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Intrusion Detection via MLP Neural Network Using an Arduino Embedded System

机译:使用Arduino嵌入式系统通过MLP神经网络进行入侵检测

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Real-time intrusion detection using low-power devices is one of the main challenges for the Internet of Things (IoT) research community. Currently, many Intrusion Detection Systems tackle this task using Artificial Neural Networks (ANNs) and other machine learning techniques. However, some of these methods are computationally costly, which makes them unfeasible in an IoT scenario. To address this, we train a Multilayer Perceptron (MLP) using NLS-KDD for Weka, a modified version of the NSL-KDD dataset containing less features, resulting in a perceptron neural network with a small number of artificial neurons. As a result, we evaluated the MLP networks using metrics such as accuracy, precision, and coverage, as well as classifier performance running on Arduino via time measurements (microseconds).
机译:使用低功耗设备进行实时入侵检测是物联网(IoT)研究社区的主要挑战之一。当前,许多入侵检测系统使用人工神经网络(ANN)和其他机器学习技术来解决此任务。但是,其中一些方法的计算成本很高,这使其在IoT场景中不可行。为了解决这个问题,我们使用NLS-KDD for Weka训练了多层感知器(MLP),这是包含较少特征的NSL-KDD数据集的修改版,从而形成了具有少量人工神经元的感知器神经网络。结果,我们使用精度,精度和覆盖率等指标对MLP网络进行了评估,并通过时间测量(微秒)在Arduino上运行了分类器性能。

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