数字克隆在农业生物技术中的适应性控制

O. Ivashchuk, V. Fedorov, V. A. Berezhnoy
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引用次数: 0

摘要

在文章中,结果的发展方法,模型,提出了用于创建和实现具有复杂结构的3D模型形式的作物数字克隆的硬件/软件解决方案,以确保在体外条件下(在测试玻璃中)进行虚拟生物实验,包括在农业植物的培养中进行虚拟生物实验,并评估和预测参数,这些参数对植物在室外条件下的进一步田间设置和适应有影响床,和盛行的自然环境和气候因素。采用机器学习方法对植物进行分割,采用U2 -Net结构的分割神经元网络。取得了良好的学习效果。已经开发了一种自动化装置的原型,可以根据植物的数字克隆和体外培养的虚拟过程执行数字表型的完整周期和获得结果的分析。所获得的配合物使得在测试玻璃内部的微气候不会被破坏的情况下进行研究成为可能;从根本上加快了数据登记过程;在测量过程中排除了人为因素和主观性。该知识库已经建立,其中包括六种作物的792个单位的3D模型。
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Digital Clones at the Adaptable Control in the Agricultural Biotechnology
In the article, results of the development of methods, models, and hardware/software solutions for creating and actualization of digital clones of crops with the complex structure in the form of a complex of 3D models are presented that ensure the possibility to perform virtual biological experiments consisting in the cultivation of agricultural plants in the context of in vitro conditions (in a test glass) with evaluation and forecasting of parameters that have an effect for the further field setting and adaptation of plants in conditions of the outdoor bed, and prevailing natural environment and climatic factors. For the segmentation of the plant using methods of machine learning, a segmenting neuron net with the U2 –Net architecture was used. Good results of learning were obtained. A prototype of an automated installation has been developed that makes it possible to perform the complete cycle of the digital phenotyping and the analysis of obtained results based on digital clones of plants and implementation of the virtual process of in vitro cultivation. The obtained complex makes it possible to perform studies in that the microclimate inside of the test glass will not be disrupted; the data registration process is accelerated essentially; the human factor and the subjectivity are excluded during measurements. The knowledge base has been created that includes 792 units of 3D models for six crop species.
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