculty, Universitas Diponegoro

Show Abstract | Download Original | Original Source | Check in Google Scholar | Full PDF (402.206 KB) | DOI: 10.14710/jtsiskom.7.1.2019.7-11

Abstract

The growth of data requires better performance in the storage system. This study aims to analyze the comparison of block storage performance of Ceph and ZFS running in virtual environments. Tests were conducted to measure their performances, including IOPS, CPU usage, throughput, OLTP Database, replication time, and data integrity. Testing was done using 2 node servers with a standard configuration of the storage system. Server virtualization uses Proxmox on each node. ZFS has a higher performance of reading and writing operation than Ceph in IOPS, CPU usage, throughput, OLTP and data replication duration, except the CPU usage in writing operation. The test results are expected to be a reference in the selection of storage systems for data center applications.
Prediction of Call Drops in GSM Network using Artificial Neural Network Olaonipekun Oluwafemi Erunkulu; Elizabeth Nnonye Onwuka; Okechukwu Ugweje; Lukman Adewale Ajao
Jurnal Teknologi dan Sistem Komputer Volume 7, Issue 1, Year 2019 (January 2019)
Publisher : Department of Computer Engineering, Engineering Faculty, Universitas Diponegoro

Show Abstract | Download Original | Original Source | Check in Google Scholar | Full PDF (518.381 KB) | DOI: 10.14710/jtsiskom.7.1.2019.38-46

Abstract

Global System for Mobile communication is a digital mobile system that is widely used in the world. Over the years, the number of subscribers has tremendously increased, the quality of service (Call Drop Rate) became an issue to consider as many subscribers were not satisfied with the services rendered. In this paper, we present the Artificial Neural Network approach to predict call drop during an initiated call. GSM parameters data for the prediction were acquired using TEMS Investigations software. The measurements were carried out over a period of three months. Post analysis and training of the parameters was done using the Artificial Neural Network to have an output of “0” for no-drop calls and “1” for drop calls. The developed model has an accuracy of 87.5% prediction of drop call. The developed model is both useful to operators and end users for optimizing the network.
Performance analysis of gray code number system in image security Akinbowale Nathaniel Babatunde; Ebunayo Rachael Jimoh; Oladipupo Oshodi; Olujuwon Ayoseyi Alabi
Jurnal Teknologi dan Sistem Komputer Volume 7, Issue 4, Year 2019 (October 2019)
Publisher : Department of Computer Engineering, Engineering Faculty, Universitas Diponegoro

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.14710/jtsiskom.7.4.2019.141-146

Abstract

The encryption of digital images has become essential since it is vulnerable to interception while being transmitted or stored. A new image encryption algorithm to address the security challenges of traditional image encryption algorithms is presented in this research. The proposed scheme transforms the pixel information of an original image by taking into consideration the pixel location such that two neighboring pixels are processed via two separate algorithms. The proposed scheme utilized the Gray code number system. The experimental results and comparison shows the encrypted images were different from the original images. Also, pixel histogram revealed that the distribution of the plain images and their decrypted images have the same pixel histogram distributions, which means that there is a high correlation between the original images and decrypted images. The scheme also offers strong resistance to statistical attacks.
Predictive Adaptive Test with Selective Weighted Bayesian Through Questions and Answers Patterns to Measure Student Competency Levels Tekad Matulatan; Martaleli Bettiza; Muhamad Radzi Rathomi; Nola Ritha; Nurul Hayaty
Jurnal Teknologi dan Sistem Komputer Volume 7, Issue 2, Year 2019 (April 2019)
Publisher : Department of Computer Engineering, Engineering Faculty, Universitas Diponegoro

Show Abstract | Download Original | Original Source | Check in Google Scholar | Full PDF (333.815 KB) | DOI: 10.14710/jtsiskom.7.2.2019.83-88

