Litcius/Paper detail

Machine vision-based driving and feedback scheme for digital microfluidics system

Zhijie Luo, Bangrui Huang, Jiazhi Xu, Lu Wang, Zitao Huang, Liang Cao, Shuangyin Liu

2021Open Chemistry15 citationsDOIOpen Access PDF

Abstract

Abstract A digital microfluidic system based on electrowetting-on-dielectric is a new technology for controlling microliter-sized droplets on a plane. By applying a voltage signal to an electrode, the droplets can be controlled to move, merge, and split. Due to device design, fabrication, and runtime uncertainties, feedback control schemes are necessary to ensure the reliability and accuracy of a digital microfluidic system for practical application. The premise of feedback is to obtain accurate droplet position information. Therefore, there is a strong need to develop a digital microfluidics system integrated with driving, position, and feedback functions for different areas of study. In this article, we propose a driving and feedback scheme based on machine vision for the digital microfluidics system. A series of experiments including droplet motion, merging, status detection, and self-adaption are performed to evaluate the feasibility and the reliability of the proposed scheme. The experimental results show that the proposed scheme can accurately locate multiple droplets and improve the success rate of different applications. Furthermore, the proposed scheme provides an experimental platform for scientists who focused on the digital microfluidics system.

Topics & Concepts

Digital microfluidicsMicrofluidicsElectrowettingComputer scienceReliability (semiconductor)IntegratorScheme (mathematics)Electronic engineeringVoltageEngineeringNanotechnologyBandwidth (computing)Electrical engineeringMaterials sciencePhysicsMathematical analysisQuantum mechanicsPower (physics)Computer networkMathematicsElectrowetting and Microfluidic TechnologiesBiosensors and Analytical DetectionModular Robots and Swarm Intelligence