Improving of the Interference Classification Techniques under the Smart Farming Environment using iSVM

Natthanan Promsuk
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Abstract

Smart farming is one of the recent concepts to increase the capability of the agriculture sector. This concept combines a set of algorithms, electronic sensors or devices, and technologies. The Internet of things (IoT), big data, and artificial intelligence (AI) play a significant role in providing and supporting the solution and optimization ways with the massive data inside the farm. Due to a large number of data inside the farm, smart farming needs to deploy the IoT tech-nology to communicate and transmit the data. However, the interference signals from the adjacent sensors or channels are a critical problem to reduce the reliability of the transmitted data. Therefore, we propose the i$S$VM experiment to observe and classify the interference signal from the received signal. The iSVM experiment compared the classical support vector machine (SVM), SVM with the radial basis function (RBF) kernel, and SVM with the different degrees of the polynomial kernel. Before implementing the i$S$VM experiment, this paper generated an IoT in smart farming with the effects of the actual environment, i.e., the path loss exponent, the additive white Gaussian noise (AWGN) noise, and the small scale fading. Next, this paper implemented the i$S$VM to classify and suppress the interference signal. Moreover, an i$S$VM was compared with the minimum mean square error (MMSE) filter and the received without the suppression technique. From our numerical results, SVM with the polynomial of degree 4 can perform with 80 percent (%) of the average accuracy.
基于iSVM的智能农业环境下干扰分类技术改进
智能农业是提高农业部门能力的最新概念之一。这个概念结合了一套算法、电子传感器或设备和技术。物联网(IoT)、大数据和人工智能(AI)在提供和支持农场内部海量数据的解决方案和优化方式方面发挥着重要作用。由于农场内部有大量的数据,智能农业需要部署物联网技术来进行数据的通信和传输。然而,来自相邻传感器或信道的干扰信号是降低传输数据可靠性的关键问题。因此,我们提出了i$S$VM实验,从接收到的信号中观察和分类干扰信号。iSVM实验比较了经典支持向量机(SVM)、具有径向基函数(RBF)核的支持向量机(SVM)和具有不同程度多项式核的支持向量机(SVM)。在实施i$S$VM实验之前,本文利用实际环境的影响,即路径损失指数、加性高斯白噪声(AWGN)噪声和小尺度衰落,在智能农业中生成了一个物联网。其次,本文实现了i$S$VM对干扰信号进行分类和抑制。此外,将i$S$VM与最小均方误差(MMSE)滤波器和未加抑制技术的接收信号进行了比较。从我们的数值结果来看,多项式次数为4的支持向量机可以达到平均准确率的80%(%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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