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Recurrent Neural Networks for Moisture Content Prediction in Seed Corn Dryer Buildings

机译:递归神经网络用于预测玉米干燥机房中的水分含量

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Conditioning seed corn is a short, yet crucial, portion of the seed production process. Seed corn must be conditioned prior to removing the seed from the cob to prevent damage, requiring constant monitoring by farmers. This paper evaluates the use of an echo state network for the prediction of seed moisture content and compares it against an Elman network. The results are determined to be good enough for inclusion into a commercially available dryer monitoring system.
机译:调节种子玉米是种子生产过程中一个简短但至关重要的部分。必须先对种子玉米进行调理,然后再从穗轴中取出种子,以防止损坏,要求农民进行持续监控。本文评估了回声状态网络在预测种子含水量中的作用,并将其与Elman网络进行了比较。确定的结果足够好,可以包含在市售的干燥机监控系统中。

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