Systematic Literature Review pada Analisis Prediktif dengan IoT: Tren Riset, Metode, dan Arsitektur
Abstract
Nowadays IoT researches on intelligent service systems is becoming a trend. IoT produces a variety of data from sensors or smart phones. Data generated from IoT can be more useful and can be followed up if data analysis is carried out. Predictive analytic with IoT is part of data analysis that aims to predict something solution. This analysis utilization produces innovative applications in various fields with diverse predictive analytic methods or techniques. This study uses Systematic Literature Review (SLR) to understand about research trends, methods and architecture used in predictive analytic with IoT. So the first step is to determine the research question (RQ) and then search is carried out on several literature published in popular journal databases namely IEEE Xplore, Scopus and ACM from 2015 - 2019. As a result of a review of thirty (30) selected articles, there are several research fields which are trends, namely Transportation, Agriculture, Health, Industry, Smart Home, and Environment. The most studied fields are agriculture. Predictive analytic with IoT use varied method according to the conditions of data used. There are five most widely used methods, namely Bayesian Network (BN), Artificial Neural Network (ANN), Recurrent Neural Networks (RNN), Neural Network (NN), and Support Vector Machines (SVM). Some studies also propose architectures that use predictive analytic with IoT.
Downloads
References
L. Andrade, R. Rios, T. Nogueira, dan C. Prazeres, “Applying classification methods to model standby power consumption in the Internet of Things,” Proc. 2017 IEEE 14th Int. Conf. Networking, Sens. Control. ICNSC 2017, hal. 537–542, 2017.
F. Carrez et al., “Real-Time Probabilistic Data Fusion for Large-Scale IoT Applications,” IEEE Access, vol. 6, hal. 10015–10027, 2018.
A. Alabdulatif, I. Khalil, A. R. M. Forkan, dan M. Atiquzzaman, “Real-Time Secure Health Surveillance for Smarter Health Communities,” IEEE Commun. Mag., vol. 57, no. 1, hal. 122–129, 2019.
S. Kim, M. Lee, dan C. Shin, “IoT-based strawberry disease prediction system for smart farming,” Sensors (Switzerland), vol. 18, no. 11, hal. 1–17, 2018.
Y. Elsaadany, A. J. A. Majumder, dan D. R. Ucci, “A Wireless Early Prediction System of Cardiac Arrest through IoT,” Proc. - Int. Comput. Softw. Appl. Conf., vol. 2, hal. 690–695, 2017.
A. Akbar, A. Khan, F. Carrez, dan K. Moessner, “Predictive analytics for complex IoT data streams,” IEEE Internet Things J., vol. 4, no. 5, hal. 1571–1582, 2017.
K. Bhargava dan S. Ivanov, “Collaborative Edge Mining for predicting heat stress in dairy cattle,” IFIP Wirel. Days, vol. 2016–April, hal. 1–6, 2016.
D. Kwon dan M. R. Hodkiewicz, “IoT-Based Prognostics and Systems Health Management for Industrial Applications,” IEEE Access, hal. 3659–3670, 2016.
A. Dresch, D. Pacheco, L. Jos, V. A. Jr, dan T. Advancement, Design Science Research: A method for Science and Technology Advancement. Springer International Publishing Switzerland, 2015.
X. Ma, H. Yu, Y. Wang, dan Y. Wang, “Large-Scale Transportation Network Congestion Evolution Prediction Using Deep Learning Theory,” PLoS One, hal. 1–17, 2015.
D. Goel, S. Chaudhury, dan H. Ghosh, “An IoT approach for context-aware smart traffic management using ontology,” Proc. Int. Conf. Web Intell., hal. 42–49, 2017.
Y. Wang dan Q. Li, “Proactive Complex Event Processing for transportation Internet of Things,” 2015 IEEE 34th Int. Perform. Comput. Commun. Conf. IPCCC 2015, hal. 1–2, 2016.
Y. Zheng, S. Rajasegarar, dan C. Leckie, “Parking availability prediction for sensor-enabled car parks in smart cities,” 2015 IEEE 10th Int. Conf. Intell. Sensors, Sens. Networks Inf. Process. ISSNIP 2015, no. April, hal. 1–6, 2015.
