论文标题

合作智能农业的游戏理论分析

A Game Theoretic Analysis for Cooperative Smart Farming

论文作者

Gupta, Deepti, Bhatt, Paras, Bhatt, Smriti

论文摘要

物联网(IoT)和机器学习(ML)在农业产业中的应用使智能农场和精确农业的发展和创造。智能农场数量的增长和这些农场之间的潜在合作引起了合作智能农业(CSF),在这些农业中,不同的互联农场相互合作并共享数据以供他们互惠互利利益。通过CSF共享的数据共享具有各种优势,其中可以通过ML模型汇总来自单独农场的单个数据,并用于生成可行的输出,然后可以被CSF中的所有农场使用。这使农场能够获得更好的见解,以增强所需的产出,例如作物产量,管理水资源和灌溉时间表以及更好的种子应用。但是,当某些农场不传输高质量数据而替代其他农场来喂养ML模型时,CSF可能会出现并发症。另一种可能性是,在CSF中存在流氓农场,他们想在其他农场上偷偷摸摸而没有实际贡献任何数据。在本文中,我们使用游戏理论方法分析了参与CSF的农场的行为,在这种方法中,每个农场都有动力最大化其利润。由于缺乏更好的数据,我们首先提出了CSF中农场有缺陷的问题,然后提出了一个ML框架,该框架将农场分离并根据其提供的数据质量自动将其分配给适当的CSF群集。我们提出的模型将奖励农场提供更好的数据,并惩罚没有提供所需数据或具有恶意性质的农场,因此,在解决有缺陷的农场问题的同时,确保了模型完整性和更好的绩效。

The application of Internet of Things (IoT) and Machine Learning (ML) to the agricultural industry has enabled the development and creation of smart farms and precision agriculture. The growth in the number of smart farms and potential cooperation between these farms has given rise to the Cooperative Smart Farming (CSF) where different connected farms collaborate with each other and share data for their mutual benefit. This data sharing through CSF has various advantages where individual data from separate farms can be aggregated by ML models and be used to produce actionable outputs which then can be utilized by all the farms in CSFs. This enables farms to gain better insights for enhancing desired outputs, such as crop yield, managing water resources and irrigation schedules, as well as better seed applications. However, complications may arise in CSF when some of the farms do not transfer high-quality data and rather rely on other farms to feed ML models. Another possibility is the presence of rogue farms in CSFs that want to snoop on other farms without actually contributing any data. In this paper, we analyze the behavior of farms participating in CSFs using game theory approach, where each farm is motivated to maximize its profit. We first present the problem of defective farms in CSFs due to lack of better data, and then propose a ML framework that segregates farms and automatically assign them to an appropriate CSF cluster based on the quality of data they provide. Our proposed model rewards the farms supplying better data and penalize the ones that do not provide required data or are malicious in nature, thus, ensuring the model integrity and better performance all over while solving the defective farms problem.

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