SMART Infrastructure Facility, Engineering and Information Sciences, University of Wollongong, Wollongong, NSW 2522, Australia.
School of Chemistry, Monash University, Clayton, VIC 3800, Australia.
Sensors (Basel). 2022 Feb 16;22(4):1526. doi: 10.3390/s22041526.
This work explores the effects of embedded software-driven measurements on a sensory target when using a LED as a photodetector. Water turbidity is used as the sensory target in this study to explore these effects using a practical and important water quality parameter. Impacts on turbidity measurements are examined by adopting the Paired Emitter Detector Diode (PEDD) capacitive discharge technique and comparing common embedded software/firmware implementations. The findings show that the chosen software method can (a) affect the detection performance by up to 67%, (b) result in a variable sampling frequency/period, and (c) lead to an disagreement of the photo capacitance by up to 23%. Optimized code is offered to correct for these issues and its effectiveness is shown through comparative analyses, with the disagreement reduced significantly from 23% to 0.18%. Overall, this work demonstrates that the embedded software is a key and critical factor for PEDD capacitive discharge measurements and must be considered carefully for future measurements in sensor related studies.
本工作研究了在使用 LED 作为光电探测器时,嵌入式软件驱动的测量对感官目标的影响。本研究以水浊度为感官目标,采用实用且重要的水质参数来探索这些影响。通过采用成对发射器探测器二极管 (PEDD) 电容放电技术并比较常见的嵌入式软件/固件实现,研究了浊度测量的影响。研究结果表明,所选软件方法可能会:(a) 影响检测性能高达 67%;(b) 导致采样频率/周期变化;以及 (c) 导致光电电容不一致高达 23%。提供了优化的代码来纠正这些问题,并通过比较分析显示其有效性,不一致性从 23%显著降低至 0.18%。总体而言,本工作表明嵌入式软件是 PEDD 电容放电测量的关键和重要因素,在与传感器相关的研究中进行未来测量时必须谨慎考虑。