Title :
A fuzzy rule-based and energy-efficient method for estimating the free size of parking places in smart cities by using wireless sensor networks
Author :
Samaras, Ioakeim ; Arvanitopoulos, Anastasios ; Evangeliou, Nikolaos ; Gialelis, John ; Koubias, S.
Author_Institution :
Ind. Syst. Inst., Platani Patras, Greece
Abstract :
A fuzzy rule-based and energy-efficient method for estimating the free size of parking places in smart cities is proposed. In particular, the estimation is the output value of a fuzzy inference system (FIS) which was implemented on each wireless sensor mote (WSM) of a wireless sensor network (WSN) placed in the ground below the parking places and it was observed that it requires 8.9 Kbytes and 5 Kbytes of flash program memory and RAM respectively. Moreover, the fuzzy rules were formulated by using real numerical data obtained from the WSN. Next, the well known network simulator 2 (NS-2) was used for acquiring simulation results concerning the energy consumption of the battery of the WSMs. In order to model the error of the output value of the FIS and the energy consumption of the battery, a data fitting problem was solved and the cubic polynomial was fitted to the real and simulation data. As a result, a real-valued cost function was formed which was minimized to get the optimal values for the distance between the WSMs and the sampling period based on which the output of the FIS should be re-computed.
Keywords :
energy conservation; flash memories; fuzzy reasoning; random-access storage; sampling methods; smart cities; telecommunication computing; telecommunication power management; wireless sensor networks; FIS; NS-2; RAM; WSM battery energy consumption; WSN; cubic polynomial; data fitting problem; energy efficient method; flash program memory; fuzzy inference system; fuzzy rule-based method; network simulator 2; parking place; real-valued cost function; smart city; wireless sensor mote; wireless sensor network; Cities and towns; Energy consumption; Magnetic field measurement; Magnetic fields; Training; Vehicles; Wireless sensor networks;
Conference_Titel :
Emerging Technology and Factory Automation (ETFA), 2014 IEEE
Conference_Location :
Barcelona
DOI :
10.1109/ETFA.2014.7005174