Abstract

Computer Assisted Testing (CAT) system in Indonesia has been commonly used but only to displaying random exam questions and unable to detect the maximum performance of the test participants. This research proposes a simple way with a good level of accuracy in identifying the maximum ability of test participants. By applying the Bayesian probabilistic in the selection of random questions with a weight of difficulties, the system can obtain optimal results from participants compared to sequential questions. The accuracy of the system measured on the choice of questions at the maximum level of the examinee alleged ability by the system, compared to the correct answer from participants gives an average accuracy of 75% compared to 33% sequentially. This technique allows tests to be carried out in a shorter time without repetition, which can affect the fatigue of the test participants in answering questions.
Data Mining Menggunakan Algoritma Apriori untuk Rekomendasi Produk bagi Pelanggan Ariefana Ria Riszky; Mujiono Sadikin
Jurnal Teknologi dan Sistem Komputer Volume 7, Issue 3, Year 2019 (July 2019)
Publisher : Department of Computer Engineering, Engineering Faculty, Universitas Diponegoro

Show Abstract | Download Original | Original Source | Check in Google Scholar | Full PDF (205.359 KB) | DOI: 10.14710/jtsiskom.7.3.2019.103-108

Abstract

The implementation of a marketing strategy requires a reference so that promotion can be on target, such as by looking for similarities between product items. This study examines the application of the association rule method and apriori algorithm to the purchase transaction dataset to assist in forming candidate combinations among product items for customer recommended product promotion. The purchase transaction dataset was collected in October and November 2018 with a total data of 1027. In the experiment, the minimum value of support is 85%, and the minimum confidence value is 90% by processing data using the Weka software 3.9 version. Apriori algorithm can form association rules as a reference in the promotion of company products and decision support in providing product recommendations to customers based on defined minimum support and confidence values.

Filter by Year

2013 2023


Filter By Issues
All Issue [IN PRESS] Volume 11, Issue 1, Year 2023 (January 2023) [IN PRESS] Volume 10, Issue 4, Year 2022 (October 2022) [IN PRESS] Volume 10, Issue 3, Year 2022 (July 2022) Volume 10, Issue 2, Year 2022 (April 2022) Volume 10, Issue 1, Year 2022 (January 2022) Volume 9, Issue 4, Year 2021 (October 2021) Volume 9, Issue 3, Year 2021 (July 2021) Volume 9, Issue 2, Year 2021 (April 2021) Volume 9, Issue 1, Year 2021 (January 2021) 2021: Publication In-Press Volume 8, Issue 4, Year 2020 (October 2020) Volume 8, Issue 3, Year 2020 (July 2020) Volume 8, Issue 2, Year 2020 (April 2020) Volume 8, Issue 1, Year 2020 (January 2020) Volume 7, Issue 4, Year 2019 (October 2019) Volume 7, Issue 3, Year 2019 (July 2019) Volume 7, Issue 2, Year 2019 (April 2019) Volume 7, Issue 1, Year 2019 (January 2019) Publication In-Press (2019) Volume 6, Issue 4, Year 2018 (October 2018) Volume 6, Issue 3, Year 2018 (July 2018) Volume 6, Issue 2, Year 2018 (April 2018) Volume 6, Issue 1, Year 2018 (January 2018) Volume 5, Issue 4, Year 2017 (October 2017) Volume 5, Issue 3, Year 2017 (July 2017) Volume 5, Issue 2, Year 2017 (April 2017) Volume 5, Nomor 1, Tahun 2017 (Januari 2017) Volume 4, Issue 4, Year 2016 (October 2016) Volume 4, Nomor 3, Tahun 2016 (Agustus 2016) Volume 4, Nomor 2, Tahun 2016 (April 2016) Volume 4, Nomor 1, Tahun 2016 (Januari 2016) Volume 3, Nomor 4, Tahun 2015 (Oktober 2015) Volume 3, Nomor 3, Tahun 2015 (Agustus 2015) Volume 3, Nomor 2, Tahun 2015 (April 2015) Volume 3, Nomor 1, Tahun 2015 (Januari 2015) Volume 2, Nomor 4, Tahun 2014 (Oktober 2014) Volume 2, Nomor 3, Tahun 2014 (Agustus 2014) Volume 2, Nomor 2, Tahun 2014 (April 2014) Volume 2, Nomor 1, Tahun 2014 (Januari 2014) Volume 1, Nomor 4, Tahun 2013 (Oktober 2013) Volume 1, Nomor 3, Tahun 2013 (Agustus 2013) Volume 1, Nomor 2, Tahun 2013 (April 2013) Volume 1, Nomor 1, Tahun 2013 (Januari 2013) More Issue