Saturday, January 25, 2020
Developing an Opacity Sensor :: Opacity Sensors Technology Essays
Developing an Opacity Sensor    There is a huge range of different sensors in this world, designed to  detect changes in temperature, size, distance and many other important  factors.    Their ability to do this makes them valuable for use in industry, in  particular, production processes.    I have chosen to develop a sensor which measures the concentration of  solution, suitable for the factory production of pre-diluted fruit  squashes. The sensor can control the machinery via a servo-mechanism,  indicating whether more squash needs to be added.    The context in which my sensor is to be used is an important  consideration as it determines a suitable sensitivity and resolution.    Factors to consider when designing a sensor:    Sensitivity    The ratio of change of output to change of input. A very sensitive  sensor will give a big change of output for a small change of input. A  sensor which detects very small changes of input will need to be very  sensitive so these changes can be observed.    Resolution    The smallest change the sensor can detect in the quantity it is  measuring. If you had a quantity which was displayed as 0.0076, this  sensor would have quite a high resolution (depending on what it was  measuring). If the last digit were fluctuating this would be the  maximum resolution of the sensor as it can only just resolve a change  of that magnitude ââ¬â 10,000th.    A cooks oven may only need a resolution of 5à ºC whereas a baby  monitoring system requires a resolution of 0.5 ââ¬â 1à ºC.    Response time    The time a sensor takes to respond to a change in input. If changes  occur more rapidly than this then they will usually be averaged out.  The response time should be suitable to detect important changes as  they occur.     Systematic      Most sensors are affected by changes in temperature, even those that  arenââ¬â¢t designed to detect them. Some sensors may also be affected by  other environmental changes depending on their methods of detection,  for example a LDR might produce different readings on a sunny day if  the whole system isnââ¬â¢t enclosed. Such influences will produce readings  that display the correct trend but each reading is erroneous by the  same amount. For this reason systematic errors are difficult to detect  and an only by making another more accurate measurement. Today ââ¬Å"smart  systemsâ⬠ process information to compensate for disturbing influences.    Noise,  random error,  fluctuations    The input signal may fluctuate or the sensor itself may generate  noise. Unsystematic variations are present in all experimental data  and their size determines the reliability of the data and limits the  precision with which a measurement can be made. Taking an average over  repeated measurements can improve the final result    					    
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