Fuzzy Logic for an Implementation Environment Health Monitoring System Based on Wireless Sensor Network

Nurul Fahmi, Samsul Huda, Amang Sudarsono, M. Udin Harun Al Rasyid


Internet of Things (IoT) has become popular with the development of technology, which allows each physical device identified, managed and recorded by computer. In the context of Wireless Sensor Networks (WSNs), it is important for everyone to know the latest information of the status of human health, for example the condition of the surrounding environment. In the paper, we proposed an implementation of environmental health conditions monitoring through WSN with fuzzy logic that could be monitored in real time anywhere and anytime. In our proposed system, we used a sensor temperature, humidity, Carbon Monoxide (CO) and Carbon Dioxide (CO2), luminosity, noise for node sensors. For decision-making environmental health conditions with fuzzy logic, we have 5 categories, such as Very Good (VG), Good (G), Medium (M), Bad (B) and the last is Dangerous (D). The data were sent from the sensor node to the gateway using ZigBee IEEE 802.15.4 standard. The data received from the sensor node were stored into the database provided by the gateway and to be synchronized with external databases (database server) using TCP/IP. Users can access the data sensor via the website or mobile application such as Desktop, PCs, Laptop, and Smartphones.


Internet of Thinks (IoT); Fuzzy Logic; ZigBee, IEEE 802.15.4; TCP/IP;

Full Text:



Othman M. F. and Shazali K. 2012. Wireless Sensor Network Applications: A Study in Environment Monitoring System. International Symposium on Robotics and Intelligent Sensors 2012 (IR IS 2012), Procedia Engineering 41. 1204– 1210.

Prasad Y. R. V., Baig M. S., Mishra R. K., Rajalakshmi P.,. Desai U. B. and Merchant S. N. 2011. Real Time Air Pollution Monitoring System. ICTACT Journal on Communication Technology. 2: 370-375

Al Rasyid M.U.H., Lee B.H., and Sudarsono A. 2015. Wireless Body Area Network For Monitoring Body Temperature, Heart Beat And Oxygen In Blood. IEEE 2015 International Seminar on Intelligent Technology and Its Applications. 95-98.

Ferdoush S. and Li X. 2014. Wireless Sensor Network System Design using Raspberry Pi and Arduino for Environmental Monitoring Applications. The 9th International Conference on Future Networks and Communications (FNC-2014). 103-110

Lambebo and Hagnani S. 2014. A Wireless Sensor Network for Environmental Monitoring of Greenhouse Gases. ASEE 2014 Zone I Conference - April 3-5, University of Bridgeport, Bridgpeort, CT, USA, ScienceDirect.

Chen P. and Lu Z., 2013. A Web-based Indoor Environment Monitoring System Using Wireless Sensor Networks. 2013 International Conference on Computational and Information Sciences, IEEE. 2007-2010.

Manjunatha P., Verma A. K. and Srividya A. 2008. Multi-Sensor Data Fusion in Cluster based Wireless Sensor Networks Using Fuzzy Logic Method. IEEE. 1-6.

Upadhyaya G. and Dashore N. 2010. Monitoring of Air Polution by Using Fuzzy Logic. International Journal on Computer Science and Engineering. 02: 2282-2286.

Al Rasyid M.U.H., Lee B.H., Sudarsono A. and Taufiqurrahman. 2015. Implementation of Body Temperature and Pulseoximeter Sensor for Wireless Sensor Network. Sensors and Materials. 27(8): 727-732.

Al Rasyid M.U.H., Nadhori I.U., Sudarsono A. and Luberski R. Analysis of slotted and unslooted CSMA/CA Wireless Sensor Network for E-healtcare System. IEEE. 53-57.

Libelium – Connection Sensor to the Cloud, http://www.libelium.com/[Access on November 2015].


  • There are currently no refbacks.

Creative Commons License
This work is licensed under a Creative Commons Attribution 3.0 License.

ISSN: 2180-1843

eISSN: 2289-8131