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What is spray pattern optimization? 


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Spray pattern optimization refers to the process of optimizing the trajectory or path of a spray gun to achieve desired paint thickness or coating uniformity on a surface. This is particularly important in industries such as automotive manufacturing and agriculture where spray painting or fluid dispersion is involved. Several algorithms and methods have been developed to optimize the spray pattern on complex curved surfaces or divided patches. These algorithms modify the planning direction of the paint gun path, such as using zigzag or spiral paths, to ensure satisfactory performance in terms of coating thickness and uniformity . In agricultural applications, spray pattern optimization involves considering factors such as vehicle travel speed, wind speed, and nozzle heights to determine the overlap region between spray patterns and make corrective actions if necessary . Numerical simulation and computational models are also used to improve spray systems and understand spray physics .

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Papers (3)Insight
Patent
21 Jun 2016
25 Citations
Spray pattern optimization is the process of adjusting the spray pattern of nozzle systems to ensure proper coverage and minimize overlap.
Spray pattern optimization is the process of adjusting the parameters of a spray gun path to achieve uniform coating thickness on a surface.
Spray pattern optimization refers to the process of generating optimal trajectories for a spray painting robot to achieve desired paint thickness on complex curved surfaces.

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