| Literature DB >> 30046017 |
Francesco Barone1, Alessandro Signorini2, Laurent Ntibarikure3, Tiziano Fiore4, Fabrizio Di Pasquale5, Claudio J Oton6.
Abstract
We describe a fiber-optic system to measure the liquid level inside a container. The technique is based on the extraction of the temperature profile of the fiber by using a fiber Bragg grating (FBG) array. When the temperatures of the liquid and the gas are different, the liquid level can be estimated. We present a physical model of the system and the experimental results and we compare different algorithms to extract the liquid level from the temperature profile. We also show how air convection influences the temperature profile and the level of estimation accuracy. We finally show dynamic response measurements which are used to obtain the response time of the sensor. Turbomachinery monitoring is proposed as one possible application of the device.Entities:
Keywords: FBG; distributed temperature sensors; optical fiber sensor, liquid level sensor; temperature
Year: 2018 PMID: 30046017 PMCID: PMC6111585 DOI: 10.3390/s18082422
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1System mathematical model: the sensor temperature is assumed to be constant below the water level and tends to the air temperature following an exponential curve with a decay rate of .
Figure 2Algorithms tested on simulated data. The simulated level is at 17 mm. (a) MaxDer; (b) ThCross. An offset has to be added to reach the correct level. (c) ModFit.
Figure 3System setup: a polystyrene container was filled with icy water, and an FBG array was moved vertically in order to simulate the level change. Two thermocouples measured the water and air temperatures.
Figure 4Model validation by comparison with measured data. The plots show the measured data (circles) and the fitted model for each level. The dotted vertical lines show the levels estimated by the ModFit algorithm. The gray vertical stripes show the Fiber Bragg Gratings (FBG) positions.
Figure 5Comparison of algorithms without moving air.
Figure 6Comparison of algrithms with air speed at .
Figure 7Comparison of algorithms with air speed at .
Figure 8Error comparison: the bars show the average error for each air speed condition and for each estimation algorithm.
Figure 9Temperature dynamic response to fast immersion (a) and emergence (b). The exponential fits gave time constants of = 0.12 s (immersion) and = 8 s (emergence).