F. Bromberg, D. Dujovne, T. Watteyne, A. L. Diedrichs, dan K. Brun-Laguna, “Prediction of Frost Events Using Machine Learning and IoT Sensing Devices,” IEEE Internet Things J., vol. 5, no. 6, hal. 4589–4597, 2018.
D. Karimanzira dan T. Rauschenbach, “Enhancing aquaponics management with IoT-based Predictive Analytics for efficient information utilization,” Inf. Process. Agric., no. xxxx, 2019.
X. Liu et al., “Application of Temperature Prediction Based on Neural Network in Intrusion Detection of IoT,” Secur. Commun. Networks, vol. 2018, 2018.
S. M. Patil dan S. R, “Internet of Things Based Smart Agriculture System Using Predictive Analytics,” Asian J. Pharm. Clin. Res., vol. 10, no. 13, hal. 148, 2017.
T. Truong, A. Dinh, dan K. Wahid, “An IoT environmental data collection system for fungal detection in crop fields,” Can. Conf. Electr. Comput. Eng., hal. 1–4, 2017.
P. Sundaravadivel, K. Kesavan, L. Kesavan, S. P. Mohanty, dan E. Kougianos, “Smart-Log: A Deep-Learning Based Automated Nutrition Monitoring System in the IoT,” IEEE Trans. Consum. Electron., vol. 64, no. 3, hal. 390–398, 2018.
T. R. Mauldin, M. E. Canby, V. Metsis, A. H. H. Ngu, dan C. C. Rivera, “Smartfall: A smartwatch-based fall detection system using deep learning,” Sensors (Switzerland), vol. 18, no. 10, hal. 1–19, 2018.
M. F. Ijaz, “Hybrid Prediction Model for Type 2 Diabetes and Hypertension Using DBSCAN-Based Outlier Detection , Synthetic Minority Over Sampling Technique ( SMOTE ), and Random Forest,” Appl. Sci., 2018.
D. Iakovakis dan L. Hadjileontiadis, “Standing hypotension prediction based on smartwatch heart rate variability data,” Int. Conf. Human-Computer Interact. with Mob. Devices Serv., hal. 1109–1112, 2016.
J. Siryani, B. Tanju, dan T. J. Eveleigh, “A Machine Learning Decision-Support System Improves the Internet of Things’ Smart Meter Operations,” IEEE Internet Things J., vol. 4, no. 4, hal. 1056–1066, 2017.
Y. Kwon, J. Lee, J. Lee, dan M. Choi, “A study on the P.H.A.S (Piezoelectric energy Harvesting based Access control System) using motor vibration,” Int. Conf. Control. Autom. Syst., vol. 2017–Octob, no. Iccas, hal. 1426–1428, 2017.
B. D. Minor, J. R. Doppa, dan D. J. Cook, “Learning activity predictors from sensor data: Algorithms, evaluation, and applications,” IEEE Trans. Knowl. Data Eng., vol. 29, no. 12, hal. 2744–2757, 2017.
I. Ullah, R. Ahmad, dan D. H. Kim, “A prediction mechanism of energy consumption in residential buildings using hidden markov model,” Energies, vol. 11, no. 2, hal. 1–20, 2018.
N. S. Khan, S. Ghani, dan S. Haider, “Real-time analysis of a sensor’s data for automated decision making in an IoT-based smart home,” Sensors (Switzerland), vol. 18, no. 6, hal. 1–20, 2018.
V. Edmondson, M. Cerny, M. Lim, B. Gledson, S. Lockley, dan J. Woodward, “A smart sewer asset information model to enable an ‘Internet of Things’ for operational wastewater management,” Autom. Constr., vol. 91, no. March, hal. 193–205, 2018.
B. W. Jo dan R. M. A. Khan, “An internet of things system for underground mine air quality pollutant prediction based on azure machine learning,” Sensors (Switzerland), vol. 18, no. 4, 2018.
T. Bakhshi dan M. Ahmed, “IoT-Enabled Smart City Waste Management Using Machine Learning Analytics,” Int. Conf. Energy Conserv. Effic., vol. 7, hal. 3–8, 2018.
Y. Fu dan W. Wu, “Predicting household water use behaviour for improved hygiene practices in internet of things environment via dynamic behaviour intervention model,” IET Networks, vol. 5, no. 5, hal. 143–151, 2016.





