Advance Fire Control and Detection System
Keywords:
Alarm, Arduino, Control System, Fire Detection, SensorAbstract
In recent years, the usage of various domestic Internet of Things (IoT) devices has grown increasingly popular. One required and significant use of home automation with IoT is fire detection and fire accident avoidance. It has been noticed that most of the houses lacks fire detection & control system and Existing systems have too many errors. To solve or overcome this problem, Researcher decided to gather all the data related to fire detection and controlling system and developed a prototype of advance fire detection & controlling system based on IoT and Arduino which is cheap in cost and can be installed easily. User can install this system according to their interest area. This system provides 90% accuracy and doesn’t give false alarms like existing one does. This prototype technology can assist users enhance safety standards by preventing mishaps immediately. So, the future of these systems is bright as new technologies can be applied to improve its accuracy.
Downloads
References
. Bansal N, Maurya A, Kumar T, Singh M, Bansal S. Cost performance of QoS Driven task scheduling in cloud computing. In: Procedia Computer Science. 2015.
. Bala S, I. S, P. R. A Pheromone Based Model for Ant Based Clustering. Int J Adv Comput Sci Appl. 2012; [3]. Sharda V, Agarwal RP. Analysis of Graphene Nanoribbon
(GNR) interconnects with multi-gate device technology for VLSI applications. In: 2015 IEEE UP Section Conference on Electrical Computer and Electronics, UPCON 2015. 2016.
. Kumar S, Kumar K, Pandey AK. Dynamic Channel Allocation in Mobile Multimedia Networks Using Error Back Propagation and Hopfield Neural Network (EBP HOP). In: Procedia Computer Science. 2016.
. Jain S, Gupta R, Dwivedi RK. Generating patterns from pizza ontology using protégé and weka tool. In: Proceedings of the 2018 International Conference on System Modeling and Advancement in Research Trends, SMART 2018. 2018.
. Gupta N, Kumar Agarwal A. Object identification using super sonic sensor: Arduino object radar. In: Proceedings of the 2018 International Conference on System Modeling and Advancement in Research Trends, SMART 2018. 2018.
. Gupta PK, Gupta S. Generation of green electricity with pedal generator. In: Proceedings of the 2018 International Conference on System Modeling and Advancement in Research Trends, SMART 2018. 2018.
. Xu J, Yang G, Chen Z, Wang Q. A survey on the privacy preserving data aggregation in wireless sensor networks. China Communications. 2015.
. Verma KG, Kaushik BK, Singh R. Propagation Delay Variation due to Process Induced Threshold Voltage Variation. In: Communications in Computer and Information Science. 2010.
. Bhardwaj S, Singhal N, Gupta N. Adaptive neurofuzzy system for brain tumor. In: Proceedings of the International Conference on Innovative Applications of Computational Intelligence on Power, Energy and Controls with Their Impact on Humanity, CIPECH 2014. 2014.
. Mathiyalagan G, Devaraj D. A machine learning classification approach based glioma brain tumor detection. Int J Imaging Syst Technol. 2021;
. Verma S, Biswas R, Singh JB. Extension of superblock technique to hyperblock using predicate hierarchy graph. In: Communications in Computer and Information Science. 2010.
. Kishore N, Singh S. Torque ripples control and speed regulation of Permanent magnet Brushless dc Motor Drive using Artificial Neural Network. In: 2014 Recent Advances in Engineering and Computational Sciences, RAECS 2014. 2014.
. Bakker EM. Image and video retrieval : Second International Conference, CIVR 2003, Urbana Champaign, IL, USA, July 24-25 2003 : proceedings. Lecture notes in computer science. 2003.
. Sowah R, Ampadu KO, Ofoli A, Koumadi K, Mills GA, Nortey J. Design and implementation of a fire detection and control system for automobiles using fuzzy logic. In: IEEE Industry Application Society, 52nd Annual Meeting: IAS 2016. 2016.
. Bahrepour M, Meratnia N, Havinga P, Group PS. Automatic fire detection : a survey from wireless sensor network perspective. CTIT Tech Rep Ser No WoTUG 31/TR-CTIT-08-73). 2007;1–14.
. Sowah R, Ampadu KO, Ofoli AR, Koumadi K, Mills GA, Nortey J. A Fire-Detection and Control System in Automobiles: Implementing a Design That Uses Fuzzy Logic to Anticipate and Respond. IEEE Ind Appl Mag. 2018;
. Sen K, Sarkar J, Saha S, Roy A, Dey D, Baitalik S, et al. Automated Fire Detection and Controlling System. Int Adv Res J Sci Eng Technol. 2015;
. Willstrand O, Karlsson P, Brandt J. Fire detection & fire alarm systems in heavy duty vehicles : WP1 – Survey of fire detection in vehicles. SP Rapport NV - 2015:68. 2015. [20]. 518qmWbzofL. 2021.
. Mokhtari Z, Holé S, Lewiner J. Study of an ionic smoke sensor. Meas Sci Technol. 2013;
. 31YWXNCD0IL.
. led-exit-sign-board-500x500.
. arduino-a000066.