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Revision as of 20:27, 13 October 2018
Modeling
Droplet Characterization
Due to the relatively low flow rate that fluid moves at in microfluidic chips, outputs offloaded from microfluidic chips typically form droplets as opposed to a continuous stream. Therefore, in order to accurately dispense these droplets into wells, we created a model to predict their volume so that users can control the end sample volume in the well of interest. To develop the model we used a free-body diagram to identify the forces present right before a droplet falls off the nozzle. Using the sum of the forces we were able to model the volume of the droplet. To test the model we ran preliminary experiments to calculate volumes and compared them against the theoretical value given by the model. Because we can’t directly measuring the volume of the droplet, we used the time interval between droplets and the given flow rate to calculate what the experimental volume is.- the theoretical volume from the model was less than the experimental
- this difference, on average, increased with flow rate
A potential reason for this missing component is that the model assumed that the fluid is static instead of dynamic, due to the constant flow rate of fluid moving through the chip (Zhang). In a dynamic model, the total droplet volume is characterized by the static volume and the pinching volume (Zhang). The pinching volume is formed during the droplet’s fall when the droplet breaks off the tube (Zhang).
However, after researching the physical phenomenon behind dynamic droplets we realized that a complete dynamic model, as described in Zhang et al, required measuring many parameters, making it difficult to implement. Therefore, we decided to create our dynamic model empirically by adding a correction factor, which would depend on flow rate.
Zhang et al.