Development and application of a method to classify airborne pollen taxa concentration using light scattering data

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作者
Kenji Miki
Toshio Fujita
Norio Sahashi
机构
[1] Keio University,Faculty of Science and Technology
[2] Tokyo Institute of Technology Earth-Life Science Institute,undefined
[3] Yamatronics Corporation,undefined
[4] NPO Pollen Information Association,undefined
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Although automated pollen monitoring networks using laser optics are well-established in Japan, it is thought that these methods cannot distinguish between pollen counts when evaluating various pollen taxa. However, a method for distinguishing the pollen counts of two pollen taxa was recently developed. In this study, we applied such a method to field evaluate the data of the two main allergens in Japan, Chamaecyparis obtusa and Cryptomeria japonica. We showed that the method can distinguish between the pollen counts of these two species even when they are simultaneously present in the atmosphere. This result indicates that a method for automated and simple two pollen taxa monitoring with high spatial density can be developed using the existing pollen network.
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